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Tracking: Success through Partnerships

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Title: Tracking: Success through Partnerships


1
Tracking Success through Partnerships
  • Academic Partners for Excellence in Environmental
    Public Health Tracking

Evelyn Talbott, Dr. P.H. University of
Pittsburgh Dan Wartenberg, Ph.D, University of
Medicine and Dentistry of NJ. Lu Ann White,
Ph.D. Tulane University Jennifer Mann,
Ph.D. John Balmes, MD
University of California at Berkeley

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3
Importance of Collaborations
4
University of Pittsburgh
Transfer of asthma ER Data from a Hospital System
to a Local Health Department
Evelyn O. Talbott, Dr.P.H., M.P.H LuAnn L. Brink,
Ph.D.
5
Asthma Expected Achievements
  • Innovative, cost-effective surveillance strategy
  • Near real-time surveillance
  • Manageable amount of information (50 asthma
    cases/day)
  • Based upon a diagnosis, not free-text
  • Mechanism to collect other information of public
    health importance

6
What Can Be Achieved with Surveillance
  • Asthma Trends over time by zipcode, county, CT (
    i.e. coke oven closes, new technology is put in
    place, etc.) provide a baseline from which to
    follow
  • To become alerted concerning a putative hazard in
    the environment
  • Identify high risk groups for further follow up
    and public health measures

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8
Cooperation
  • Data provided to Allegheny County Health
    Department as part of Public Health Surveillance
  • Data provided by the University of Pittsburgh
    Medical Center to improve Public Health
  • Only de-identified data will be provided to
    investigators

9
  • Via site-to-site VPN,
  • UPMC will send
  • patient name,
  • SSN,
  • race
  • date of visit,
  • time of visit,
  • address,
  • date of birth,
  • gender,
  • type of insurance,
  • Chief complaint
  • ICD9 diagnosis code
  • disposition
  • For all ED visits with a final diagnosis code of
    493.x from Allegheny County hospitals

Matched respiratory data
ACHD will purge all ED data that do not match a
corresponding discharge code of ICD 9 460-520
Irrelevant data
see full talk Wednesday at 400PM
10
iSOVAT
Spatial OLAP Visualization and Analysis Tool
Bambang Parmanto, PhD Ravi Sharma, PhD Evelyn O.
Talbott, Dr.P.H., M.P.H University of
Pittsburgh In collaboration with Cliff
Mitchell, M.D. John Braggio, PhD Maryland State
Dept of Health
11
Interface
12
iSOVAT
  • Provides linkage and integration of data sets
    from various sources, including spatial data (for
    example, industrial or mining locations, rivers
    and lakes), health data (e.g., cancer registry),
    and demographic data (e.g., population, age
    structure, income).
  • iSOVAT is capable of integrating all these
    complex data sets into a multidimensional
    database that can be viewed easily from multiple
    angles and in visual forms (maps and charts).

13
Potential collaborations
  • Collaborations with Maryland DOH to provide stand
    alone package with following capabilities
  • Provide socio-demographic information by state,
    county, Zip code, etc as needed
  • Show age specific and both crude and age adjusted
    rates (95 CI) of outcomes
  • Provide layering of environmental variables and
    health outcomes

14
An Example of Numbers of Inpatient asthma and MI
primary admissions by County
15
Maryland Portal
  • Will link health outcome (asthma and MI) with
    environmental (PM2.5), demographic, and
    socio-economic data.

Inpatient counts due to asthma and MI male and
female by County
16
Inpatient counts due to asthma and MI by race by
County
17
Jennifer Mann, Ph.D.John Balmes, MD University
of California, Berkeleyin collaboration with Tim
Tyner, MS and Fresno Unified School District
School-based asthma surveillance
18
School-based asthma surveillance
  • School-based classroom survey
  • Given to all 7th and 9th graders in Fresno
  • Assesses symptom level among diagnosed
  • can be used to triage level of and need for
    intervention
  • Both prevalence and severity level could be used
    for EPHT
  • Identifies possible asthmatics undiagnosed
    who report severe asthma symptoms

19
School-based asthma surveillance
  • Project also develops models that are low-cost
    and do not violate school privacy law (FERPA)
  • FERPA does not have public health exclusion so
    researchers can not collect or enter data from
    schools
  • Use 12th graders in FUSD who are part of a
    Medical Academy to introduce survey and answer
    questions
  • After data processing by UCB, students do their
    own data analysis for report to FUSD.
  • Mapped 7th grade data at city block level in
    preparation for linkage with modeled pesticide
    use data for EPHT
  • FUSD sent out letter giving everyone right to
    refuse the mapping step to be compliant with
    FERPA

