Epidemiology plays a major role in the identification of carcinogenic agents and in the quantification of dose time response relationships upon which regulation and preventive strategies are based. epidemiology as a science depends critically upon statistics. The goal of this project is the development of more efficient statistical designs and methods of analysis for both analytic and descriptive studies. There are three areas of emphasis. First, many studies involve the estimation of a large number of related quantities: multiple relative risks in case-control studies involving multiple diseases and multiple risk groups; multiple cancer rates in small areas used for construction of maps; and multiple individual responses to intervention in longitudinal studies. A major goal is the development, evaluation and implementation of hierarchical statistical models that allow for the efficient estimation of such related quantities. Second, two-phase case-control studies and other complex stratified designs are of great value in limiting the collection of costly covariate data to those subjects who are most informative regarding disease/risk factor associations. An important example is the validation substudy conducted to alleviate the effects of measurement error. Optimal methods for design and analysis of data from such complex designs will be developed. Finally, epidemiologists have proposed new study designs that involve comparison of the exposures of diseased cases with those of internal or artificial controls. Examples are the haplotype relative risk method in genetic epidemiology, the case-specular design for study of electromagnetic fields of cancer, and the case-crossover and case-time-control designs for studies of the effects of intermittent exposures on event rates. Unfortunately, misleading inferences occur when these methods are used in situations that do not meet the underlying assumptions. A critical evaluation is planned of the logical foundations of such case """"""""pseudo-control"""""""" designs, with a goal of maximizing the validity and efficiency of inferences based upon them. The methods used to achieve these goals include mathematical and statistical analysis, computer simulation and application to important datasets collected by cancer epidemiologists and other public health scientists.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project (R01)
Project #
2R01CA040644-13
Application #
2487709
Study Section
Special Emphasis Panel (ZRG7-STA (01))
Program Officer
Erickson, Burdette (BUD) W
Project Start
1985-09-01
Project End
2000-11-30
Budget Start
1997-12-15
Budget End
1998-11-30
Support Year
13
Fiscal Year
1998
Total Cost
Indirect Cost
Name
University of Washington
Department
Biostatistics & Other Math Sci
Type
Schools of Public Health
DUNS #
135646524
City
Seattle
State
WA
Country
United States
Zip Code
98195
Breslow, Norman E; Hu, Jie; Wellner, Jon A (2015) Z-estimation and stratified samples: application to survival models. Lifetime Data Anal 21:493-516
Breslow, Norman E; Amorim, Gustavo; Pettinger, Mary B et al. (2013) Using the Whole Cohort in the Analysis of Case-Control Data: Application to the Women's Health Initiative. Stat Biosci 5:
Breslow, Norman E; Lumley, Thomas; Ballantyne, Christie M et al. (2009) Using the whole cohort in the analysis of case-cohort data. Am J Epidemiol 169:1398-405
Breslow, Norman E; Lumley, Thomas; Ballantyne, Christie M et al. (2009) Improved Horvitz-Thompson Estimation of Model Parameters from Two-phase Stratified Samples: Applications in Epidemiology. Stat Biosci 1:32
Nelson, Kerrie P; Leroux, Brian G (2006) Statistical models for autocorrelated count data. Stat Med 25:1413-30
Breslow, Norman E (2003) Are statistical contributions to medicine undervalued? Biometrics 59:1-8
Platt, R W (2000) Saddlepoint approximations for small sample logistic regression problems. Stat Med 19:323-34
Leroux, B G (2000) Modelling spatial disease rates using maximum likelihood. Stat Med 19:2321-32
Platt, R W; Leroux, B G; Breslow, N (1999) Generalized linear mixed models for meta-analysis. Stat Med 18:643-54
McKnight, B; Tierney, C; McGorray, S P et al. (1998) Likelihood-based inference for the genetic relative risk based on affected-sibling-pair marker data. Biometrics 54:426-43

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