Report on the 2018 YRBS External Peer Review

Att G_Report on 2018 YRBS Expert Peer Review.pdf

[NCCDPHP] 2025 and 2027 NATIONAL YOUTH RISK BEHAVIOR SURVEY

Report on the 2018 YRBS External Peer Review

OMB: 0920-0493

Document [pdf]
Download: pdf | pdf
2025 and 2027 National Youth Risk Behavior Survey

Attachment G
Report on the 2018 YRBS External Peer Review

EXTERNAL PEER REVIEW
OF THE NATIONAL
YOUTH RISK BEHAVIOR
SURVEY
April 2018

ICF

TABLE OF CONTENTS
I.

BACKGROUND ........................................................................................... 2

II.

EXTERNAL REVIEW PROCESS ......................................................................... 3
Table 1. Expert Panelists’ Associated Agency and Area of Expertise ....................................... 3
RECOMMENDATIONS FOR THE NATIONAL YOUTH RISK BEHAVIOR SURVEY (YRBS) ......... 4

III.

Table 2.

Recommendation Concurrence Key ....................................................................... 4

A.

Frame Development and Sampling Design ................................................................... 4

B.

Recruitment and Maximizing Participation ................................................................... 6

C.

Transition to Mixed Mode Methodology (paper-and-pencil and Web) Issues ...................... 9

D.

Methodological Strategies to Measure Emerging Topics .............................................. 11

APPENDICES
A. Discussion Topics and Participant List
B. Curriculum Vitae of Peer Review Panel Members

Page 1

I.

BACKGROUND

The Youth Risk Behavior Surveillance System (YRBSS) was developed in 1990 to monitor priority health risk
behaviors that contribute to the leading causes of death, disability, and social problems among youth in the United
States. It is a system of school-based surveys conducted among high school students at the national, state,
territorial, tribal, and local levels. The national Youth Risk Behavior Survey (YRBS) is the cornerstone of Federal
efforts to collect and monitor the following:







Behaviors that contribute to unintentional injuries and violence
Sexual behaviors related to unintended pregnancy and sexually transmitted diseases, including HIV
infection
Alcohol and other drug use
Tobacco use
Unhealthy dietary behaviors
Inadequate physical activity

The YRBSS also measures the prevalence of obesity, asthma, and other priority health-related behaviors.
For the national YRBS, information collection employs a cross-sectional design every two years to develop national
estimates of risk behaviors among U.S. high school students. YRBS data are used principally to generate
prevalence estimates and estimates of co-occurrence of risk behavior patterns and correlates that inform public
health programs and activities.
To date, the YRBS has been a self-administered, paper-and-pencil interview (PAPI) of U.S. high school students,
grades 9-12. Starting with the 2021 cycle of the national YRBS, the Centers for Disease Control and Prevention
(CDC) Division of Adolescent and School Health (DASH) intends to offer schools a mixed mode approach, whereby
they can opt to use PAPI or a Web-based survey instrument. A probability based, nationally representative sample
is used to select schools. Within selected schools, classes are randomly selected and all students in the selected
class are eligible to participate. In order to minimize the burden on the schools and students, the YRBS is
completed in one class period.
In the Notice of Action for the previous OMB approval for the national YRBS, OMB requested that the YRBS
undergo an external peer review prior to submitting the next package for approval. To ensure continuous scientific
rigor of the sample design, best practices for recruitment, and efficient strategies to maximize participation rates, a
panel of four experts was convened in April 2018. The panel was also consulted on the transition of the YRBS to a
mixed mode methodology and strategies to measure emerging topics of public health importance. The panel was
composed of four peer subject matter experts (SME), representing a combination of researchers and academicians.
The panel was convened and moderated by ICF, a nationally recognized research and evaluation firm, who is also
CDC’s contractor for the national YRBS.

Page 2

II.

EXTERNAL REVIEW PROCESS

Peer Review Meeting and Panel Participants
ICF convened a panel of four experts in survey methodology, school-based data collection, and health surveys to
comment on the YRBS methodology and offer recommendations for improvement. The all-day panel meeting was
held on April 26, 2018 at ICF’s Atlanta offices and was attended by ICF staff and CDC staff from YRBS’s
sponsoring division (DASH). Appendix A shows the discussion topics and complete participant list.
Panel participants were recruited from ICF’s extensive network of public health professionals in both the public and
private sectors, and specifically selected to cover a range of methodological expertise. See table below for
panelists’ associations and expertise. Appendix B contains the curriculum vitae of panelists.
Table 1. Expert Panelists’ Job Title and Area of Expertise
Panel Member
Laura Clary, PhD
Jennifer Parker, PhD
Susan Queen, PhD
Andy Zukerberg, MS

Job Title
Faculty Research Associate,
Bloomberg School of Public Health
Johns Hopkins University
Director, Division of Research and
Methodology
National Center for Health Statistics
Director, Office of Planning, Budget,
and Legislation
National Center for Health Statistics
Chief, Cross Sectional Surveys
Branch, Sample Surveys Division
National Center for Education
Statistics

Expertise
School-based data collection,
intervention/prevention research, SEL and
school climate
Health surveys and survey methodology
Health survey methodology and health policy
School-based survey methodology

Peer Review Goals and Recommendation Process
Specific topics of focus during the meeting included the following areas:
a. Frame Development and Sampling Design: To review how YRBS currently draws its samples of
districts, schools, and students and to discuss potential improvements
b. Maximizing Participation: To review current recruitment strategies at the district and school levels and
discuss potential improvements
c. Transition to a Mixed Mode Methodology: To describe the current fielding process and how it may vary
based on offering schools paper-and-pencil instruments (PAPI) and/or Web-based surveys
d. Methodological Strategy to Address Emerging Topics: To discuss how YRBS can stay abreast of
emerging public health topics relevant to youth
Panel members received background materials about the YRBS to review prior to the meeting. They were asked
for commentary on the meeting notes and this report. Panelists’ feedback has been incorporated into the final
recommendations in Section III, which also includes Program’s responses and rationale for each recommendation.
Page 3

III.

RECOMMENDATIONS FOR THE NATIONAL YOUTH RISK BEHAVIOR SURVEY (YRBS)

Recommendations in this section cover Frame Development and Sampling Design (Section III.A), Recruitment and
Maximizing Participation (Section III.B), Transition to Mixed Mode Methodology (Section III.C) and Methodological
Strategies to Measure Emerging Topics (Section III.D). Following each specific recommendation is ICF’s
commentary regarding the level of agreement and potential feasibility issues, such as when the potential change
could occur, or what additional studies would need to be conducted before implementation. To assist with
synthesizing the panelists’ comments with program’s feedback, responses to recommendations were grouped into
one of the four categories shown in Table 2 below.
Table 2. Recommendation Response Key
Recommendation Response Category
Concur and change in effect
Concur and change planned for future
Concur in principle but change cannot be
made
Further exploration needed
Do not concur and change not made

Description
Agree, and there is adequate funding, staff, and control over the
means to begin implementation of the recommendation, or to
continue the practice if already in place
Agree and plan to implement based on funding or staff resources
Agree, but funding or staff resources are currently inadequate or
program does not have control over the means to begin
implementing
Needs additional discussion and background work before deciding
upon a response
Disagree with the recommendation

A. Frame Development and Sampling Design
Background and Summary of Sample Design Recommendations
Before addressing recommendations for change, the panel noted several things that the YRBS is doing well with
respect to sampling design to meet the key analytic objectives. First, the design leads to relatively small sampling
and non-sampling errors. Sampling errors can, of course, be made smaller with larger sample sizes. Second, the
sampling frame used to sample school districts and schools is still the most appropriate one for this target
population.
The panel made the following recommendations related to enhancing the YRBS frame and sampling design.
1. Increase “sample size” analytically without added data collection cost/burden or compromise to precision by
combining multiple years of national YRBS data to generate more powerful estimates for relatively small
subgroups or behaviors with low prevalence levels.
Response: Concur and change in effect
CDC has a long history of using the approach of combining data from different survey years to increase
sample size. Most recently, CDC has used this approach for analyses by sexual minority status. This
approach can be applied more broadly to other subgroups, school types (e.g., private schools), and
variables of interest moving forward.

Page 4

2. Reduce precision loss due to clustering of the sample by first reassessing the optimal sample design for
YRBS precision goals, specifically considering sampling design modifications that reduce clustering effects
and unequal weighting effects.
Response: Concur and change planned for future
Sample clustering, which leads to increases in variances, occurs due to the multistage nature of the
sampling design, and the large student samples selected in larger schools magnify this effect. Large
within-school samples are a result of the double class sampling approach, which is used to increase the
yield in minority groups (black students) and overall. A reduction in sample clustering would be possible
with an increase in school sample sizes, and thus, overall sample sizes. Unequal weighting effects and
inefficiencies also result from linking schools to form second-stage units (SSUs). This approach would be
reassessed as well.
Further, large public school districts (i.e., those with many sampled schools) also lead to inefficiencies due
sample clustering, which is compounded by their higher potential nonresponse (discussed further in section
III.B below). The sample design should also investigate novel ways of limiting the number of sample
schools per district.
The 2021 YRBS sampling design may offer opportunities for the investigation of more efficient sampling
designs. Modified sampling designs may include larger numbers of sample PSUs and sample schools, and
therefore, potentially greater costs. CDC can investigate alternative sampling designs with larger numbers
of sample PSUs and sample schools, and less or no double class sampling, as well as investigating the
creation of single-school second stage units (SSUs).
3. Analyze potential coverage bias due to the exclusion of Department of Defense (DOD) and juvenile
detention schools by adding a coverage bias study to the 2021 YRBS cycle.
Response: Concur in principle but change cannot be made
The panel discussed possible ways to increase coverage of the sampling frame beyond the high level of
coverage currently achieved for the target population of high school students nationwide. The frame is
constructed by merging various National Center of Education Statistics (NCES) data sets and commercial
(MDR Inc.) files, followed by careful deduplication and assignment of unique school IDs. It does not
currently include special categories of schools such as DOD schools and juvenile detention schools. The
reasons for their exclusion are mostly practical cost-bias trade-offs as the potential bias (reduction) benefits
are outweighed by the tremendous cost of recruiting and collecting data for these schools. It would be of
interest to quantify the bias in a special study of some of these school categories, however this would
require additional funding, which is not currently available.
4. To reduce data collection costs, integrate state-level YRBS data with national YRBS data to refocus
resources and fill in “data gaps” that could provide more statistical power overall. Possibly subsample from
states and combine with national data. When states draw their samples, consider using state data to
supplement national sample size goals where there is overlap between the two, essentially using state data
for both state-level and national purposes. Conversely, draw a larger national sample, and wherever there
is overlap between national and state in a given year, the states could have extra data.

Page 5

Response: Further exploration needed
While this idea could benefit the survey, it also presents formidable challenges related to the different
sample frames, methods, timing, and survey instruments used by states relative to the national YRBS. For
example, the frames for the national YRBS include public, private, and Catholic schools. State survey
frames include only public schools. Also, some state surveys have overall school and student response
rates below 60%, whereas the national YRBS has consistently met or exceeded this level. Instituting a
reliance on state-level data “to build” the national data set could imperil the national study’s ability to obtain
weighted data. In addition, states have less constancy in the timing of their local YRBS efforts, with some
states fielding in the spring, others in the fall, and others that have fielded in both semesters. By contrast
the national YRBS is always fielded in the spring of odd-numbered years. Complex re-weighting would be
necessary for the patchwork of states with and without national sample data (four states do not conduct a
state-level YRBS). Perhaps the most serious concern is that states use different questions in their YRBS
surveys and do not conform entirely to the national YRBS instrument, which would represent a major loss
of data for the national study. All of these issues will need to be explored further if this approach is to be
considered further.
5. Consider drawing a “reserve sample” from which to replace refusing districts and/or schools.
Response: Do not concur and change not made
School replacements offer an apparent way of preserving target sample sizes in the presence of school
and district non-response. However, replacements do nothing to improve response rates or reduce
potential non-response bias; rather, they introduce other forms of bias. They also make it difficult to
compute proper response rates. From a logistical point of view, replacements make recruitment more
inefficient by either 1) increasing the burden associated with recruiting two samples in parallel or 2) starting
recruitment very late in the process once a primary entity refuses and thus losing time to work through
approvals from the secondary entity. This further compounds the potential negative effect on response
rates. At the district level, the arguments against replacements are even stronger along these lines as
multiple schools are typically selected within any given district. The effects of a single district refusal are
thus compounded in terms of the number of schools that must then be replaced, which may subsequently
fall across multiple districts, which in turn increases burden associated with recruitment and renders it more
difficult to determine proper response rates.

