The goal of this project is to develop improved statistical methods for toxicology studies. Work has proceeded in two areas: (1) the analysis of tumor multiplicity data, and (2) risk assessment and testing in toxicology studies that measure multiple endpoints. In tumorigenicity experiments that utilize animal models of skin and breast cancer, the tumor burden on each animal is evident (palpable) and can be measured at repeated observation times. These types of studies are widely used to explore cancer mechanisms, and to identify carcinogens and compounds with potential chemopreventive attributes. We have developed methods of (1) assessing treatment effects on tumor burden in the absence of data on the individual tumor appearance times; and (2) distinguishing treatment effects on the number of initiated cells and the tumor growth rate. Multiple endpoints are often measured in reproductive and developmental toxicity studies. We have developed methods for assessing overall toxic effects in reproductive experiments when data include both the number of subunits per dam (litter size, number of implants) and multiple binary outcomes on each subunit (low birth weight, malformation). We have also developed a general framework for modeling of multivariate clustered data that enables joint estimation of effects on disparate outcomes such as the number of implantation sites per animal, the proportion of dead fetuses per dam, the proportion of malformed fetuses per dam, and birth weight. Methods are under development that are robust to distributional assumptions.

Agency
National Institute of Health (NIH)
Institute
National Institute of Environmental Health Sciences (NIEHS)
Type
Intramural Research (Z01)
Project #
1Z01ES040009-04
Application #
6534988
Study Section
(BB)
Project Start
Project End
Budget Start
Budget End
Support Year
4
Fiscal Year
2001
Total Cost
Indirect Cost
Name
U.S. National Inst of Environ Hlth Scis
Department
Type
DUNS #
City
State
Country
United States
Zip Code
Wang, Lianming; Dunson, David B (2010) Semiparametric bayes multiple testing: applications to tumor data. Biometrics 66:493-501
Pennell, Michael L; Dunson, David B (2008) Nonparametric bayes testing of changes in a response distribution with an ordinal predictor. Biometrics 64:413-23
Pennell, Michael L; Dunson, David B (2007) Fitting semiparametric random effects models to large data sets. Biostatistics 8:821-34
Pennell, Michael L; Dunson, David B (2006) Bayesian semiparametric dynamic frailty models for multiple event time data. Biometrics 62:1044-52
Hans, Chris; Dunson, David B (2005) Bayesian inferences on umbrella orderings. Biometrics 61:1018-26
Dunson, David B; Herring, Amy H (2005) Bayesian latent variable models for mixed discrete outcomes. Biostatistics 6:11-25
Chen, Zhen; Dunson, David B (2004) Bayesian estimation of survival functions under stochastic precedence. Lifetime Data Anal 10:159-73
Dunson, David B; Chen, Zhen; Harry, Jean (2003) A Bayesian approach for joint modeling of cluster size and subunit-specific outcomes. Biometrics 59:521-30
Dunson, David B; Watson, M; Taylor, Jack A (2003) Bayesian latent variable models for median regression on multiple outcomes. Biometrics 59:296-304
Dunson, David B; Dinse, Gregg E (2002) Bayesian models for multivariate current status data with informative censoring. Biometrics 58:79-88

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