This project will develop new approaches for evaluating cancer clusters using case-only data. To date three major deficiencies of studies of space-time clustering are that they assume the place-of-residence at time of observation (e.g. diagnosis or death) is representative of place-based exposures over the life course;do not routinely assess the sensitivity of the results to geocoding error;and do not assess sensitivity of the results to specification of cancer latency. These limitations are overcome by this project. Case-only data describing place of residence and date of diagnosis/death, gender, race, age, cancer treatment, sources of comorbidity, tumor stage, and contextual variables associated with residential location such as extent urban (e.g. Beale index), and a wealth of other data are commonly available in state cancer registries. These data will be coupled with commercially available residential histories (whose accuracy was validated in Phase I using data) to determine: (1) Whether, where and when statistically significant space-time clusters arise;(2) Whether such clusters are attributable to known covariates, cancer treatments, and contextual variables;(3) How sensitive the results are to geocoding error that may vary across the urban-rural continuum;(4) Those locations, cases, local neighborhoods and dates most sensitive to geocoding error;and (5) estimates of cancer latency most likely to explain observed space-time clustering. This approach is applied to pancreatic cancer in Michigan to determine whether space-time clustering of incident cases may be explained by Hepatitis-B. This novel analytical approach is a significant advance over currently used methods that ignore residential mobility, geocoding error and cancer latency. The major innovation is the creation of methods and software for analyzing cancer case- data to accurately identify space-time cancer clusters while accounting for residential mobility, geocoding error, and specification of cancer latency.

Public Health Relevance

Principal Investigator: Jacquez, Geoffrey M. Case-only Cancer Clustering for Mobile Populations Relevance: The techniques and software from this project will provide a more concise and accurate description of space-time cancer clusters using data readily available in the nation's cancer registries via (1) coupling case-level data with commercially available residential histories in an easy to use, web-based interface;(2) the automated evaluation of the sensitivity of the results to geocoding error for the specific geography, cancer and sub-population being scrutinized by the software user;(3) the automated estimation of the range of cancer latencies most likely to explain observed space-time clusters;and (4) Novel space-time cluster statistics that appropriately account for residential mobility, know risk factors, covariates and cancer latency. To our knowledge the techniques and software from this project will be the first to address all of these factors within a single, comprehensive framework.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Small Business Innovation Research Grants (SBIR) - Phase II (R44)
Project #
2R44CA135818-02
Application #
7744524
Study Section
Special Emphasis Panel (ZRG1-HOP-E (10))
Program Officer
Weber, Patricia A
Project Start
2008-08-01
Project End
2011-06-30
Budget Start
2009-07-01
Budget End
2010-06-30
Support Year
2
Fiscal Year
2009
Total Cost
$433,039
Indirect Cost
Name
Biomedware
Department
Type
DUNS #
947749388
City
Ann Arbor
State
MI
Country
United States
Zip Code
48103
Jacquez, Geoffrey M; Essex, Aleksander; Curtis, Andrew et al. (2017) Geospatial cryptography: enabling researchers to access private, spatially referenced, human subjects data for cancer control and prevention. J Geogr Syst 19:197-220
Jacquez, Geoffrey M; Shi, Chen; Meliker, Jaymie R (2015) Local bladder cancer clusters in southeastern Michigan accounting for risk factors, covariates and residential mobility. PLoS One 10:e0124516
Jacquez, Geoffrey M (2012) A research agenda: does geocoding positional error matter in health GIS studies? Spat Spatiotemporal Epidemiol 3:7-16
Sloan, Chantel D; Jacquez, Geoffrey M; Gallagher, Carolyn M et al. (2012) Performance of cancer cluster Q-statistics for case-control residential histories. Spat Spatiotemporal Epidemiol 3:297-310
Jacquez, Geoffrey M; Slotnick, Melissa J; Meliker, Jaymie R et al. (2011) Accuracy of commercially available residential histories for epidemiologic studies. Am J Epidemiol 173:236-43
Meliker, Jaymie R; Goovaerts, Pierre; Jacquez, Geoffrey M et al. (2010) Incorporating individual-level distributions of exposure error in epidemiologic analyses: an example using arsenic in drinking water and bladder cancer. Ann Epidemiol 20:750-8
Jacquez, Geoffrey M (2010) Geographic boundary analysis in spatial and spatio-temporal epidemiology: perspective and prospects. Spat Spatiotemporal Epidemiol 1:207-18
Jacquez, Geoffrey M (2009) Cluster morphology analysis. Spat Spatiotemporal Epidemiol 1:19-29