B. Recruitment and Maximizing Participation
Background and Summary of Recommendations
As with sampling, the panel felt that YRBS has many strengths in its approach to district, school, and student
recruitment and participation. The panel agreed that engaging state departments of health and education to send
letters of support to school districts and schools is a best practice and should be continued. ICF reported that inperson recruitment strategies have been increasing in recent years, and it appears to be effective at gaining
cooperation. The panel agreed that continuing this practice with districts and schools added value to the study.
More specifically, the panel agreed that working with school districts to provide the information needed for their
research approval committees has a strong positive benefit on school-level cooperation. Further, the panel agreed
that continuing and strengthening recruitment coordination with the National Youth Tobacco Survey (NYTS) and
state level YRBS should have a positive impact on national YRBS.
The most frequent recommendations for change involved the recruitment materials at the district and school levels,
particularly for private, non-Catholic schools, which are particularly difficult to recruit.
Page 6

1. Continue and increase use of in-person recruiters for districts and schools.
Response: Concur and change in effect
The national YRBS contractor plans to continue using in-person recruitment efforts for districts and schools
from which it is particularly difficult to obtain cooperation (including those who initially refuse) and for those
districts with a large number of schools selected in the sample. Recent efforts with in-person recruitment have
proven to be successful and the expectation would be that as these efforts develop and expand, the YRBS will
have continued or increased success.
2. Contact state Departments of Education (DOE) when districts do not participate, and ask for their help in
securing cooperation.
Response: Concur and change in effect
YRBS recruitment efforts include outreach at the state level once the sample has been drawn and approved.
This correspondence alerts state DOEs and Departments of Health (DOHs) as to which districts and schools
have been selected and seeks their guidance on identifying district health advocates for historically
uncooperative districts. Also, a letter of support for the study is requested so that it can be included in study
invitation packets. The YRBS plans to continue its practice of reaching back to state-level DOE contacts to
confer on refusal conversion tactics in overcoming objections to district or school refusals. Panelists with
experience in this strategy suggest that, although it can make some districts unhappy, the practice generally
has a strong positive effect on cooperation. The YRBS maintains the voluntary nature of the survey at all
levels, so it will not encourage state DOEs to mandate participation from refusing entities; however, insights
that the state may have provide excellent context for subsequent discussions with refusing entities.
3. Revise district/school recruitment fact sheet to focus on past results from the YRBS that would be of interest to
districts, and not just on what district needs to know to make a decision. Also, consider tailored recruitment
materials for schools that are most likely to object to participation (e.g., small private schools).
Response: Concur and change in effect
The current YRBS fact sheet included with recruitment materials is solely focused on the objectives and
processes that decision-makers must consider when deliberating their participation. Panelists agreed that
districts are likely more amenable to participation when they are presented with data that is meaningful to them.
This may be particularly true in the case of private schools, which represent a substantial proportion of refusing
schools. This may require combining private school data across multiple YRBS cycles, but that information is
available (see recommendation A.1 above). A revised fact sheet will be used in future rounds of recruitment,
including making the document more graphically engaging and including YRBS results that are most relevant to
specific audiences.
4. Tailor recruitment efforts for districts that have large numbers of sampled schools within them (i.e., 3 or more),
or that have a large impact on representativeness.
Response: Concur and change planned for future
Related to recruitment recommendation #1 above, targeted in-person recruitment visits will include visits to
district-level decisions makers in those districts that have three or more sampled schools. In prior YRBS
cycles, districts with high numbers of schools were not approached as such unless there was reason to suspect
a refusal. A more proactive recruitment approach to these districts will consider in-person visits, as the fielding
budget allows.

Page 7

5. Time district and school recruitment to known schedules, including formal research proposal reviews,
standardized testing, and seasonal administration availability. Approach districts that historically appear in
national samples before sample is drawn to gain extra time in the recruitment/cooperation process.
Response: Concur and change planned for future
The YRBS already tailors district and school contact attempts and data collection schedules to district- and
school-specific schedules. However, more optimization can always be done, particularly for initial contacts with
districts. Panelists suggested proactive “relationship-building” contacts with districts that historically are
included in the national sample, even before the sample is drawn. This “your district may be sampled” prerecruitment contact would expend extra effort should a district not appear in a given cycle, but generally the
expectation is that the payoff would occur in the future when it would be part of the sample draw. Panelists also
emphasized the importance of finding times of year that administrators are most available and flexible with their
time, such as July and January when schools are on break but administrators are planning semester class
schedules.
6. Analyze potential for nonresponse bias due to using active v. passive/opt out parental consent.
Response: Concur in principle but change cannot be made
School surveys generally include a non-response bias component due to parental non-consent. Previous
analyses of YRBS data show no difference in prevalence of risk behaviors between schools requiring active
and passive consent. Additional analyses would require data from students whose parents do not consent,
which is not part of current YRBS and would require additional funding for a related study.
7. Consider following the National Assessment of Educational Progress (NAEP) model whereby YRBS project
staff are placed in state DOE offices and allocate 75% of their time to the study and donate the remaining 25%
to state efforts.
Response: Concur in principle but change cannot be made
Generally, CDC views the concept of local YRBS ambassadors favorably. In the past, CDC funded both statelevel DOEs and DOHs for HIV and chronic disease prevention efforts. Although that specific funding is no
longer available, the contacts made at the various state levels have been maintained and prove beneficial to
the YRBS. Unfortunately, DASH does not have sufficient resources to follow a NAEP model of placing staff in
various DOEs.
8. Consider the use of district-level incentives for allowing access to sampled schools.
Response: Concur in principle but change cannot be made
Just as household and establishment surveys use both promised and provided incentives to gain cooperation
from individuals and households, incentives could be used at the district level to gain cooperation. YRBS
already uses incentives at the school level, and the possible addition of a district incentive was discussed
following the dip in 2015 response rates. This was not implemented, and response rates rebounded in 2017
without it. However, districts and schools are continuing to be protective of instructional demands, and
maintaining high district and school participation rates requires new methods simply to hold steady. CDC
recognizes that incentives can be seen as coercion and therefore sometimes frowned upon by OMB and IRB.
Also, current funding levels for the YRBS do not include this line item. Therefore additional discussion related
to adding incentives would be needed.

Page 8

9. If receiving resistance about specific survey topics, offer to have data collector remain in the classroom once
the survey administration is completed so that they may answer any questions students have about specific
content covered in the instrument.
Response: Do not concur and change not made
Panelists reported success in overcoming administrators’ participation concerns related to specific survey
topics (e.g., sex, drugs, bullying), by offering to have the data collector debrief students as a group once they’ve
completed the questionnaire. YRBS data collectors are trained in survey administration protocols and are not
professionals trained to lead educational sessions related to the YRBS topics or offer opinions. IRB protocols
require YRBS field staff to provide students with the name of a school staff person with whom they can talk with
about topics of concern related to their participation in the survey. This approach will continue to be used.

C. Transition to Mixed Mode Methodology (PAPI and Web) Issues
Background and Summary of Recommendations
Historically, the YRBS has only been offered in a PAPI mode. CDC began exploring the possibility of changing the
mode of the YRBS in a 2008 OMB-approved methodological study (OMB Number 0920-0763. This study examined
the effects on health risk prevalence estimates across four separate study conditions: 1) school-based PAPI, 2)
school-based Web version, 3) school-based Web version of the questionnaire that contained skip patterns, and 4)
an “on your own” Web condition that allowed students to access the online questionnaire at a time and place of
their choosing, rather than participating as part of an intact classroom while at school. CDC did not find significant
differences in prevalence estimates among key indicators in any condition; however, students who participated in
the Web-based conditions expressed concerns about their perceptions of privacy that were strong enough that
CDC felt it could not rely on Web data collection for YRBS.
In the 10 years since this methodological study, the technological landscape in schools and among youth has
changed dramatically. Computer resources are more readily available, and students’ technology literacy and
familiarity with Web-based tasks is much greater. Stakeholders have continued to make repeated requests to CDC
to allow schools to participate via the Web using existing technology resources in schools. In response to
stakeholders’ requests, and because the 2008 Methodological Study of the YRBS showed comparable prevalence
estimates, CDC is transitioning the survey to a mixed mode approach by allowing the use of a Web-based version
of the survey. The first mixed mode implementation for the national YRBS is planned for the 2021 cycle; however,
state and local sites funded by CDC to do their own YRBS are being given the option to use mixed mode starting in
Spring 2019.
Panelists were asked to share their opinion on the expected impact of this mixed mode transition on the national
YRBS. ICF also solicited advice on procedures that should be in place during survey design and data collection to
ensure a smooth transition. For their consideration, ICF shared the following details with panelists:




Schools will be given the option to use PAPI, Web, or both
 Regardless, paper back-up will be available for entire schools, entire classes, or individual
students, as needed
Survey to be completed at school, using school’s or students’ existing technology resources or students’
own personal internet-connected devices
All other national YRBS protocols remain intact
 Random class selection process will be maintained
 Trained survey administrator will be present in each classroom
 Concerted non-response follow-up efforts at the school-, class-, and student-level
Page 9

The following section discusses the suggestions by the panelists for transitioning the YRBS to a mixed mode
methodology.
1. Prior to the 2021 YRBS cycle, conduct a “bridge study” that will allow CDC to explore what effect the transition
to a mixed mode methodology will have on prevalence estimates and established trends.
Response: Concur in principle but change cannot be made
CDC does not have sufficient funding to conduct a bridge study. However, CDC feels adequate investigation
will be done prior to the 2021 implementation so that confidence in prevalence trends can be maintained. The
2008 Methodological Study of the YRBS was a rigorous, nationally representative study that showed
comparable estimates can be obtained from PAPI and Web modes. Also, states conducing their own YRBS
will be allowed to offer mixed mode approaches in the 2019 YRBS, which will provide CDC with multiple
representative state-level data sets to analyze for potential trend breaks before the 2021 national study. To
facilitate analysis by mode, respondent records will be flagged in each data set to indicate the mode of data
collection used. In combination, the 2008 Methodological Study and the various 2019 state-level YRBS
surveys will provide CDC with confidence moving forward to 2021. As a possible compromise to a full bridge
study, panelists thought a small retest of about 50 cases in each condition (PAPI and Web) that showed the
same results as the 2008 could be written up in a manuscript and cited in future OMB packages, further
illustrating that trend lines will not be affected.
2. Consider only allowing students to use school computer and Web resources rather than their own devices and
connections. Panelists shared a concern that by letting students use their own device, CDC loses some control
of how the survey looks on screen. For example, questions could be cut off or scrolling issues could appear.
Panelists cautioned that an extensive amount of usability testing must be done to control for this across a broad
array of devices, rather than limiting usability testing to those devices most commonly found in schools.
Panelists also shared that parents may have installed parental controls that allow them to monitor content
viewed on their youth’s devices, which jeopardizes the anonymity of students’ responses and could potentially
reduce the candor with which they respond.
Response: Further exploration needed
CDC understands the difficulty involved in letting students use their own devices, but is committed to offering
schools and students options that make participation most convenient. As such, the guidance to states/districts
conducting their own mixed-mode YRBS is to allow the use of students’ personal devices. CDC acknowledges
that some participating schools will not have sufficient internet-connected devices for all selected students to
participate at the same time, thus the available options include PAPI back-up and use of personal devices.
However, the complications raised by the panelists during the peer review meeting, as well as preliminary
findings from early pilot testing of the web-based YRBS that suggest some students feel their privacy may be
impacted, indicate that it is too early to rule decisively on the issue for the national YRBS. Because the states
can begin implementing this mixed mode approach starting in 2019, the national YRBS has an opportunity to
learn from the experience of the early-adopters and use that insight to shape the 2021 cycle. Regardless of
findings from state-level YRBSs conducted in mixed mode, we do not anticipate ever withdrawing the option of
PAPI back up. We will work closely with OMB and ICF’s and CDC’s Institutional Review Boards to ensure an
approach that balances human subjects’ protections, efficient use of resources, optimal user experience, and
perceptions of privacy.

Page 10

D. Methodological Strategies to Measure Emerging Topics
Background and Summary of Recommendations
CDC recognizes the value of the rich trend lines that have been established over the lifetime of the YRBS. Further,
there is general agreement that keeping survey burden low and acceptable to schools requires maintaining (i.e., not
extending) the length of the current questionnaire. However, CDC has struggled with how to capture national data
on emerging issues, knowing that adding new questions means having to delete others. Another topic that CDC
wished to hear the panelists’ opinion on was a reliable indicator for socioeconomic status.
The panelists were queried on their response to these common surveillance dilemmas.
1. Consider creating a question rotation design by asking certain questions every other cycle (i.e., every 4 years),
specifically those with trend lines that do not change much over time. This would facilitate continued trend
analysis, but would also allow space for including questions on emerging public health issues.
Response: Concur and change planned for future
The panel acknowledged the difficulty of adding, removing, or modifying questions, especially those that have
decades’ worth of trend data or are of major interest to key stakeholders. This is a particular challenge for state
level stakeholders because state-level sample sizes can be small and they rely on the national YRBS to provide
a national comparison. DASH currently engages its state and local partners to vote on changes to the standard
questionnaire, which is the base for the national questionnaire. DASH includes an additional ten questions to
the standard questionnaire for the national questionnaire. Panelists’ experience with this dilemma have
included a formal review that accounts for the following:




How often does the trend change?
Does the question get heavily edited each round?
Who are the stakeholders for the data element?

A major strength of the YRBS is its ability to provide data on risk behaviors co-occurrence, so a rotating,
modular questionnaire approach requires careful consideration of groups of variables that tend to be used
together in stakeholders’ analyses.
2. Explore ways to determine school-level SES by following the on-going research of Doug Geverdt, who is a
statistician with NCES, on the use of catchment areas, or student zip codes, to further build on the SES
indicators.
Response: Concur and change planned for future
The panel recognized the importance of considering SES in the analysis of the YRBS data, but lamented the
difficulty in determining a reliable source for SES indicators. There was a consensus that free and reducedprice lunch was not an accurate indicator. Efforts to determine student-level SES, such as a maternal
education question, have failed. Growing research is showing that it may be more about the school SES than
that of the individual student/household. Using school zip code was an intriguing concept, but there was a
recognition that the school zip code does not always match the zip code of the students. There is growing
interest in using catchment areas and it was noted that at least one urban school district uses valuable real
estate on its local questionnaire to ask about the zip code in which the student lives, allowing them to get at
individual student level data. At minimum, YRBS should engage experts in SES and poverty measurement to
establish a list of recommended measures that can be calculated from current YRBS data or currently-linked
Page 11

data, and recommendations for additional measures to create. Some analyses using existing SES indicators
(e.g., free and reduced-price lunch) already are underway at CDC.

