Title: Tracking Pilot Project - 1
1Rapid Assessment and Characterization of
Environmental Risks (RACER)
- Academic Partners for Excellence in
Environmental Public Health Tracking (APEX) - Webinar
- April 25, 2008
2Investigators
- Gary M. Marsh, Ph.D.
- Professor of Biostatistics
- Director, Center for Occupational
- Biostatistics and Epidemiology
- Michael Cunningham, M.S.
- Research Specialist IV
-
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3 Premise
- Two primary objectives of the EPHTN
- to identify populations at risk and respond to
outbreaks, clusters, and emerging threats - to establish the relationship between
environmental risks and disease - From Americas Environmental Health Gap Why
the Country Needs a - Nationwide Health Tracking Network,
Pew Environmental Health - Commission and Johns Hopkins
University Dept. of Health Policy and - Management, September 2000.
4 Rationale
- Relatively little research has focused on extent
to which inherent limitations of environmental
investigations impact on our ability to identify
and characterize environmental risks - Few software tools available that focus on
epidemiological / statistical aspects of
environmental investigations
5Goals
- Goal 1 - to help fill the research gap by
evaluating the sensitivity of some commonly used
statistical methods for identifying and
characterizing risks - Goal 2 - To provide a web-based software tool
that will enable public health officials and
others to evaluate feasibility of conducting
health tracking activities or targeted
investigations - Rapid Assessment and Characterization of
- Environmental Risks (RACER)
6Commonly Encountered Environmental Exposure
Scenarios
- Scenario 1
- Source of environmental exposure is identified
- Proportion of population exposed and
exposure-level health risks are known or
estimable - Scenario 2
- Suspected source of environmental exposure
- A number of health outcomes are observed in a
population over time - Scenario 3
- Suspected source of environmental exposure
- Exposure level-specific populations and
associated risks are neither known nor estimable
7 Components of Rudimentary Empirical Model
- A community population of specified size resides
around point source of environmental exposure - Specify background rate of any disease of
interest - Specify exposure-response relationship for
environmental risk - Divide population into subpopulations by distance
from exposure source and specify proportion of
subpopulations exposed
8 Components of Rudimentary Empirical Model
(contd)
- Use relative measure of effect to compare
observed events in exposed subpopulations to
number expected had background rates prevailed - User can specify representative range of values
for basic determinants of statistical
characteristics - Use empirical models to examine sensitivity of
measures such as statistical power and MDRR for
set of realistic environmental exposure scenarios -
9Reference and Potentially Exposed Subpopulations
Exposure Point Source at Center
10Airborne Exposure to Point Source with Proportion
of Subpopulations Exposed Downwind of Source
11Groundwater Exposure to Point Source with
Proportion of Subpopulations Exposed Downstream
of Source
12Scenario 1 Known Information
- Reference population
- Background rates used to calculate the expected
cases - Potentially exposed population
- Population size with given age distribution
- Proportion exposed in each sub-region
- Environmental exposure
- Exposure level-specific relative risks
13Scenario 1 Estimated by RACER
- Statistical power to observe a specified, true
elevation in the background rate over given range
of observation times - Minimum time required to achieve a given power
assuming constant exposure risk and population
over time
14Scenario 1 Hypothetical Example
- Residents of Town A have been exposed to ionizing
radiation - Assume a 75 increased incidence in thyroid
cancer at the levels of radiation that were
measured in the community - The exposure boundary encompasses the entire
community and the radiation levels are constant
throughout the exposed region - The size of the population living within the
exposed area is known - Assume all residents are exposed
15Scenario 1 Hypothetical Example
16Scenario 1 Hypothetical Example
- Question
- If the residents of Town A have been exposed to
these levels of ionizing radiation, how can this
exposure be characterized in terms of the ability
to detect a true 1.75-fold increase in thyroid
cancer incidence?