20
School-based asthma surveillance
  • In CT, survey results compared to nurse-based
    surveillance
  • Additional children were identified by the survey
    as asthmatic
  • Currently being tested in Massachusetts by
    tracking partners

21
Tulane Center for Applied Environmental Health
  • CDC Tracking Conference
  • February 25, 2009

22
Health and Air Quality
  • Tulane Missouri partnership
  • Demonstration project examining statistical
    methods for linking hospital discharge data and
    EPA air quality monitoring data in Missouri.
  • Link PM2.5 data with health indices (MI, COPD,
    and Asthma) and develop a predictive model for
    these health indices
  • Data sources
  • Missouri Hospital Discharge data (2001-2005)
  • EPA air monitoring data for PM2.5 and Ozone
    downloaded from AQS Data Mart (2001-2005)

23
Tulane - Missouri
  • Missouri facilitated obtaining the hospital data
  • Missouri IRB and other state approvals
  • Data access and pulling required fields
  • Tulane is conducting the analyses including
  • Developed algorithm to interpolate missing sample
    values
  • Tested methods to assign exposure - distance
    between the health endpoint and air monitor
  • The PM2.5 value was adjusted for distance from
    monitor by dividing observed PM2.5 value/distance
    from monitor.
  • Methods of analysis Time series analysis,
    Poisson regression analysis and Case Crossover
    analysis using conditional logistic regression.

24
Gateway Project
  • Proof of Concept partnership between Florida,
    Missouri, Washington and Tulane
  • EPHT demonstration project to utilize PHIN-MS
    nodes to actually network EPHT sites to each
    other and a "central repository
  • Goals
  • Test the design and mechanics of the EPHTN Node
    Package
  • Test the effectiveness of EPHT metadata template
    search tools

25
Gateway Project
  • Partners gained experience creating, exchanging,
    and searching Tracking-based metadata
  • Created a resource for grantee portal
  • Metadata and Data Repositories for grantee data
    not on the National Portal
  • Metadata search and data retrieval for
    grantee-housed data
  • Created a multi-node PHIN-MS-based network to
    allow bi-directional data sharing between
    multiple partners

26
In collaboration with several states
Washington, Connecticut, Maine, Massachusetts,
New Hampshire, New Jersey, New York
Using Routinely Collected Surveillance Data
Studies of Births and Environmental Exposures
Daniel Wartenberg, PhD. University of Medicine
and Dentistry of New Jersey
27
Overall Strategy
  • Adverse Birth Outcomes/Air Pollution as a Model
    for EPHT
  • Relevance
  • Health People 2010 Births an indication of the
    nations health
  • Use routine surveillance (tracking)
    data/methodology
  • Develop collaboration among multiple institutions
  • Addressing cutting edge issues
  • Role of exposure misclassification in
    interpretation of results
  • Consideration of alternative proxies for exposure
  • Suggest application of approach to other issues
    in environmental epidemiology
  • Studies Underway
  • 1 6-state collaboration
  • 2 In depth assessment of exposure assessment
    issue

28
The Collaborative Project6-State Study of Air
Pollution and Births
  • Goal
  • Demonstrate issues in multistate collaboration (6
    NE states)
  • Address local/regional/cross border concerns
  • Process
  • Request data separately from each state
  • Analyze individually and jointly
  • Assess local and regional patterns and impacts
  • Use of 6 states data Increases sample size
    (power) and relevance
  • Status
  • Analysis of 2 states underway
  • Additional data in request process

29
Air Pollution, Birth Outcomes and Maternal Change
of Residence
  • Goal
  • Assess frequency and consequences of mothers
    change in residence during pregnancy
  • Process
  • Use mobility data recorded on Washington birth
    certificate
  • Compare birth outcomes of stable vs. mobile
    mothers with respect to air pollution exposures,
    adjusted for known risk factors
  • Results
  • Stable mothers show stronger associations
  • May be due to exposure misclassification,
    sociodemographics of movers, stress of moving and
    other factors
  • (see full talk Thursday at 8 AM Track 2a)

30
Future Goals of Academic Partners
  • Overall strategic goal of the academic partners
    as we move forward in implementation
  • Development of more real time Surveillance
    capabilities (secure portals) to create more
    effective environmental public health
    surveillance programs
  • Provide enhanced software and tools to use and
    interpret these data in a meaningful way
  • Carryout sensitivity analysis of secondary data
    sources (eg. Birth certificates )for their use in
    the tracking network.

31
Thank you
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