Page 12

Appendix A. Discussion Topics and Participant List

Page 13

Youth Risk Behavior Survey Peer Review Panel Meeting
Discussion Topics
Date: April 26, 2018; Time: 9:30 AM – 3:30 PM EST
Location: ICF Office * 3 Corporate Blvd. NE Suite 370 * Atlanta, Georgia 30320
1. Welcome and Introductions
2. History and Background of the National Youth Risk Behavior Survey (YRBS) Methodology
3. Primary Discussion Topics
a. Analytical objectives of the YRBS
b. Frame development and sampling design
c. Participation rates and non-response avoidance/correction
d. Fielding approach

a. Current
b. Transition to web-based methodology
e. Methodological strategy to address emerging topics, including options for socio-economic
status indicators
4. Post-meeting roles and responsibilities
5. Adjourn

Page 14

Youth Risk Behavior Survey Peer Review Panel Meeting
Participant List
Panel Members
a. Laura Clary, Johns Hopkins University
b. Jennifer Parker, National Center for Health Statistics (NCHS)
c. Susan Queen, National Center for Health Statistics (NCHS)
d. Andy Zukerberg, National Center for Education Statistics (NCES)
CDC/DASH:
a. Kathleen Either, Division Director
b. Stephen Banspach, Associate Director for Science
c. J. Michael Underwood, School-based Surveillance Branch Chief
d. Lisa Barrios, Research Application and Evaluation Branch Chief
e. Nancy Brener, Contracting Officer Representative and Survey Operations Team Lead
f. Tim McManus, Data Management and Analysis Team Lead
g. Zewditu Demissie, Scientific Support and Innovation Team Lead
h. Shari Shanklin, State/Local/Territorial Technical Assistance Lead
ICF:
a. Kate Flint, Senior Advisor/Officer in Charge
b. Alice Roberts, Project Director
c. Ronaldo Iachan, Senior Statistical Team Lead
d. Matt Jans, Senior Methodologist
e. Amy Hughes, YRBS Deputy Project Director/Recruitment and Data Collection Team Lead
f. Jill Trott, NYTS Deputy Project Director/Recruitment and Data Collection Team Lead

Page 15

Appendix B. Curriculum Vitae of Peer Review Panel Members

Page 16

Laura Clary, PhD
Rockville, MD 20853

(480) 747-7666

[email protected]

Professional Summary
Dr. Clary’s experience includes over 15 years of managing research and evaluation projects, designing
research and learning questions, directing data collection, and spearheading data analysis for a variety
of federally-funded longitudinal evaluation projects working on school-based projects involving
children and adolescents, and their communities, particularly in the area of children’s social and
emotional learning (SEL). She has strong writing, analytic, and presentation skills developed through
years of working in applied research. She managed all aspects of both quantitative and qualitative
projects, including developing proposals, designing research and survey protocols, developing and
testing questionnaires, implementing data collection and data management procedures, conducting
statistical analysis, and drafting reports, briefs, conference presentations, and journal articles. Within
these projects, she demonstrated strong organizational skills, the ability to coordinate multiple projects
and deadlines, work as part of interdisciplinary teams, and supervise junior staff in the implementation
of data collection and data analysis. In addition, she has extensive training and experience with data
analysis using a variety of statistical packages.

EDUCATION
Ph.D. Family and Human Development, Measurement and Statistical Analysis Specialization
Arizona State University, December 2015
Dissertation: Child-level predictors of boys’ and girls’ trajectories of relational, verbal,
and physical victimization
Committee: Becky Ladd (chair), Gary Ladd, Kimberly Updegraff, and Carlos Valiente
M.S.

Family and Human Development, Measurement and Statistical Analysis Specialization
Arizona State University, May 2011
Thesis: Risk and protective factors of peer victimization: The role of preschoolers'
affiliations with peers
Committee: Laura Hanish (chair), Carol Martin, and Kimberly Updegraff

B.A.

Psychology (major), English Literature (minor), Smith College, June, 1997

STATISTICAL EXPERTISE
ANOVA/MANOVA, regression, structural equation modeling (SEM), psychometrics,
mediation/moderation, multilevel modeling, longitudinal (trajectory) analysis, using
propensity score methods for estimating causal effects, and web scraping. Programming
expertise in SPSS, SAS, and Stata. Experience with Mplus, R, Lisrel, and AMOS.

Clary, page 1

PROFESSIONAL RESEARCH EXPERIENCE

2017 - present

Faculty Research Associate, Department of Mental Health
Johns Hopkins University
Serve as Field Director for a randomized control trial of a universal intervention
program to improve the social emotional learning(SEL) and overall wellness of
urban middle school students exposed to trauma in the Baltimore City Schools
(PI: Tamar Mendelson, Johns Hopkins University; funded by IES and NICHD).
Oversee overall intervention implementation and data collection, as well as
supervising all project staff (i.e., research assistants, junior and senior research
coordinators, data manager, and implementation staff).
Identify and lead grant proposal development and assist other department faculty
in writing grants. Currently developing two grant proposals to analyze secondary
data sets related to SEL development and academic outcomes. Serve as lead and
supporting author on relevant journal publications and lead statistical analyses.

2012– 2017

Co-founder, Methodological Consultants
Provide research design, data collection, and statistical consulting for academic
and non-academic research centers (e.g., Davidson Institute, Born This Way
Foundation), faculty (e.g., Loyola Marymount University, UCLA, Santa Monica
College), and media (e.g., HBO). Includes dissertation/thesis coaching for
M.S./M.A., Ph.D., and Ed.D. students in fields of higher education administration,
psychology, business, sociology, and family studies, including research design,
statistical analysis, and copyediting (with approval of students’ committee).

2011 – 2012

Research Associate, Center for the Prevention of Youth Violence
Johns Hopkins University
Collected student, teacher, and administration observational and interview data in
Maryland high schools. Project was part of the Maryland Safe and Supportive
Schools (MDS3) Initiative (PI: Catherine Bradshaw, Johns Hopkins University)
to provide SEL and positive school climate programs and evaluation.

2005 – 2011

Data Manager, T. Denny Sanford School for Social and Family Dynamics,
Arizona State University
Data Manager for: (1) Understanding School Success Project, a longitudinal,
NICHD-funded study of bullying, social predictors of early school success,
positive peer relationships, and school readiness in Phoenix Head Start classrooms;
and (2) Bilingual and School Readiness Project, a longitudinal NICHD-funded
study to study peer relationships, school readiness, and language acquisition in
Phoenix Head Start classrooms (PIs: Carol Martin, Rick Fabes, and Laura Hanish).

Clary, page 2

Trained and supervised undergraduate and graduate students in data
collection procedures and data entry. Conducted analyses, reliability analysis
and psychometrics of measures. Assisted in the design of questionnaires and
administered to children in school and lab settings.
2004 -2005

Project Director, UW Autism Center
University of Washington
Directed activities of nationwide NIH-funded project involving 250 families who
have two or more children on the autism spectrum. Project focused on broader
phenotype characteristics and early identification of children with autism. Served
as liaison to Seattle public schools (PI: Geraldine Dawson).

2000-2003

Project Director, Center for Social Development and Education
University of Massachusetts, Boston
Directed activities of two NIH grant-funded research and intervention projects
involving children in inclusive and special education classes in elementary
schools in Boston Public Schools and three surrounding school districts. Projects
focused on implementation and evaluation of a SEL intervention (PI: Gary
Siperstein).
Co-led development of SEL intervention and evaluation which included an antibullying and promoting positive peer friendships curriculum and video assessment
tool (Promoting Social Success, 2003). Involved in all aspects of implementation,
including development and leading of intervention in several classrooms, and
teacher training workshops. Served as primary liaison to district and school
administration and staff in participating school systems.
Assisted in the development and implementation of surveys and interviews for the
evaluation of International Special Olympics and National Best Buddies program.

1998-2000

Research Assistant, Center for Social Development and Education
University of Massachusetts, Boston
Assisted in multiple grant-funded research and SEL -related intervention projects
involving children in inclusive and special education classes in elementary
schools in Boston and surrounding districts. Assisted in individual and class-wide
data collection, organized teacher workshops, and served as a liaison to teachers
and playground staff. In charge of data entry and collection of student and teacher
observational data.

Clary, page 3

EVALUATION AND POLICY REPORTS
Jans, M. & Clary, L.K. (2010, October). Total survey error, data quality, and statistical error:
Recommendations to the National Science Foundation’s Social, Behavioral, and Economic
Sciences Directorate for 2020 planning. US Census Bureau, Statistical Division and Arizona
State University, Department of Family and Human Development.
Siperstein, G. N., Hardman, M. L., Wappet, M. T., & Clary, L. K. (2001, December). National
evaluation of the Special Olympics Sports Program. University of Massachusetts, Boston,
Center for Social Development and Education & University of Utah, Department of Special
Education.

MEDIA INTERVIEWS
2009

Media Interview, Early Ed Watch Blog (The New American Foundation).
Interview: http://www.newamerica.net/blog/blog/early-edwatch/2009/making-connection-between-socialbehaviors-preschool-andkindergarten-success-11

PEER-REVIEWED PUBLICATIONS
Martin, C. L., DiDonato, M., Clary, L. K., Fabes, R. A., Palermo, F., Kreiger, T. C., & Hanish, L.
D. (2012). Gender Normative and Gender Non-Normative Preschool Children:
Psychosocial and Environmental Correlates. Archives of Sexual Behavior, 41, 831-84.
Steketee, G., Van Noppen, B. L., Cohen, I., & Clary, L. K. (1999). Anxiety disorders. In J. B. W.
Williams & K. Ell (Eds.), Advances in mental health research: Implications for practice (pp.
118-156). Washington, DC: NASW Press

JOURNAL ARTICLES IN PROGRESS
Clary, L.K. & Ladd, B.K. (under review). Child-level predictors of boys’ and girls’ trajectories of
relational, verbal, and physical victimization.
Clary, L.K. & Ladd, B.K. (under review). Anti-bullying interventions: An overview of theories and
application to elementary school-based prevention.
Mendelson, T., Clary, L.K., & Greenburg, M. (in progress). Developing a sustainable and communityled universal prevention program for adolescents experiencing trauma.
Mendelson, T., Harris, A., Clary, L. K., Ebnajaad, C., Gould, L., Dariotis, J., & Greenburg, M. (in
progress). Randomized control trial of a wellness intervention and effects on student social
competence and internalizing symptoms.

Clary, page 4

Clary, L.K., & Ladd, B.K. (in progress). Teachers’ beliefs about bullying and influence in
children’s experience of victimization.

CONFERENCE PRESENTATIONS
*Dr. Clary was presenting author
*Clary, L. K. & Ladd, B.K. (2016, June). Anti-bullying interventions: An overview of theories and
application to elementary school-based prevention. Paper presented at the 2016 Annual
Meeting of the Society for Prevention Research.
*Clary, L. K. & Ladd, B.K. (2016, April). Boys’ and girls’ trajectories of relational, verbal, and
physical victimization in early elementary school. Paper presented at the 2016 Annual
Meeting of the American Educational Research Association.
*Clary, L. K., Hanish, L. D., Martin, C. L., & Fabes, R. A. (2011, March). Time spent with peers:
Risk and protective factors for preschoolers’ peer victimization? Poster presented at the
Biennial Meeting of the Society for Research in Child Development, Montreal, Canada.
Mikulski, A., M., Palermo, F., Clary, L.K., Meek, S., Fabes, R. A., Hanish, L.D., & Martin, C.L.
(2011, March). Do Spanish-speaking children improve their academic skills after a year in
Head Start? Poster presented at the Biennial Meeting of the Society for Research in Child
Development, Montreal, Canada.
Palermo, F., Mikulski, A., M., Clary, L.K. Fabes, R. A., Hanish, L.D., & Martin, C.L. (2011,
March). Teachers' English use and Spanish-speaking preschoolers' English production skills:
The role of English comprehension. Poster presented at the Biennial Meeting of the Society
for Research in Child Development, Montreal, Canada.
Palermo, F., Mikulski, A. M., Clary, L. K., Hanish, L.D., Martin, C.L., & Fabes, R. A. (2010,
June). Bilingualism and School Readiness: The Role of Teachers’ English Use in Head Start
Classrooms. Poster presented at the National Head Start Meeting, Washington, DC.
*Clary, L. K., Hanish, L. D., Martin, C. L., & Fabes, R. A. (2009, April). Social behaviors in
preschool: Does it predict academic outcomes in kindergarten? Poster presented at the
Biennial Meeting of the Society for Research in Child Development, Denver, CO.
Goble, P. M., Martin, C. L., Hanish, L. D., Clary, L. K., DiDonato, M., and Fabes, R. A. (2009,
April). Gender normative and non-normative children: Activity choices across social
contexts. Poster presented at the Biennial Meeting of the Society for Research in Child
Development, Denver, CO.
*Clary, L. K., Palermo, F., Kreiger, T. C., DiDonato, M., Martin, C. L., Hanish, L. D., & Fabes, R.
A. (2008, April). Assessing differences in gender normative and gender non-normative
children’s characteristics and social play behaviors in preschool. Poster presented at the
Third Gender Development Research Conference, San Francisco, CA.

Clary, page 5

DiDonato, M., Martin, C. L., Palermo, F., Clary, L. K., Kreiger, T. C., Fabes, R. A., Hanish, L. D.
(2008, April). How does gender non-normativity affect children's peer socialization
opportunities? Poster presented at the Third Gender Development Research Conference, San
Francisco, CA.
Goble, P. M., Hanish, L. D., Fabes, R. A., Martin, C. L., Clary, L. K., and Palermo, F. (2008, April).
Exploring the influence of social contexts on young children's gender-typed activity choices.
Poster presented at the Third Gender Development Research Conference, San Francisco, CA.
*Clary, L. K., Palermo, F., Briggs, P. T., Kreiger, T., Martin, C. L., Fabes, R. A., & Hanish, L. D.
(2007, March). Social relationships and literacy in young gender non-normative girls.
Poster presented at the Biennial Meeting of the Society for Research in Child
Development, Boston, MA.
Hanish, L. D., Fabes, R. A., Martin, C. L., Clary, L. K., & Palermo, F. (2007, March). Peer
socialization of children’s aggression in early childhood: Does the gender of peers matter? In
L. D. Hanish (Chair), Gender differences in the form and function in aggression across the
lifespan. Biennial meeting of the Society for Research in Child Development, Boston, MA.
*Palermo, F., Clary, L. K., Hanish, L. D., Martin, C. L., & Fabes, R. A. (2006, April). Gender nonnormative behaviors: Risk factors for peer victimization in preschool? Poster presented at the
Second Gender Development Research Conference, San Francisco, CA.
Hanish, L. D., Clary, L. K., & Palermo, F. (2006, April). Peers’ socialization of aggression in
early and middle childhood: Patterns for boys and girls. Paper presented at the Second
Gender Development Research Conference, San Francisco, CA.
*Estes, A., Munson, J., Clary, L. K., & Dawson, G. (2005, April). Presence of a broader
phenotype of autism in siblings from multiplex autism families. Poster presented at the
Biennial meeting of the Society for Research in Child Development, Atlanta, GA.

