This is a proposal to examine new methods for variable selection with censored failure times and data that fit the paradigm of the generalized linear models (GLM). These methods are useful in clinical investigations of chronic diseases. In particular, it is proposed to: 1) Develop and study semi-parametric Bayesian methods of variable selection in Cox's proportional hazards regression models for right censored and exact data. Methods for specifying parametric predictive informative prior distributions for the regression coefficients, a nonparametric prior distribution for the baseline hazard rate, and a discrete prior for the model space will be investigated. Properties of the proposed priors and the implied posterior distributions will also be studied. 2) Develop variable selection methods in Bayesian hierarchical GLM. Specification of prior distributions for the regression coefficients and other model parameters arising in the various stages of the hierarchy will be investigated. The main application of this methodology will be to assess institutional and/or geographic variation in multi-center clinical trials. 3) Investigate and implement Gibbs sampling and related Markov chain Monte Carlo (MCMC) techniques to carry out the above proposed methodologies, and write flexible software that will be made publicly available to the practitioner.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project (R01)
Project #
5R01CA070101-02
Application #
2377002
Study Section
Special Emphasis Panel (ZRG7-STA (01))
Program Officer
Erickson, Burdette (BUD) W
Project Start
1996-03-01
Project End
1999-02-28
Budget Start
1997-03-01
Budget End
1998-02-28
Support Year
2
Fiscal Year
1997
Total Cost
Indirect Cost
Name
Dana-Farber Cancer Institute
Department
Type
DUNS #
149617367
City
Boston
State
MA
Country
United States
Zip Code
02215
Lin, Ja-An; Zhu, Hongtu; Mihye, Ahn et al. (2014) Functional-mixed effects models for candidate genetic mapping in imaging genetic studies. Genet Epidemiol 38:680-91
Zhu, Hongtu; Ibrahim, Joseph G; Cho, Hyunsoon et al. (2012) Bayesian Case Influence Measures for Statistical Models with Missing Data. J Comput Graph Stat 21:253-271
Guo, Ruixin; Zhu, Hongtu; Chow, Sy-Miin et al. (2012) Bayesian lasso for semiparametric structural equation models. Biometrics 68:567-77
Shi, Xiaoyan; Zhu, Hongtu; Ibrahim, Joseph G et al. (2012) Intrinsic Regression Models for Medial Representation of Subcortical Structures. J Am Stat Assoc 107:12-23
Zhu, Hongtu; Ibrahim, Joseph G; Tang, Niansheng (2011) Bayesian influence analysis: a geometric approach. Biometrika 98:307-323
Troxel, Andrea B; Lipsitz, Stuart R; Fitzmaurice, Garrett M et al. (2010) A weighted combination of pseudo-likelihood estimators for longitudinal binary data subject to non-ignorable non-monotone missingness. Stat Med 29:1511-21
Johnson, Brent A; Herring, Amy H; Ibrahim, Joseph G et al. (2007) Structured measurement error in nutritional epidemiology: applications in the Pregnancy, Infection, and Nutrition (PIN) Study. J Am Stat Assoc 102:856-866
Fitzmaurice, Garrett M; Lipsitz, Stuart R; Ibrahim, Joseph G (2007) A note on permutation tests for variance components in multilevel generalized linear mixed models. Biometrics 63:942-6
Fitzmaurice, Garrett M; Lipsitz, Stuart R; Ibrahim, Joseph G et al. (2006) Estimation in regression models for longitudinal binary data with outcome-dependent follow-up. Biostatistics 7:469-85
Parzen, Michael; Lipsitz, Stuart R; Fitzmaurice, Garrett M et al. (2006) Pseudo-likelihood methods for longitudinal binary data with non-ignorable missing responses and covariates. Stat Med 25:2784-96

Showing the most recent 10 out of 39 publications