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Grant Details

Grant Number: 2R44CA110281-02 Interpret this number
Primary Investigator: Goovaerts, Pierre
Organization: Biomedware
Project Title: Geostatistical Software for the Space-Time Analysis of Health Disparities
Fiscal Year: 2006


Abstract

DESCRIPTION (provided by applicant): This SBIR project is developing the first geostatistical software to offer tools that are specifically designed for the analysis of health disparities, providing: descriptions of spatial patterns of cancer mortality rates and identification of scales of variability, spatial filtering to correct for statistical instability caused by the smaller size of minority populations, statistical tests to detect significant differences in cancer risks among sub-populations, detection of clusters and outliers of significantly high or low health disparities, exploration of local relationships with covariates (i.e. demography, behavioral or socio-economic variables) using geographically-weighted regression and multi-level analysis, and visualization of changes in disparities through time. This project will accomplish 6 aims: 1. Conduct a requirements analysis to identify the spatial methods and functionality to incorporate into the software. 2. Develop innovative geostatistical techniques for spatial filtering of cancer rates and statistical tests to detect significant differences in cancer rates among sub-populations. 3. Develop new methodologies for rate filtering over small geographies, incorporation of spatial interactions among neighborhoods into multi-level analysis, assessment and propagation of the uncertainty attached to filtered rates through the statistical analysis. 4. Build and test a complete set of functionalities based on the research results and simulation studies, and incorporate them into Biomedware's space-time visualization and analysis technology. 5. Apply the software and methods to demonstrate the approach and its unique benefits for the measurement, mapping, detection and explanation of health disparities. 6. Create instructional materials, including a short course, to foster the adoption of this approach in health science. Feasibility of this project was demonstrated in Phase I. This Phase II project will accomplish aims three through six. These technologic, scientific and commercial innovations will revolutionize our ability to interprete geographic variation in cancer disparities, detect changes in space (e.g. cluster or anomalies) or through time (e.g. change in health disparities following strategies to improve cancer prevention and early detection), and to better understand the causes underlying observed racial disparities in cancer incidence, mortality and morbidity.



Publications

Breast and prostate cancer survival in Michigan: can geographic analyses assist in understanding racial disparities?
Authors: Meliker J.R. , Goovaerts P. , Jacquez G.M. , Avruskin G.A. , Copeland G. .
Source: Cancer, 2009-05-15 00:00:00.0; 115(10), p. 2212-21.
PMID: 19365825
Related Citations

How does Poisson kriging compare to the popular BYM model for mapping disease risks?
Authors: Goovaerts P. , Gebreab S. .
Source: International Journal Of Health Geographics, 2008-02-04 00:00:00.0; 7, p. 6.
EPub date: 2008-02-04 00:00:00.0.
PMID: 18248676
Related Citations

A comparative analysis of aspatial statistics for detecting racial disparities in cancer mortality rates.
Authors: Goovaerts P. , Meliker J.R. , Jacquez G.M. .
Source: International Journal Of Health Geographics, 2007-07-24 00:00:00.0; 6, p. 32.
EPub date: 2007-07-24 00:00:00.0.
PMID: 17650305
Related Citations

Geostatistical analysis of disease data: visualization and propagation of spatial uncertainty in cancer mortality risk using Poisson kriging and p-field simulation.
Authors: Goovaerts P. .
Source: International Journal Of Health Geographics, 2006-02-09 00:00:00.0; 5, p. 7.
EPub date: 2006-02-09 00:00:00.0.
PMID: 16469095
Related Citations

Geostatistical analysis of disease data: estimation of cancer mortality risk from empirical frequencies using Poisson kriging.
Authors: Goovaerts P. .
Source: International Journal Of Health Geographics, 2005-12-14 00:00:00.0; 4, p. 31.
EPub date: 2005-12-14 00:00:00.0.
PMID: 16354294
Related Citations



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