TEACHING EXPERIENCE
University of Maryland, University College, Department of Mathematics and Statistics
Adjunct Associate Professor
Introduction to Statistics for the Behavioral Sciences (online, Fall 2016, Spring 2017, Summer
2017, Spring 2018)
Adjunct Assistant Professor
Introduction to Statistics for the Behavioral Sciences (in-person, Spring 2011; online,
Summer 2011, Fall 2011, Spring 2012, Summer 2012, Fall 2012, Spring 2013, Summer
2013, Fall 2013, Spring 2014, Summer 2014, Fall 2014, Spring 2015, Fall 2015, Spring 2016,
Summer 2016).

Clary, page 6

Arizona State University, T. Denny Sanford School of Social and Family Dynamics
Instructor
Human Development (in-person, Fall 2007; online, Summer 2010)
University of Massachusetts Boston, Department of Human Development
Instructor
Child Development (in-person, Spring 2002)
Co-Instructor
Research Methods (in-person, Spring 2000, Fall 2000, Spring 2001, Fall 2001, Fall 2002,
Spring 2003)
Human Development (in-person, Fall 1999)

TEACHER TRAINING
2006-2007

Preparing Future Faculty Program

COMPETITIVE FELLOWSHIPS AND AWARDS
2018
2018
2014
2011
2010
2008
2008
2008
2005-2008

Nominee, Stanley J. Drazek Teaching Excellence Award, UMUC
Nominee, Undergraduate Teaching Excellence Award, UMUC
Nominee, Stanley J. Drazek Teaching Excellence Award, UMUC
SRCD Student Merit Travel Award (competitive; $300)
Graduate University Fellowship, Arizona State University ($3000)
Fellow, Institute on Youth Violence Prevention, UC Riverside ($1000)
School for Social and Family Dynamics Student Engagement Award
Finalist, Graduate Student Teaching Excellence Award
Graduate University Fellowship, Arizona State University ($3000 per year)

SERVICE ACTIVITIES
2007-2011
2007-2008
2008
2006-2008
2006-2007
2006-2008

Graduate Student Mentor, School for Social and Family Dynamics
President, Family and Human Development Graduate Student Association 2007Member, School for Social & Family Dynamics Conference Committee
Member, School of Social and Family Dynamics Task Force
Secretary/Treasurer, Family and Human Development Graduate Student
Association
Student Coordinator, Graduate Student Recruitment

Clary, page 7

REVIEWING AND EDITING ACTIVITIES
2017 – on
2016
2009-2013
2005-2013
2007

Reviewer, Journal of Research on Adolescence
Textbook Reviewer, Introduction to Statistics (Illowsky, B. & Dean, S., 2016)
Grant Reviewer, Jumpstart Grant, Graduate Student Professional Organization,
Arizona State University
Grant Reviewer, Graduate Student Professional Organization, Arizona State
University
Textbook Editing Assistant, Discovering Child Development. (Martin, C. L. & Fabes,
R. A., 2008)

ASSOCIATION/CONSORTIUM MEMBERSHIPS
Society for Research in Child Development
American Educational Research Association
Society for Prevention Research
University-Based Child and Family Policy Consortium
International Bullying Research Network

Clary, page 8

Curriculum Vitae

Name

Jennifer Davidson Parker

Current Position

Director, Division of Research and Methodology

Office Address

National Center for Health Statistics
Centers for Disease Control and Prevention
3311 Toledo Road
Hyattsville, Maryland 20782
(301) 458-4419
[email protected]

Home Address

4323 Woodberry Street
University Park, Maryland 20904
(301) 277-1949, residence
(240) 498-3522, cell
[email protected]

Citizenship

United States

Education

University of California, Berkeley, Ph.D., Biostatistics 1990
University of California, Berkeley, M.A., Biostatistics 1986
University of California, Santa Barbara, B.A., Mathematics-Economics 1984

Experience
Feb 2018-present

Director, Division of Research and Methodology. National Center for Health Statistics,
Centers for Disease Control and Prevention, Hyattsville, Maryland.

Sep 2017-Feb 2018

Acting Director, Division of Research and Methodology. National Center for Health
Statistics, Centers for Disease Control and Prevention, Hyattsville, Maryland.

Jan 2017-Sep 2017

Special Assistant to the Director, Division of Research and Methodology. National
Center for Health Statistics, Centers for Disease Control and Prevention, Hyattsville,
Maryland.

May 2015 to present

Senior Statistician, Division of Health and Nutrition Examination Statistics. National
Center for Health Statistics, Centers for Disease Control and Prevention, Hyattsville,
Maryland.

Dec 2010-May 2015

Chief, Special Projects Branch, National Center for Health Statistics, Centers for Disease
Control and Prevention, Hyattsville, Maryland.

2012-2018

Adjunct Faculty, University of Maryland, School of Public Health, Maryland Institute of
Applied Environmental Health. College Park, Maryland.

Jul 2010-Dec 2010

Acting Chief, Special Projects Branch, National Center for Health Statistics, Centers for
Disease Control and Prevention, Hyattsville, Maryland.

Aug 2001-Jul 2011

Health Research Scientist, Office of Analysis and Epidemiology, National Center for

Parker, page 1

Health Statistics, Centers for Disease Control and Prevention, Hyattsville, Maryland.
Jun 2002- Jun 2004

Acting Chief, Population Epidemiology Branch, National Center for Health Statistics,
Centers for Disease Control and Prevention, Hyattsville, Maryland.

Aug 1997-Aug 2001

Senior Staff Fellow, Infant and Child Health Studies Branch, National Center for Health
Statistics, Centers for Disease Control and Prevention, Hyattsville, Maryland.

Jan 1996-July1997

Senior Data Analyst, California Medical Review, Inc (CMRI), San Francisco, California.

Sept 1994-May1996

Pew Postdoctoral Fellow, Institute for Health Policy Studies, University of California
San Francisco, California.

Jul 1993-Sep 1994

Research Statistician, School of Public Health, University of California, Berkeley
California. Part-time.

Feb 1991-Feb 1993

Staff Fellow, National Center for Health Statistics, Centers for Disease Control and
Prevention, Hyattsville, Maryland.

Nov 1990-Feb 1991

Research Analyst, CSR Inc., Washington D.C.

Selected CDC Awards


NCHS Merit Award (group), September 2017. The group award included NCHS participants on the
on the NHANES Longitudinal Feasibility Study workgroup.



NCHS Elijah White Memorial Award, 2004.



NCHS/CDC Director’s Award, 2002.



NCHS/CDC On the Spot Award for service on the OMB Interagency Committee for the Review of
Standards for Data on Race and Ethnicity, 1999.



NCHS/CDC Directors Award (group), June 1999. The group award included NCHS participants on
the Interagency Committee for the Review of Standards for Data on Race and Ethnicity.

Selected professional activities


NCHS and CDC activities
o

NCHS workgroup on Data Suppression/Presentation Standards (lead), 2013-present

o

NCHS Administrative Data Liaison for OMB M-14-06, April 2014 - 2015

o

NCHS representative to Federal Committee on Statistical Methodology (FCSM) Subcommittee on
Administrative Records, 2010-2015

o

NCHS representative to CDC Shepard Award committee, 2007, 2008, 2009

o

NCHS representative to the CDC Statistical Advisory Group, 2005-2006

o

NCHS co-representative to Health and Human Services working group on race and ethnicity data,
2000-2004

o

NCHS representative to Tabulation Working Group. Interagency Committee for the Review of
Standards for Data on Race and Ethnicity, 1997-2003

o

Co-organized NCHS workshop on errors in gestational age reporting, 2000

Parker, page 2



Statistical organizations
o



American Statistical Association


Fellow, 2017



Pat Doyle Award for service to government statistics, Government Statistics Section,
2017



Secretary/Treasurer, Government Statistics Section, American Statistical Association,
2015-2016



Bryant Scholarship Committee for an Outstanding Graduate Student in Survey Statistics,
2011-present



Nominated for Jeanne Griffith Award for mentoring, Government Statistics Section, 2011



Member since 1987

o

Member, Federal Committee on Statistical Methodology, 2017-present

o

Elected member International Statistics Institute, 2012-present

o

Editorial Board, Journal of the International Association of Official Statistics 2013-present

o

Caucus for Women in Statistics


President, 2010 (President-Elect 2009, Past-President 2011)



Member-at-large, 2005-2007

Epidemiology and environmental health activities
o

Editorial board, Paediatric and Perinatal Epidemiology 2005-2012

o

International Collaboration on Pregnancy Outcome and Air Pollution (ICAPPO), 2007-2011

o



2007- Co-organized workshop: “Methodological Issues in Studies of Air Pollution and
Pregnancy Outcome”, September, Mexico City, Mexico



2008 – Co-organized workshop: “International Workshop to Develop a Standardized
Methodological Approach to Data Re-analyses,” October, Pasadena, California



2008- 2010 - Developed protocol and coordinated ICAPPO pilot study



2009 – Co-organized workshop: “Workshop to Discuss Progress and Future Directions,”
August, Dublin, Ireland.



2010 – Co-organized workshop: “Workshop to Discuss Progress and Future Directions,”
August, Seoul, Korea.

Environmental Health committees, meetings, external review boards




Environmental Protection Agency


America’s Children and the Environment, 2012 report – reviewer, contributed to
climate indicator, evaluated sample weights for women of childbearing age



Reviewer for Integrated Science Assessment for Carbon Monoxide, US EPA
National Center for Environmental Assessment, 2008

National Climate Assessment (http://www.globalchange.gov/what-wedo/assessment/nca-overview)


Member Health Indicators workgroup, 2013-2015.
http://www.globalchange.gov/what-we-do/assessment/indicators-system



Represented CDC at meeting of National Climate Assessment (NCA)’s
Knowledge Management workshop (Sept 2010).

Parker, page 3



o



Invited to participate in NCA workshop: Climate Change Impacts and
Responses. Societal Indictors for the National Climate Assessment (meeting
April 2011). Report online March 1, 2012
http://downloads.usgcrp.gov/NCA/Activities/Societal_Indicators_FINAL.pdf

Scientific committees and review
 Scientific Advisory Committee (SAC) for Emory/Georgia Tech Collaborative: MultiScale Assessment of Health Effects of Air Pollution Mixtures Using Novel
Measurements and Models (SCAPE). 2011-2015.


Reviewer, Scientific proposals, Health Effects Institute, “RFA: Impact of Air Pollution
on Infant and Children's Health” 2009, “HEI’s New Investigator Award”, 2010



External Advisory Committee for “Air Pollution and Environmental Justice: Integrating
Indicators of Cumulative Impact and Socioeconomic Vulnerability into Regulatory
Decision-Making” California Air Resources Board, 2005-2009



NRC meeting on linking human and environmental data for climate change research,
participant Dec. 11 2009



International Workshop on Air Pollution and Human Reproduction. May 9-11, 2007.
Munich (Neuherberg), GSF campus, Institute of Epidemiology



Represented NCHS on the Monitoring Work Group in the National Conversation on
Public Health and Chemical Exposure. Led the health subgroup, about 5-8 people, to
develop the health components of the meeting report. 2009-2011



NCHS representative to CDC working group on climate change, 2007 – 2010

Academic activities


Provided professional input on 4 Academic Tenure Reviews. Participated on 3 PhD dissertation
committees and 2 MA thesis committees. Supervised 1 MPH semester intern, 2 undergraduate
summer interns, and a handful of post-graduate fellows.

Research funding
1.

Data Linkage for Environmental Health Policy. Funded by the Office of the Assistant Secretary for Planning
and Evaluation (ASPE) 2005. $200,000.

2.

Air Pollution and Work Loss Days. Funded by the US EPA. 2007 $56,120

3.

Programming Support for Multiple Imputation of Gestational Age in Vital Statistics. Funded by ASPE. 2006.
$30,000.

4.

Linkage of NCHS data files to climate data. Funded by ASPE. 2009. $97,000.

5.

Linkage of NCHS data files to climate data. Funded by National Center for Environmental Health/CDC. 2009.
$73,981.00.

6.

Examination of Effects of Air Pollution on Mortality Trends and Pregnancy Outcomes. Funded by US EPA.
2009. $74,000.

Scientific Publications
1.

Parker JD, Kravets K, Vaidyanathan A. Particulate Matter Air Pollution Exposure and Heart Disease
Mortality Risks by Race and Ethnicity in the United States: 1997-2009 NHIS with Mortality Followup
Through 201. Circulation. 2018 Apr 17;137(16):1688-1697. Epub 2017 Dec 13

Parker, page 4

2.

Miller EA, McCarty F, Parker JD. Estimating missed links by race and ethnicity in record linkage with the
National Death Index. Ethnicity and Disease. 2017;27:77-84.

3.

Romeo Upperman C, Parker J, Jiang C, He X, Murtugudde R, Sapkota A (2015) Frequency of Extreme
Heat Event as a Surrogate Exposure Metric for Examining the Human Health Effects of Climate Change.
PLoS ONE 10(12): e0144202. doi:10.1371/journal.pone.0144202

4.

Weissman J, Gindi R, Miller DM, Miller EM, Parker JD. The relationship between linkage refusal and
selected health conditions of survey respondents. Survey Practice 2016; 9(5).

5.

Miller EA, Decker S, Parker JD. Characteristics of Those Who Choose Medicare Advantage over Fee-forService Upon Medicare Enrollment at Age 65. Journal of Ambulatory Care Management 2016; 39(3):231241.

6.

Aoki Y, Brody DJ, Flegal KM, Fakhouri THI, Axelrad DA, Parker JD, Blood lead and other metal
biomarkers as risk factors for cardiovascular disease mortality. Medicine (Baltimore). 2016 Jan; 95(1):
e2223.

7.

Zhang G, Schenker N, Parker JD. Multiple imputation for missingness due to non-linkage and program
characteristics: a case study of the National Health Interview Survey linked to Medicare claims, Journal of
Survey Statistics and Methodology. 2016 4 (3): 319-338

8.