17Scenario 1 Known Information
- Population distribution of Town A in 2007, by age
group (only interested in the five listed age
groups)
Age Group Potentially Exposed Population
21-34 1110
35-49 1445
50-59 2374
60-69 2219
70 852
Total 8000
18Scenario 1 Known Information
- 100 of the town residents live in the potential
exposure region - 100 of those living in the potential exposure
region are assumed to be exposed - Exposure to the ionizing radiation at the
observed levels is known to inflate the baseline
thyroid cancer incidence by a factor of 1.75
19Scenario 1 Reference Rates
- Baseline (background) thyroid cancer incidence
rates in general population (SEER)
Age Group Baseline incidence rate (per 100,000)
21-34 5.6
35-49 5.6
50-59 6.8
60-69 7.5
70 8.4
20Scenario 1 Additional Assumptions
- Increased exposure risk is constant across age
groups and through time - No latency
- No adjustment for in- or out-migration or
mortality
21Scenario 1 RACER on the Web
22Scenario 1 Start Menu
23Scenario 1 Input Screen 1
24Scenario 1 Input Screen 2
25Scenario 1 Input Screen 3
26Scenario 1 Input Screen 4
27Scenario 1 RACER Calculates Expected Cases
28Scenario 1 Input Screen 6
29Scenario 1 Summary Options
30Scenario 1 Output Option 1
31Scenario 1 Output Option 2 Table
32Scenario 1 Output Option 2 Plot
33Scenario 1 Output Option 3 Table
34Scenario 1 Output Option 3 Plot
35Scenario 1 Hypothetical ExampleKey Results
- After the first year of exposure, there is only
7 power to detect a true excess risk of 1.75 in
this population. - After 10 years, the inflation of the background
risk due to the exposure should result in enough
cases to achieve 50 power. - The power to observe a true exposure elevated
risk of 1.75 reaches 80 after 30 years.
36Scenario 2 Known Information
- Scenario 2
- Suspected source of environmental exposure
- A number of health outcomes are observed in a
population over time - Reference population
- Background rate used to calculate the expected
cases in exposed population - Exposed population
- Observed cases (health outcome of interest)
- Population size with given age distribution
37Scenario 2 Estimated by RACER
- The ratio of observed cases to expected had
background rates prevailed on exposed population
(SMR, SIR, etc.) - The number of additional cases and observation
time required to achieve desired power
38Scenario 3 Known Information
- Scenario 3
- Suspected source of environmental exposure
- Exposure level-specific populations and
associated risks are neither known nor estimable - Exposure elevated risks or observed number of
cases (health outcomes) in the population of
interest are unknown - Elevated risk due to environmental exposure is
suspected
39Scenario 3 Estimated by RACER
- Given a fixed proportion of individuals exposed
in a region, plot relationship of power and the
observed/expected ratio over time for a range of
exposure elevated relative risks - Given a fixed exposure elevated relative risk,
plot relationship of power and the percentage of
exposed individuals over time
40- Scenario 3 Hypothetical Example
- Showing 2-D Contour Plots
- Percent of Population Exposed is Fixed,
- Observation Time and Exposure-Elevated
- Relative Risks (RRee) Vary
41Scenario 3 Hypothetical Example
Observed/Expected Power at Fixed Exposed
42- Scenario 3 Hypothetical Example
- Showing 3-D Contour Plots
- Exposure-Elevated Relative Risk (RRee) is Fixed,
- Percent of Population Exposed and
- Observation Time Vary
43Power as a Function of Exposed (ew) and Time
(years)Comparison of 4 Plots
RRee 1.2
RRee 1.4
RRee 1.6
RRee 1.8
44 Possible Future RACER Enhancements
- Account for geographic population mobility
- Extend standardization to other factors (e.g.,
race, sex) - Time dependent exposure-elevated relative risks
- Account for latency/incubation period of health
endpoints - Case-crossover power and sample size module
45 Acknowledgements
The investigators wish to thank the following
groups for their support and guidance Centers
for Disease Control and Prevention Environmental
Public Health Tracking Program Grant
5U19EH000103-02 (Academic Partners for
Excellence in Environmental Public Health
Tracking) University of Pittsburgh Academic
Consortium for Excellence in Environmental Public
Health Tracking (UPACE-EPHT) (a
collaboration with Drexel University)
46 Questions?