Miller EA, Tarasenko YN, Parker JD, Schoendorf KC. Diabetes and colorectal cancer screening among
men and women in the USA: National Health Interview Survey: 2008, 2010. Cancer Causes Control. 2014
May;25(5):553-60.

9.

Simon A, Driscoll A, Gorina Y, Parker J, Schoendorf K. A longitudinal view of child enrollment in
Medicaid. Pediatrics, 2013 Oct;132(4):656-62.

10. Dadvand P, Parker JD, Bell ML, Matteo Bonzini M, Brauer M, Darrow LA, Gehring U, Glinianaia SV,
Gouveia N, Ha EH, Leem JH, van den Hooven EH, Jalaludin B, Jesdale BM, Lepeule J, Rachel MorelloFrosch R, Morgan GG, Pesatori AC, Pierik FH, Pless-Mulloli T, Rich DQ, Sathyanarayana S, Seo J, Slama
R, Strickland M, Tamburic L, Wartenberg D, Nieuwenhuijsen MJ, Woodruff TJ. Maternal Exposure to
Particulate Air Pollution and Term Low Birth Weight; A Multi-Country Evaluation of Effect and
Heterogeneity. Environmental Health Perspectives. 2013 121:367–373.
11. Zhang G, Schenker N, Parker JD, Liao D. Identifying implausible gestational ages in preterm babies with
Bayesian mixture models. Statistics in Medicine. 2013 May 30;32(12):2097-113.
* 2013 CDC Statistical Science Award for Best Applied Paper.
12. Nachman KE, Parker JD. Exposures to fine particulate air pollution and respiratory outcomes in adults
using two national datasets: a cross-sectional study. Environmental Health. 2012 Apr 10;11:25.
13. Branum AM, Parker JD, Keim SA, Schempf AH. Prepregnancy body mass index and gestational weight
gain in relation to child body mass index among siblings. American Journal of Epidemiology. 2011 Nov
15;174(10):1159-65. Epub 2011 Oct 7.
14. Parker JD, Rich DQ, Glinianaia SV, Leem JH, Wartenberg D, Bell ML, Bonzini M, Brauer M, Darrow L,
Gehring U, Gouveia N, Grillo P, Ha E, van den Hooven EH, Jalaludin B, Jesdale BM, Lepeule J, MorelloFrosch R, Morgan GG, Slama R, Pierik FH, Pesatori AC, Sathyanarayana S, Seo J, Strickland M,
Tamburic L, Woodruff TJ. The International Collaboration on Air Pollution and Pregnancy Outcomes:
Initial results. Environ Health Perspect. 2011 Jul;119(7):1023-8.
15. Akinbami L, Parker JD, Merkle S. Factors associated with school absence among children with
symptomatic asthma, United States, 2002-2003. Pediatric Allergy, Immunology, and Pulmonology
September 2010, 23(3): 191-200.
16. Parker JD, Liao D, Schenker N, Branum A. The use of covariates to identify records with implausible
gestational ages using the birthweight distribution. Paediatric and Perinatal Epidemiology, 2010
Sep;24(5):424-32.

Parker, page 5

17. Woodruff TJ, Parker JD, Adams K, Bell ML, Gehring U, Glinianaia S, Ha EH, Jalaludin B, Slama R.
International Collaboration on Air Pollution and Pregnancy Outcomes (ICAPPO). International Journal of
Environmental Research and Public Health, 2010 Jun;7(6):2638-52. Epub 2010 Jun 17.
18. Akinbami LJ, Lynch CD, Parker JD, Woodruff TJ. The association between childhood asthma prevalence
and monitored air pollutants in metropolitan areas, United States, 2001-2004. Environmental Research
2010 Apr;110(3):294-301. Epub 2010 Feb 1
19. Branum A, Parker JD, Schoendorf K. Trends in U.S. sex ratio by plurality, gestational age, and
race/ethnicity. Human Reproduction, 2009 Nov;24(11):2936-44. Epub 2009 Aug 3.
20. Johnson D, Parker JD. Air Pollution Exposure and Self Reported Cardiovascular Disease, Environmental
Research, 2009 109(5):582-9
21. Parker JD, Akinbami L, Woodruff TJ. Air pollution and childhood respiratory allergies in the United
States. Environmental Health Perspectives. 2009 117(1):140-7
22. Parker JD, Klebanoff M. Invited Commentary. Crossing curves: it’s time to focus on gestational-agespecific mortality. American Journal of Epidemiology. 2009 169: 798-801.
23. Woodruff TW, Parker JD, Darrow LA, Slama R, Bell ML, Choi H, Diggle P, Glinianaia S, Hoggatt KJ,
Karr C, Lobdell D, Pless-Mulloli T, Rankin J, Wilhelm M. Methodological issues in studies of air
pollution and reproductive health. Environmental Research. 2009 109(3):311-20
24. Parker JD, Mendola P, Woodruff TJ. Preterm birth following the Utah Valley Steel Mill closure. A natural
epidemiological experiment. Epidemiology 2008 Nov;19(6):820-3.
25. Slama R, Darrow L, Parker J, Woodruff TJ, Strickland M, Nieuwenhuijsen M, Glinianaia S, Hoggatt KJ,
Kannan S, Hurley F, Kalinka J, Srám R, Brauer M, Wilhelm M, Heinrich J, Ritz B. Meeting report:
atmospheric pollution and human reproduction. Environmental Health Perspectives. 2008 Jun;116(6):7918.
26. Parker JD, Kravets N, Akinbami L, Woodruff TJ. Evaluation of the Linkage between the National Health
Interview Survey and Air Monitoring Data. Environmental Research 2008 106(3):384-92.
27. Parker JD, Woodruff TJ. Influences of study design and location on the relationship between particulate
matter air pollution and birthweight. Paediatric and Perinatal Epidemiology. 2008 May;22(3):214-27.
28. Woodruff TJ, Darrow LA, Parker JD. Air Pollution and Postneonatal Infant Mortality in the US, 19992002. Environmental Health Perspectives 2008 Jan;116(1):110-5.
29. Darrow LA, Woodruff TJ, Parker JD. Maternal smoking as a confounder in studies of air pollution and
infant mortality. Epidemiology, 2006;17:592-3. (research letter).
30. Parker JD. The role of reported primary-race on health measures for multiple-race respondents in the
National Health Interview Survey, Public Health Reports, 2006;121:160-8.
31. Huynh M, Woodruff TJ, Parker JD, Schoendorf KC. Relationships between air pollution and preterm birth
in California. Paediatric and Perinatal Epidemiology, 2006;20:454-61.
32. Woodruff T, Parker JD, Schoendorf KC. The Relationship Between Fine Particulate Matter (PM2.5) Air
Pollution and Selected Causes of Postneonatal Infant Mortality in California. Environmental Health
Perspectives, 2006;114:786-90.
33. Parker JD, Schenker N. On the possible use of multiple imputation to handle missing and implausible
gestational age values in U.S. Natality public-use datasets. Paediatric and Perinatal Epidemiology,
2007;Suppl2:97-105.
34. Huynh M, Parker JD, Harper S, Pamuk E, Schoendorf KC. Contextual effect of income inequality on birth
outcomes. International Journal of Epidemiology, 2005;34:888-95.
35. Parker JD, Woodruff TJ, Basu R, Schoendorf KC. Air Pollution and Birth weight in California. Pediatrics,
2005 115(1):121-8.
36. Parker JD, Schenker N, Ingram DD, Weed JA, Heck KE, Madans JH. Bridging between two standards for

Parker, page 6

collecting information on race and ethnicity: an application to Census 2000 and vital rates. Public Health
Reports, 2004;119:192-205
37. Heck KE, Parker JD, McKendry CJ. Multiple-race mortality data for California, 2000-2001. Public Health
Reports, 2004;119:187-91
38. Basu R, Woodruff TJ, Parker JD, Saulnier L, Schoendorf KC. Comparing exposure metrics in the
relationship between PM2.5 and birth weight in California. Journal of Exposure Analysis and
Environmental Epidemiology, 2004;14:391-6.
39. Woodruff TJ, Parker JD, Kyle AD, Schoendorf KC. Disparities in exposure to air pollution during
pregnancy. Environmental Health Perspectives. 2003 Jun;111(7):942-6.
40. Howie L, Parker JD, Schoendorf KC. Excessive maternal weight gain patterns in adolescents. Journal of
the American Dietetic Association, 2003;103:1653-7.
41. Akinbami LJ, Schoendorf KC, Parker J. US childhood asthma prevalence estimates: the Impact of the
1997 National Health Interview Survey redesign. American Journal of Epidemiology, 2003;158:99-104.
42. Heck KE, Parker JD, McKendry CJ, Chavez GF. Mind the gap: bridge methods to allocate multiple-race
mothers in trend analyses of birth certificate data. Maternal and Child Health Journal, 2003;7:65-70.
43. Rhodes JC, Parker JD, Schoendorf KC. Contribution of excess weight gain during pregnancy and
macrosomia to the cesarean delivery rate, 1990-2000. Pediatrics, 2003;111:1181-5.
44. Schenker N, Parker J. From Single-Race Reporting to Multiple-Race Reporting: Using Imputation
Methods to Bridge the Transition. Statistics in Medicine, 2003;22:1571-87.
45. Parker JD, Madans J. The Correspondence between Interracial Births and Multiple Race Reporting
American Journal of Public Health, 2002;92:1976-81.
46. Parker JD, Schoendorf KC. Implications of Cleaning Gestational Age Data. Paediatric and Perinatal
Epidemiology, 2002;16:181-7.
47. Rolett A, Parker JD, Heck K, Makuc D. Parental Employment, Family Structure, and Child’s Health
Insurance. Ambulatory Pediatrics, 2001;1:306-13.
48. Heck K, Parker J, McKendry CJ, Schoendorf K. Multiple Race Mothers on the California Birth Certificate
2000. Ethnicity and Disease, 2001;11:626-32.
49. Jenny A, Schoendorf K, Parker J. The association between community context and mortality among
Mexican-American infants. Ethnicity and Disease, 2001;11:722-31.
50. Parker J, Makuc D. Methodologic Implications of Allocating Multiple Race Data to Single Race
Categories. Health Services Research, 2002;37:203-15.
51. Heck K, Parker J. Family Structure, Socioeconomic Status, and Access to Health Care for Children.
Health Services Research, 2002;37:173-86.
52. Atkinson JO, MacDorman MF, Parker JD. Trends in Births to Parents of Different Races. Ethnicity and
Disease, 2001;11:273-85.
53. Parker JD, Schoendorf KC, Kiely JL. A Comparison of Recent Trends in Infant Mortality among Twins
and Singletons. Paediatric and Perinatal Epidemiology, 2001;15:12-18.
54. Parker JD, Schoendorf KC. Variation in hospital discharges for ambulatory care-sensitive conditions
among children. Pediatrics, 2000;106(suppl):942-8.
55. Parker JD, Lucas JB. Multiple Race Reporting among Children in a National Health Survey. Ethnicity and
Disease, 2000; 10: 262-74.
56. Parker JD. Birthweight Trends Among Interracial Black and White Infants. Epidemiology, 2000;11:242-8.
57. Heck K, Schoendorf K, Parker J. Are Very Low Birthweight Births Among American Indians and Alaska
Natives Underregistered? International Journal of Epidemiology, 1999;28:1096-1101.

Parker, page 7

58. Marcus M, Kiely J, Parker J, McGeehin M, Jackson R, Sinks T. Anything Other than Chance? Fertility
and Sterility, 1999;71:969-70 (letter).
59. Parker JD, Sabogol F, Gebretsadik T. Relationship between Earlier and Later Mammography Screening California Medicare, 1992 through 1994. Western Journal of Medicine, 1999;170:25-7.
60. Parker JD, Gebretsadik T, Sabogol F, Newman J, Lawson H. Mammography Screening among California
Medicare Beneficiaries 1993-1994. American Journal of Preventive Medicine, 1998;15:198-205.
61. Luft H, Parker JD. Volume and Mortality in Coronary Artery Bypass Grafting (letter). British Medical
Journal, 1995; 311:1304-5.
62. Parker JD. Ethnic Differences in Midwife-Attended Births. American Journal of Public Health, 1994;
84:1139-41.
63. Parker JD, Schoendorf KC, Kiely JL. Association Between Measures of Socioeconomic Status and
Pregnancy Outcome in the United States. Annals of Epidemiology, 1994;4:271-8.
64. Parker JD, Abrams B. Differences in Postpartum Weight Retention between Black and White Mothers.
Obstetrics and Gynecology, 1993; 81:768-74.
65. Butler J, Abrams B, Parker J, Roberts JM, Laros RK. Supportive Nurse-Midwifery Care is Associated with
a Reduced Incidence of Cesarean Section. American Journal of Obstetrics and Gynecology,
1993;168:1407-13.
66. Parker JD, Schoendorf KC. Influence of Paternal Characteristics on the Risk of Low Birth Weight.
American Journal of Epidemiology, 1992;136:339-407.
67. Parker JD, Abrams B. Prenatal Weight Gain Advice: An Examination of the Recent Prenatal Weight Gain
Recommendations of the Institute of Medicine. Obstetrics and Gynecology, 1992;79:664-9.
68. Spear R, Bois F, Woodruff T, Auslander D, Parker J, Selvin S. Modeling Benzene Pharmacokinetics:
Calibration and Parametric Sensitivity Across Three Sets of Animal Data. Risk Analysis, 1991;11:641-54.
69. Abrams B, Parker JD. Ranges of Maternal Weight Gain Associated with Good Pregnancy Outcome.
Obstetrics and Gynecology, 1990;76:1-7.
70. Abrams B, Newman V, Key T, Parker J. Maternal Weight Gain and Preterm Delivery. Obstetrics and
Gynecology, 1989;74:577-583.
71. Abrams B, Parker J. Overweight and Pregnancy Complications. International Journal of Obesity,
1987;12:293-303.

NCHS Reports
1. Lloyd PC, Driscoll AK, Simon AE, Parker JD. Use of the National Health Interview Survey Linked to
Medicaid Analytic eXtract Data to Identify Children With Medicaid-covered Births. Natl Health Stat
Report. 2018 Apr;(109):1-11.
2. Chen TC, Parker JD, Clark J, Shin HC, Rammon JR, Burt VL. National Health and Nutrition Examination
Survey: Estimation procedures, 2011–2014. National Center for Health Statistics. Vital Health Stat 2(177).
2018.
3.

Parker JD, Talih M, Malec D, Beresovsky V, Carroll M, Gonzalez JF Jr, Hamilton B, Ingram DD,
Kochanek K, McCarty F, Moriarty C, Shimizu I, Strashny A, Ward BW. National Center for Health
Statistics’ Data Presentation Standards for Proportions. Vital Health Stat 2. 2017.

4.

Parker JD, Kruszon-Moran D, Mohadjer LK, Dohrmann SM, Van de Kerckhove W, Clark J, Burt VL.
Estimation Methods and Analytic Considerations: California and Los Angeles County, NHANES 19992006 and NHANES 2007-2014. National Center for Health Statistics. Vital Health Stat 2. 2017.

5.

Golden C, Driscoll AK, Simon AE, Judson DH, Miller EA, Parker JD. Linkage of NCHS Population
Health Surveys to Administrative Records From Social Security Administration and Centers for Medicare
Medicaid Services. Vital Health Stat 1. 2015 Sep;(58):1-53. PubMed PMID: 26375817.

Parker, page 8

6.

Weissman JF, Pratt LA, Miller EA, Parker JD. Serious Psychological Distress Among Adults: United
States, 2009-2013. NCHS Data Brief. 2015 May;(203):1-8. PubMed PMID: 26046826.

7.

Lloyd PC, Simon AE, Parker JD. Characteristics of Children in Medicaid Managed Care and Medicaid
Fee-for-service, 2003-2005. Natl Health Stat Report. 2015 Jun 8;(80):1-15. PubMed PMID: 26079623.

8.

Miller EA, Miller DM, Judson DH, He Y, Day HR, Zevallos K, Parker JD, MacKinnon JA, Hernandex
MN, Wohler B, Sherman R, Frernandex CA, McClure LA, LeBlance WG, Tannenbaum SL, Zheng DD,
Lee DJ. Linkage of 1986–2009 National Health Interview Survey with 1981–2010 Florida Cancer Data
System. National Center for Health Statistics. Vital Health Stat 2(167). September 2014.

9.

Berko J, Ingram DD, Saha S, Parker JD. Deaths attributed to heat, cold, and other weather events in the
United States, 2006-2010. Natl Health Stat Report. 2014 Jul;(76):1-16.

10. Day, HR, Parker JD. Diabetes in the NHIS and the CMS Chronic Condition Summary File. National
Health Statistics Report, Number 69, November 2013.
11. Parker J, Branum A, Axelrad D, Cohen J. Adjusting National Health and Nutrition Examination Survey
sample weights for women of childbearing age. National Center for Health Statistics. Vital Health Stat
2(157). 2013.
12. Judson DH, Parker JD, Larsen MD. Adjusting sample weights for linkage-eligibility using SUDAAN.
National Center for Health Statistics, Hyattsville Maryland. May 2013. Available at the following address:
http://www.cdc.gov/nchs/data/datalinkage/adjusting_sample_weights_for_linkage_eligibility_using_sudaa
n.pdf
13. Parker JD, Kravets K, Nachman K, Sapkota A. Linkage of the 1999-2008 National Health and Nutrition
Examination Survey to traffic indicators from the National Highway Planning Network. NCHS National
Health Statistics Report. #45. April 2, 2012
14. Mirel L, Wheatcroft G, Parker JD, Makuc D. Health Characteristics of Medicare traditional fee-for-service
and Medicare Advantage enrollees: 1999-2004 National Health and Nutrition Examination Survey linked
to 2007 Medicare data. NCHS National Health Statistics Report. #53. May 3, 2012
15. Jones L, Parker JD, Mendola P. Lead and Mercury Exposure in Pregnant Women. NCHS Data Brief.
December 2010.
16. Kravets N, Parker JD. Linkage of the Third National Health and Nutrition Examination Survey to air
quality data.Vital Health Stat 2. 2008 Nov;(149):1-24.
17. Parker JD, Kravets N, Woodruff TJ. Linkage of the National Health Interview Survey to Air Monitoring
Data from the U.S. EPA. National Center for Health Statistics. Vital Health Statistics, Series 2, 2008.
18. Ingram DD, Parker JD, Schenker N, Weed JA, Hamilton B, Arias E, Madans JH. United States Census
2000 population with bridged race categories Vital Health Stat 2. 2003 Sep;(135):1-55.
19. Tabulation Working Group. Interagency Committee for the Review of Standards for Data on Race and
Ethnicity. Provisional Guidance on the Implementation of the 1997 Standards for Federal Data on Race and
Ethnicity. Office of Management and Budget. February 2001 (contributed analysis of data from the
National Health Interview Survey).
20. Tabulation Working Group. Interagency Committee for the Review of Standards for Data on Race and
Ethnicity. Draft Provisional Guidance on the Implementation of the 1997 Standards for Federal Data on
Race and Ethnicity. Office of Management and Budget. March 1999. (contributed analysis of data from
the National Health Interview Survey).
21. Schoendorf KC, Parker JD, Batkin L, Kiely JL. Comparability of the Birth Certificate and the 1988
National Maternal and Infant Health Survey. National Center for Health Statistics. Vital Health Statistics,
Series 2 (116), 1993.

Proceedings

Parker, page 9

1.

Rammon J, He Y, Parker J. Enhancing the NHANES CMS Medicaid Linked Data with Multiple
Imputation. Joint Statistical Meetings, Baltimore. August 2017. In JSM Proceedings, Section on Survey
Methods.

2.

Chen TC, Parker J. Alternate Methods for Constructing BRR Weights with National Health and Nutrition
Examination Survey (NHANES) Single-Year Samples. Joint Statistical Meetings, Chicago. August 2016.
In JSM Proceedings, Section on Survey Methods.

3.

Wei R, Parsons V, Parker JD. Studying the Association of Environmental Measures Linked with Health
Data: A Case Study Using the Linked National Health Interview Survey and Modeled Ambient PM2.5
Data. 2015 Joint Statistical Meetings, Seattle Washington, August 2015. In JSM Proceedings, Section on
Survey Methods.

4.

Parsons V, Wei R, Parker JD. Evaluations of Design- and Model-Based Regression Methods in Analyzing
Complex Survey Data: A Simulation Study. 2013 Joint Statistical Meetings, Montreal Canada, August
2013. In JSM Proceedings, Section on Survey Methods.

5.

Mirel L, Parker J. Re-weighting the National Health and Nutrition Examination Survey linked to Medicare
administrative records. 2011 Joint Statistical Meetings, Miami, FL, August 2011. In JSM Proceedings,
Section on Survey Methods.

6.

Miller DM, Gindi RM, Parker JD. Trends in Record Linkage Refusal Rates: Characteristics of National
Health Interview Survey Participants Who Refuse Record Linkage. 2011 Joint Statistical Meetings, Miami,
FL, August 2011. In JSM Proceedings, Section on Government Statistics.

Selected Online Documentation
1.

National Center for Health Statistics. Office of Analysis and Epidemiology, NCHS 2011 Linked Mortality
Files Matching Methodology, September, 2013. Hyattsville, Maryland. Available at the following address:
http://www.cdc.gov/nchs/data_access/data_linkage/mortality/linkage_methods_analytical_support/2011_li
nked_mortality_file_matching_methodology.pdf (senior contributor)

2.

National Center for Health Statistics. Office of Analysis and Epidemiology. Analytic Guidelines for NCHS
2011 Linked Mortality Files, August, 2013. Hyattsville, Maryland. Available at the following address:
http://www.cdc.gov/nchs/data/datalinkage/2011_linked_mortality_analytic_guidelines.pdf (senior
contributor)

3.

Judson DH, Parker JD, Larsen MD. Adjusting sample weights for linkage-eligibility using SUDAAN.
National Center for Health Statistics, Hyattsville Maryland. May 2013. Available at the following address:
http://www.cdc.gov/nchs/data/datalinkage/adjusting_sample_weights_for_linkage_eligibility_using_sudaa
n.pdf

4.

Simon AE, Driscoll AK, Golden C, Tandon R, Duran CR, Miller EA, Schoendorf KC, Parker JD.
Documentation and Analytic Guidelines for NCHS surveys linked to Medicaid Analytic eXtract (MAX)
files. Hyattsville, MD: National Center for Health Statistics. Revised December 2012. (Available at the
following address:
http://www.cdc.gov/nchs/data/datalinkage/documentation_and_analytic_guidelines_nchs_survey_max_link
ed_data.pdf)

Book Chapters
Tucker C, Miller S, Parker J. Comparing census race data under the old and new standards. Chapter 19 in
The New Race Question: How the Census counts multiracial individuals. J. Perlmann and M Waters (eds).
Russell Sage Publications, 2002
Parker JD. Postpartum Weight Change. Clinical Obstetrics and Gynecology 1994; 37:528-37.

Parker, page 10

Presentations (since 2008)
1.

Parker JD. NCHS data systems and health statistics. Guest lecture for the Cornell University course
“INFO7470 Understanding Social and Economic Data” March 2016

2.

Parker JD. Weissman J, Gindi R, Miller DM, Miller EM. The relationship between linkage refusal and
selected health conditions of survey respondents. Presented at the annual meeting of the Joint Statistical
Association, Seattle Washington, August 2015.

3.

Parker JD. Data Presentation Standards at the National Center for Health Statistics. Presented at the NCHS
Conference. Bethesda Maryland August 2015.

4.

Parker JD, Aoki Y, Ingram DD. Does creatinine adjustment method affect estimated BPA levels? Presented at
the NCHS Conference. Bethesda Maryland August 2015.

5.

Parker, JD. Geographic linkages between National Center for Health Statistics’ population health surveys and
air quality measures. Presented at the National Science Foundation-Census Research Network Meeting, New
York, NY. September 11, 2014 (invited)

6.

Berko J, Aoki Y, Ingram DD, Parker JD (presenter). Does creatinine adjustment method affect estimated BPA
levels? Presented at the annual meeting of the International Society for Environmental Health (poster), Seattle,
August 2014.

7.

Parker JD. Data access at NCHS. Invited panel participant for “Best practices for Data Sharing in
Environmental Epidemiology” at the annual meeting of the International Society for Environmental Health,
Seattle, August 2014.

8.

Parker, JD. Confidentiality and data sharing issues using large (nation-wide) databases. Health Effects Institute
(HEI) initiative to assess adverse effects of exposure to low levels of air pollution, Boston June 30, 2014
(invited).

9.

Parker JD. Challenges and Opportunities with NCHS Linked Data Files. NCHS webinar, jointly sponsored by
COPAFS, on March 20 2014.

10. Parker JD. NCHS Linked Data. Presented at the annual meeting of the Society of Behavioral Medicine in a
session organized by colleagues at NCI “How can ‘Big Data’ in the federal government influence the impact
and reach of behavioral medicine?” Philadelphia, April 24, 2014.
11. Parker JD, Driscoll A. Integration of Survey Data, CMS Data, and Contextual Data for Health Policy Research.
Presented at the Academy Health Research Meeting in the NCHS sponsored session NCHS Research Resources
for Studying Geographic Disparities: Location, Location, Location. San Diego, CA June 10, 2014.
12. Parker JD. - Overview of National Center for Health Statistics' Data Collections (invited speaker). The 2013
NCAR/CDC Colloquium on Climate and Health July 9-12, 2013 | NCAR Foothills Laboratory, Boulder,
Colorado.
13. Parker JD. Linked NCHS-Medicaid Data Files. Presented at the Joint Statistical Meetings, Montreal, August
2013
14. Parker JD. Challenges and Opportunities with NCHS Linked Data Files. Presented to the Washington
Statistical Society. June 4, 2013, Washington D.C
15. Parker JD. Linked Data for Research and Policy from the National Center for Health Statistics. Organizer, chair
and panelist at session at the Academy Health Annual Research Meeting, June 2012, Orlando.
16. Parker JD. Data Resources from the National Center for Health Statistics. Presented at the EPA conference
“Promoting Health Communities: Developing and Exploring Linkages between Public Health Indicators,
Exposures, and Hazard Data”, September 26, 2011 (invited).
17. Parker JD. “Linkage of the US National Health Interview Survey to Climate Indicators: A Resource for
Understanding the Impact of Climate Change.” Presented at the annual meeting of the International Society for
Environmental Epidemiology (ISEE), Barcelona, Sept 14-17, 2011 (poster).

Parker, page 11

18. Parker JD. New Data Resources for Research and Policy from the National Center for Health Statistics.
Panelist at session at the Academy Health Annual Research Meeting, June 2011, Seattle.
19. Parker JD. Linked Data Resources at the National Center for Health Statistics. Presented at a Learning Institute
at the annual meeting of the American Public Health Association. October 2011, Washington DC.
20. Parker J, Mirel L Health Characteristics of Medicare traditional fee-for-service and Medicare Advantage
enrollees: 1999-2004 NHANES linked to 2007 Medicare data. Presented at the 9th International Conference on
Health Policy Statistics. October 2011, Cleveland.
21. Parker JD. Linkage of the National Health Interview Survey to Climate Indicators: A Resource for
Understanding Potential Impacts of Climate Change. Presentation at the CDC Science Symposium on Climate
and Health, May 17, 2011
22. Parker JD, Parsons V, Curtin LR. A Simulation to Evaluate the Impact of Design on Model-Based Methods for
National Health and Nutrition Examination Survey (NHANES) Data Linked with Environmental Exposures
(poster). Presented at the annual Joint Statistical Meeting (JSM), August 2, 2010, Vancouver Canada.
(2nd prize in the Survey Methodology Section poster competition)
23. Parker JD, Efim S, Kravets N, Akinbami L, Shennasa E, Sapkota A Disparities in traffic exposure in the United
States (poster). Presented at the annual meeting of the International Society for Environmental Epidemiology
(ISEE), August 26, 2010, Seoul, Korea.
24. Parker JD. Data for Assessing and Addressing Disproportionate Environmental Health Impacts Among
Minority and Disadvantaged Populations. Strengthening Environmental Justice Research and Decision
Making: A Symposium on the Science of Disproportionate Environmental Health Impacts, March 2010,
Washington DC. (invited).
25. Parker JD, Liao D, Schenker N, Branum A. Can covariates help identify birth records with mis-specified
gestational age data in vital statistics? Presented at the annual meeting of the Society for Paediatric and
Perinatal Epidemiology (poster), Chicago, June 2009
26. Parker JD, Kravets N, Nachman K, Woodruff TJ. Air Pollution and Mortality for Black and White Adults in
the United States: Results from the U.S. National Health Interview Survey. Presented at the annual meeting of
the International Society for Environmental Epidemiology (ISEE), Dublin, August 2009
27. Parker JD, Rich D, Leem JH, Glinianaia S, Woodruff TJ. International Collaboration on Air Pollution and
Pregnancy Outcome (ICAPPO): Pilot Study Analytic Plan for Data Re-Analysis. Presented at the annual
meeting of the International Society for Environmental Epidemiology (ISEE), Dublin, August 2009
28. Parker J, Kravets N, Lochner K, Woodruff T. One more step – NHIS linked mortality data linked to EPA air
quality data. Presented at the annual Joint Statistical Meeting (JSM), August 2009, Washington DC.
29. Parker JD. Linkage of data from the National Center for Health Statistics to air pollution exposure measures
from the US EPA. Presented to the HHS Office of Assistant Secretary for Planning and Evaluation (ASPE)
30. Parker J, Mendola P, Woodruff T. Preterm delivery during Utah Valley Steel Mill closure. Poster presented at
the 21st annual meeting of the Society for Pediatric and Perinatal Epidemiologic Research, Chicago, IL, June
2008
31. Parker JD, Curtin LR, Kravets N. Linkage of NHANES to EPA Air Monitoring Data. Presented at the Joint
Statistical Meeting. Denver. August 5, 2008
32. Parker JD. Linkage of the NHIS to EPA Air Monitoring Data. Presented at Division of Health Interview
Statistics Analytic Forum, National Center for Health Statistics. September 17 2008
33. Parker JD. The Correspondence between Interracial Births and Multiple Race Reporting. Presented at the
annual meeting of Academy Health, Washington DC June 2008.

Collaborator presentations (since 2008)
34. Rammon J (presenter), He Y, Parker J. Enhancing the NHANES CMS Medicaid Linked Data with Multiple

Parker, page 12

Imputation. Presented at the annual Joint Statistical Meetings, Baltimore. August 2017.
35. Chen TC (presenter), Parker JD, Fakhouri TH, National Simulation Study for NHANES Weight Adjustment
with Informative Nonresponse (poster). Presented at Joint Statistical Meetings, Baltimore, MD, August 1,
2017.
36. Wei R (presenter), Rumcheva P, Parsons, V, Parker J, Vaidyanathan, A. Bootstrap confidence interval bands for
estimates in measurement error model with linked NHIS and EPA data. Presented at Joint Statistics Meetings
2017. Baltimore, MD. August 2, 2017.
37. Aoki Y (presenter), Parker JD. Effect modifications of blood lead-cardiovascular disease mortality association
by time-related factors studied using NHANES linked mortality files (speed poster) Joint Statistical Meetings,
Baltimore, MD, August 2nd 2017.
38. Chen TC (presenter), Parker J. Alternate Methods for Constructing BRR Weights with National Health and
Nutrition Examination Survey (NHANES) Single-Year Samples. Presented at the annual Joint Statistical
Meetings, Chicago. August 2016.
39. Wei R (presenter), Parsons V, Parker J, Vaidyanathan A, Rumcheva P. An Association Study Including
Measurement Errors Using Linked NHIS and EPA Modeled Data. Presented at the annual Joint Statistical
Meetings, Chicago. August 2016.
40. Aoki Y (presenter), Parker JD. Blood Lead and Other Metal Biomarkers as Risk Factors for Cardiovascular
Disease Mortality. Environmental Economics Seminar at US EPA, Washington, DC. March 10, 2016.
41. Fakhouri T (presenter), Zipf GW, Riddles M, Hughes J, Schaar DM, Krenzke T, Parker JD. Using Paradata to
Determine the Optimal Number of Screening Contact Attempts for the National Health and Nutrition
Examination Surveys at the 71st American Association for Public Opinion Research (AAPOR) annual
conference in Austin, TX. 2016.
42. Sapkota A (presenter), Parker J, Akinbami L, Curriero F, Ganguly S, Ziska L, Murtugudde R, Jiang C.
Alteration in plant phenology and hay fever prevalence among US adults: combined evidence from satellite data
and National Health Interview Survey 2002-2013. Oral Presentation, 28th Conference of the International
Society for Environmental Epidemiology (ISEE). Rome, Italy. September 1-4, 2016.
43. Sapkota A (presenter), Parker J, Akinbami L, Curriero F, Ganguly S, Ziska L, Murtugudde R, Jiang C. Climate
Change and Allergic Diseases: A Disparity in Risk. Climate Action 2016/Forum. Panel on Climate Change
Resilience/Adaptation. College Park, MD. May4th 2016.
44. Sapkota A (presenter), Parker J, Akinbami L, Curriero F, Ziska L, Murtugudde R, Jiang C., Climate Change,
Extreme Temperature Events and Chronic Diseases, Public Health Research at Maryland Day, College Park,
MD, 2015
45. Wei R (presenter), Parsons V, Parker JD. Studying the Association of Environmental Measures Linked with
Health Data: A Case Study Using the Linked National Health Interview Survey and Modeled Ambient PM2.5
Data Presented at the annual Joint Statistical Meeting, Seattle, August 2015
46. Upperman C (presenter), Parker JD, Akinbami L, Jiang C, He X, Murtugudde R, Curriero F, Ziska L, Sapkota
A. The Risk of Exposure to Climate Specific Extreme Heat and Hay Fever Prevalence Among Adults in the
Continental United States: Linkage of the National Health Interview Survey. Oral Presentation. 25th Annual
Meeting of the International Society of Exposure Science (ISES). Henderson, Nevada. October 18-22, 2015
47. Zhang G (presenter), Schenker N, Parker J. A Comparison Study of Weighting Adjustment and Multiple
Imputation for Missingness Due to Nonlinkage: A Study of the National Health Interview Survey Linked to
Medicare Data Files. Presented at the annual Joint Statistical Meeting, Boston, August 2014.
48. He Y (presenter), Miller, EA, Judson D, Parker J. Can We Avoid Problems with Movers? Some Analytical
Issues with National Data Linked with State-Level Data? Presented at the annual Joint Statistical Meeting,
Boston, August 2014.

Parker, page 13

49. Wei R (presenter), Parsons V, Parker J. Data Analysis Using NHIS-EPA--Linked Files: Issues with Using
Incomplete Linkage, Presented at the annual Joint Statistical Meeting, Boston, August 2014.
50. Judson D (presenter), Parker J, Miller EA. Evaluating Record Linkage Quality in the NCHS Linked Mortality
Files. Presented at the annual Joint Statistical Meeting, Boston, August 2014.
51. Romeo C (presenter), Jiang C, Akinbami L, Parker JD, Sapkota A. Exposure to an Aggregate Climate Change
Metric and Respiratory Health Outcomes in the Continental United States. Presented at the annual meeting of
the International Society for Environmental Health, Basel August 2013. (poster)
52. Miller EA (presenter), Decker SL, Parker JD. Chronic Health Conditions Prior to Entry into Medicare Fee-forService or Medicare Advantage. (Poster) Academy Health Annual Research Meeting, Baltimore, MD. June 24,
2013.
53. Miller EA (presenter), Miller DM, Day HR, Judson DH, Fernandez CA, Hernandez M, MacKinnon JA, Lee
DJ, Parker JD. National Health Interview Survey-Florida Cancer Data System Linkage: Analytic
Challenges. North American Association of Central Cancer Registries Annual Conference. Austin, TX. June
13, 2013.
54. Parsons V (presenter), Wei R, Parker JD. Evaluations of Design- and Model-Based Regression Methods in
Analyzing Complex Survey Data: A Simulation Study. Presented at the Joint Statistical Meetings, Montreal,
August 2013
55. Judson D (presenter), Parker JD. Strategies for Enhancing the Linkage of National Center for Health Statistics'
Surveys with Death Indices for Mortality Followup. Presented at the Joint Statistical Meetings, Montreal,
August 2013
56. Zhang G (presenter), Parker JD, Schenker N. Two-Step Imputation of Linked National Health Interview
Survey and Medicare Data Files. Presented at the Joint Statistical Meetings, Montreal, August 2013
57. Wei R (presenter), Parsons VL, Parker JD. Evaluations of Model-based Methods in Analyzing Complex
Survey Data: A Simulation Study using Multistage Complex Sampling on a Finite Population. Presented to the
Eastern North America Region of the International Biometric Society (ENAR), Orlando, March 2013.
58. Maze A (presenter), Zhang G, Parker JD and Schenker N. Identifying factors related to the implausible
gestational ages using mixture models. NCHS Data Users Conference. 2012.
Second place for the student poster competition at the NCHS conference.
59. Mirel L (presenter), Parker J. Re-weighting the National Health and Nutrition Examination Survey linked to
Medicare administrative records. 2011 Joint Statistical Meetings, Miami, FL, August 2011.
60. Miller DM (presenter), Gindi RM, Parker JD. Trends in Record Linkage Refusal Rates: Characteristics of
National Health Interview Survey Participants Who Refuse Record Linkage. 2011 Joint Statistical Meetings,
Miami, FL, August 2011.
61. Mendola P, (presenter) Jones L, Parker JD. Lead and Mercury Exposure in Pregnant Women in the United
States (poster). Presented at the annual meeting of the American College of Epidemiology, San Francisco
September 2010
62. Branum A, (presenter) Keim S, Parker J. Gestational weight gain and child BMI at age 4 among siblings.
Presented at the annual meeting of the Society for Paediatric and Perinatal Epidemiology. Seattle. June 2010.
63. Branum A (presenter), Keim S, Parker J. Gestational weight gain and child BMI at age 4 among siblings.
Presented at the annual meeting of the Society for Epidemiology Research. Seattle. June 2010.
64. Eftim S (presenter), Sapkota A, Parker JD. Methodological Challenges in Linking NHANES Biomarker Data
with Ambient Air Data and Surrogate Measures of Traffic-Related Air Pollution Presented at the annual Joint
Statistical Meeting (JSM), August 4, 2010, Vancouver Canada.
65. Sapkota A (presenter), Eftim S, Nachman K, Kravets N, Shanessa E, Akinbami L, Parker JD. Traffic Exposure
and Asthma Exacerbation among Nationally Representative Sample of the US Population (oral presentation).
Presented at the annual meeting of the International Society for Environmental Epidemiology (ISEE), August
27, 2010, Seoul, Korea.

Parker, page 14

66. Eftim S (presenter), Parker J, Kravets N, Nachman K, Sapkota A. Validation of Traffic Exposure Surrogates
Against Biomarker of Internal Dose Among Non-Smoking US Population (poster). Presented at the annual
meeting of the International Society for Environmental Epidemiology (ISEE), August 27, 2010, Seoul, Korea.
67. Mehta S (presenter), Parker JD, Murtugudde R, Akinbami L, Sapkota A. Climate events and health outcomes:
data linkage from two large national databases (poster). Presented at the annual meeting of the International
Society for Environmental Epidemiology (ISEE), August 28, 2010, Seoul, Korea.
68. Nachman KE (presenter), Parker JD. Fine Particulate Air Pollution and Asthma in Adults. Presented at the
annual meeting of the International Society for Environmental Epidemiology (ISEE), Dublin, August 2009
69. Schempf AP (presenter), Mendola P, Parker JD, Schoendorf KC. Black-White Birth Outcome Disparities: An
Examination of County-Level Variation. Presented at SER and Academy Health, June 2009.
70. Zhang G (presenter), Parker JD, Schenker N, Liao D, Hammad H. Identify Mis-specified Gestational Ages in
Pre-Term Babies with Bayesian Mixture Models , Presented at the annual Joint Statistical Meeting (JSM),
August 2009
71. Mendola P (presenter), Tandon R, Parker JD, Kravets N, MacKay A Delivery hospitalization complicated by
preeclampsia in relation to ambient particulate matter exposure prior to admission in the United States, 19992005. Presented at the annual meeting of the International Society for Environmental Epidemiology (ISEE),
Dublin, August 2009
72. Akinbami L (presenter), Parker J. Allergy status, asthma and body mass index among children. Presented at the
annual meeting of the Society for Paediatric and Perinatal Epidemiology (poster), Chicago, June 2009
73. Akinbami L (presenter), Parker JD. Does allergy status modify the association between body composition and
asthma among adolescents? Poster Presentations at the 21 st Annual Meeting of the Society of Pediatric and
Perinatal Epidemiologic Research, held in Chicago, IL, June 23-24, 2008
74. Branum A (presenter) Parker JD, Schoendorf KC. Sex ratio trends by plurality, gestational age, and
race/ethnicity (poster). Presented at the annual meeting of the Society of Pediatric and Perinatal Epidemiologic
Research, Chicago, 2008
75. Branum A (presenter), Parker JD, Schoendorf KC. Sex ratio trends by plurality, gestational age, and
race/ethnicity (poster). Presented at the annual meeting of the Society of Epidemiologic Research, Chicago,
2008
76. Akinbami LJ (presenter), Parker JD. Does allergy status modify the association between body composition and
asthma status among adolescents? May 3, 2008—Pediatric Academic Societies’ Annual Meeting, Honolulu, HI
June 23, 2008-- Society for Perinatal and Pediatric Epidemiologic Research Annual Meeting, Chicago, IL.
77. Akinbami LJ (presenter), Parker JD, Merkle S. Risk factors for missed school days among children with
symptomatic asthma May 3, 2008—Pediatric Academic Societies’ Annual Meeting, Honolulu, HI

Parker, page 15

Andrew L. Zukerberg
Professional Experience
National Center for Education Statistics, Washington, DC
Branch Chief:
June 2014 - Present
Senior Research Scientist:
November 2008 – June 2014
 Supervise a diverse team that utilizes a budget of over 12 million dollars to collect and report official
statistics on education and policy issues.
 Led redesign of a school based survey system to increase the relevance and timeliness of the data.
 Led redesign of a major household education survey system from an interviewer administered
telephone survey to self-administered questionnaire that utilized an address based sampling (ABS)
approach.
 Advise senior management on status of studies and methodological issues.
 Manage project budgets and schedules.
 Provide technical guidance and oversight for five large and complex data collections.
 Serve as Contracting Officer's Technical Representative (COTR) and oversee data collection
contractors.
 Respond to data requests from media and study users.
Gallup Organization, Washington, DC
January 2008 – November 2008
Research Project Director / Engagement Manager:
 Managed a portfolio of research projects for government clients including the Department of Labor,
U.S. Mint and Health Resources Services Administration.
 Prepared and presented research reports.
 Monitored project budgets and expenditures.
 Conducted an environmental impact assessment of new currency.
 Planned and conducted large scale research evaluations on healthcare and public policy issues.
U.S. Census Bureau, Suitland, MD
December 2002 – January 2008
Branch Chief / Supervisory Survey Statistician:
 Led the development and implementation of several large scale federal surveys involving 100,000
respondents and a budget of over $10 million dollars. The surveys directly inform national policy
decisions.
 Developed and managed multiple complex project schedules and budgets.
 Supervised staff of eight to ensure project goals were achieved.
 Developed and tested computerized survey instruments.
 Prepared and presented research reports to project sponsors.
 Planned and conducted usability tests, focus groups and other qualitative research projects to improve
the quality of Census Bureau studies.
 Implemented a major redesign of the data collection methodology for a national education survey.

Zukerberg, page 1

Zukerberg, Page 2

Lexis-Nexis, Bethesda, MD
July 2002 – December 2002
Market Research Manager:
 Co-led an eight country research project to validate a major product design overhaul.
 Developed an online user research panel.
 Consulted on research design and methodology to various groups within the organization.
 Managed market research vendor accounts.
Microsoft Corporation, Redmond, WA
July 1999 – July 2002
Product Planner:
 Designed, conducted and reported research studies to guide the strategic direction of Microsoft Office.
These studies utilized both quantitative and qualitative techniques including surveys, focus groups,
panels and syndicated research analysis.
 Conducted marketplace reviews to identify new business opportunities.
 Prepared and presented reviews of competitors’ products.
 Identified target customers and developed product features to meet their needs.
 Conducted international research projects to steer the development of future versions of Microsoft
Office.
 Utilized website metrics to enhance an on-line product resulting in greater product usage.
 Coordinated customer and expert advisory panels to assist in the design and implementation of new
products.
 Managed market research vendor accounts and maintained an online panel of over 6,000 customers.
 Developed and taught internal classes on research design and survey methodology.
 Served as a consultant to marketing and usability groups within Microsoft on research design.
Usability Engineer:
 Designed, conducted and analyzed focus groups, laboratory and field studies of Microsoft Project
software that led to direct changes in the product.
 Conducted a multi-faceted study to define the future direction of the Microsoft Project software
utilizing ethnographic and quantitative techniques.
 Assisted in the launch of Project 2000 and played a key role in the planning for future versions of
Microsoft Project.
U.S. Census Bureau, Suitland, MD
October 1994 – May 1999
Survey Statistician (Analyst):
 Conducted usability testing of an Internet self-administered questionnaire.
 Utilized pre-testing techniques including behavior coding, cognitive interviewing and expert review to
improve the quality of Census Bureau questionnaires.
 Provided consultation to internal and external sponsors on survey methodology issues.
 Served as one of an eight-member work group to improve interviewer performance on the Current
Population Survey March Supplement.
 Assisted in the design, execution and analysis of a large-scale test of the Schools and Staffing Survey.
 Analyzed results of a survey conducted at the U.S. Census Bureau’s Annual Research Conference.

Zukerberg, page 2

Zukerberg, Page 3

Mathew Greenwald and Associates, Washington, DC
June 1993 – October 1994
Market Research Assistant:
 Performed background research for the development of market research studies.
 Designed questionnaires for the software, consumer and insurance industries.
 Analyzed questionnaire data and prepared client reports.
 Designed charts and graphs for presentations.
 Coded surveys and conducted telephone interviews for the collection of data.
American Demographics, Ithaca, NY
Spring 1993
Intern:
 Researched and co-authored an article for publication in American Demographics Magazine.
 Assisted the editorial research associate in organizing and maintaining a resource center.

Education
University of Maryland, College Park, MD
Joint Program in Survey Methodology
M.S. Survey Methodology
August 1996
Ithaca College, Ithaca, NY
Bachelor of Arts (awarded Cum Laude)
Major: Sociology Minor: Business
May 1993
Professional Activities
Co-Chair, Federal Committee on Statistical Methodology 2018 Research and Policy Conference
Member, AAPOR task force on Address Based Sampling, 2016
Co-Chair, Federal Committee on Statistical Methodology 2015 Research Conference
Member, AAPOR task force on Survey Refusals, 2014
Member, Conference Planning Committee, Federal Committee on Statistical Methodology 2013 Research
Conference
Member, Standards Committee, American Association for Public Opinion Research, 2010-2016
Membership Chair, D.C. Chapter, American Association for Public Opinion Research, 2009
Ad hoc Reviewer, Public Opinion Quarterly, 2005 & 2007
Member Editorial Board, Survey Practice, 2009 & 2010
Session Chair: American Association for Public Opinion Research Annual Conference 2001, 2002, 2006,
2009, 2010, 2011
Session Discussant: American Association for Public Opinion Research 2007 and 2016 Conferences
Presentations and Publications
Redline, C., Zukerberg, A., Owens, C. and A. Ho (2016). Instructions in Self-administered Survey Questions: Do They Improve
Data Quality or Just Make the Questionnaire Longer? Paper presented at the National Conference of the American Association for
Public Opinion Research, Austin, TX., May 2016.
Redline, C., Zukerberg, A., Rizzo, L., and M. Riddles (2015). Hope Springs Eternal: Will a Probability Sample of Schools and
Principals Respond by Web and Provide Email Addresses? Paper presented at the National Conference of the American Association
for Public Opinion Research, Hollywood, Fl., May 2015.

Zukerberg, page 3

Zukerberg, Page 4
David Dutwin, John D. Loft, Jill E. Darling, Allyson L. Holbrook, Timothy P. Johnson, Ronald E. Langley, Paul J. Lavrakas, Kristen
Olson, Emilia Peytcheva, Jeffery A. Stec, Timothy Triplett, and Andrew Zukerberg. Current Knowledge and Considerations
Regarding Survey Refusals: Executive Summary of the AAPOR Task Force Report on Survey Refusals. Public Opinion Quarterly
2015. Q 79 (2): 411-419
Carroll, S. and A. Zukerberg (2013). Do Names Matter? Experiments Comparing Different Branding and Levels of Personally
Identifiable Information in a Mail Questionnaire. Paper presented at the 2013 Federal Committee on Statistical Methodology
Research Conference, Washington, DC. November 2013.
Zukerberg, A. and S. Mamedova (2012). Speaking the Same Language: Effective Techniques for Reaching Spanish Speaking
Households in a Mail Survey. Paper presented at the National Conference of the American Association for Public Opinion Research,
Orlando, Fl., May 2012.
Bielick, S. and A. Zukerberg (2012). Peek-a-boo: Measuring Rare and Hard to Reach Populations in the National Household
Education Survey of Children. Paper presented at the International Conference on Methods for Surveying and Enumerating Hard-toReach Populations, New Orleans, LA., November 2012.
Zukerberg, Andrew (2011). Measuring Disability in Education Surveys. Paper presented at the Annual Meeting of the American
Public Health Association, Washington, DC., October 2011.
Zukerberg, A. and S. Bielick (2011). Who’s There? Comparing Respondents From a telephone Survey to a Mail Survey. Paper
presented at the National Conference of the American Association for Public Opinion Research, Phoenix, AZ., May 2011.
Zukerberg, A. and C. Chapman (2010) Redesigning the National Household Education Survey: Results from the 2009 Pilot. Poster
presented at the Institute for Education Sciences 2010 Research Conference, Oxon Hill, MD.
Zukerberg, A. and D. Han (2010). Impact of Offering a Bilingual Option in a Mail Survey of Linguistically Isolated Areas. Poster
presented at the National Conference of the American Association for Public Opinion Research, Chicago, IL., May 2010.
Zukerberg, A., Henly, M., and D. Hall (2007). Money Can Buy Me Love: Experiments to Increase Response Rates Using Monetary
Incentives. Paper presented at the 2007 Joint Statistical Meetings, Salt Lake City, UT., July 2007.
White, M., Henly, M., Herron, A. and A. Zukerberg (2007). First Impression: An Advance Contact Experiment to Locate and
Engage Potential Respondents. Paper presented at the 2007 Joint Statistical Meetings, Salt Lake City, UT., July 2007.
Zukerberg, A., Henly, M., and T. Gilbert (2007). Calling All Populations: A Comparison of Cell Phone Response Between
Generation Y and the General Population (2007). Poster presented at the National Conference of the American Association for Public
Opinion Research, Anaheim, CA., May 2007.
Henly, M., Zukerberg, A., and A. Herron (2007). Improving Contact Information for Mobile Populations: An Advance Contact
Experiment. Paper presented at the National Conference of the American Association for Public Opinion Research, Anaheim, CA.,
May 2007.
Zukerberg, Andrew (2007). Implementing an Off the Shelf Internet Data Collection Tool.
Presented at the 2007 International Field Directors and Technologies Conference, Santa Monica, CA., May 2007.
Zukerberg, Andrew (2007). Locating Respondents in the Age of Cell Phones. Presented at the 2007 International Field Directors and
Technologies Conference, Santa Monica, CA., May 2007.
Zukerberg, Andrew (2006). Evaluating Off the Shelf Internet Data Collection Tools. Presented at the 2006 International Field
Directors and Technologies Conference, Montreal, QC., May 2006.
Zukerberg, A., Soderborg, A., Parmer, R., and S. Tourkin (2005). Too Much of a Good Thing? Working Through Establishment
Gatekeepers. Poster presented at the National Conference of the American Association for Public Opinion Research, Miami, FL.,
May 2005. Presentation subsequently published in the conference proceedings.
Tourkin, S., Cox, S., Parmer, R., and A. Zukerberg (2005). (Inter)net Gain: Experiments to Increased Web-based Response. Paper
presented at the National Conference of the American Association for Public Opinion Research, Miami, FL., May 2005. Presentation
subsequently published in the conference proceedings.

Zukerberg, page 4

Zukerberg, Page 5
Pugh, Kathleen and A. Zukerberg (1999). Preparing SASS for the New Millennium: Pretesting Issues in SASS 2000. Paper presented
at the 1999 Joint Statistical Meetings, Baltimore, MD., August 1999.
Zukerberg, A., Tedesco, H. and E. Nicholls (1999). Designing Surveys for the Next Millennium: Internet Questionnaire Design
Issues. Paper presented at the National Conference of the American Association for Public Opinion Research, St. Petersburg, Fl.,
May 1999.
Cohen, B., Zukerberg, A. and K. Pugh (1999). Improving Respondent Selection Procedures in Establishment Surveys; Implications
from the Schools and Staffing Survey (SASS). Paper Presented at the National Conference of the American Association for Public
Opinion Research, St. Petersburg, Fl., May 1999.
Zukerberg, Andrew (1999). Developing and Fielding a Computerized Self-Administered Questionnaire Over the Internet:
Experiences from the 1998 Library Media Center Survey. Presented at the 1999 International Field Directors and Technologies
Conference, Clearwater, FL., May 1999.
Hess, J., Rothgeb, J. and A. Zukerberg (1998). Developing the Survey of Program Dynamics Survey Instruments. Paper presented at
the 1998 Joint Statistical Meetings, Dallas, TX., August 1998.
Zukerberg, A. and M. Lee (1997). Better Formatting for Lower Response Burden. Paper presented at National Conference of the
American Association for Public Opinion Research, Norfolk, VA., May 1997. Presentation subsequently published in the conference
proceedings.
Zukerberg, A. and J. Hess (1996). Uncovering Adolescent Perceptions: Experiences Conducting Cognitive Interviews With
Adolescents. Paper presented at the National Conference of the American Association for Public Opinion Research, Salt Lake City,
UT., May 1996. Presentation subsequently published in the conference proceedings.
Zukerberg, A., Von Thurn, D. and J. Moore (1995). Practical Considerations in Sample Size Selection for Behavior Coding Pretest.
Paper presented at the National Conference of the American Association for Public Opinion Research, Fort Lauderdale, FL., May
1995. Presentation subsequently published in the conference proceedings.
Davis, W., DeMaio, T. and A. Zukerberg (1995). Can Cognitive Information be Collected Through the Mail? Comparing Cognitive
Data Collected in Written Versus Verbal Format. Paper presented at the National Conference of the American Association for Public
Opinion Research. Presentation subsequently published in the conference proceedings.
Crispell, D. and Zukerberg, A. (November, 1993). The Decade Waltz. American Demographics Magazine.

Invited Talks
Joint Program in Survey Methodology 12/5/2013
Washington Statistical Society/ DC-AAPOR Survey Redesign Panel, January 2010
Guest Lecture on Survey Design, George Washington University, February 2010, November 2011
Guest Lecture on Focus Groups, Georgetown University, June 2008
Community Involvement
Friendship Children’s Center
Washington, DC
Secretary, Board of Directors 2012-2013
Vice President, Board of Directors November 2013
President, Board of Directors 2014 and 2015
Member, 2016

Zukerberg, page 5


File Typeapplication/pdf
AuthorRoberts, Alice
File Modified2024-03-11
File Created2019-12-31

© 2024 OMB.report | Privacy Policy