The aim of this application is the development and evaluation of improved statistical methods for the design, conduct and analysis of a range of medical and biomedical follow-up studies. There are three projects and one core unit. Project 1 is concerned with statistical methods for disease prevention and risk factor intervention trials. The development and evaluation of flexible and comprehensive methods for the analysis of multivariate failure time data, as arises in trials with multiple disease outcomes and in group randomized trials, is a particular emphasis area. Methods for assessing overall benefits versus risks in prevention trial monitoring and reporting is a new emphasis area, while methods for community intervention trials is a continuing emphasis area. There will also be emphasis on the methods for extracting additional information from prevention trials, including methods for identification and use of surrogate and auxiliary endpoints, for explanatory analyses, and for extending trial results by using related observational data. Project 2 is concerned with statistical methods for epidemiologic studies. There will be an enhanced emphasis on genetic epidemiologic methods, including the development of a multistage design for family studies and of related estimating equation- and frailty-based analysis procedures. There will also be continuing emphases on methods for accomodating covariate measurement errors in cohort and case-control data analysis, and/or methods for the design and analysis of aggregate data studies of disease rates and risk factor survey data, as well as a new emphasis on nonparametric methods for relative risk estimation. Project 3 is concerned with statistical methods for the efficient design and analysis of clinical studies. A particular emphasis will include strategies for multi-arm trials, including factorial designs and ordered alternative designs, and on monitoring issues in the design and analysis of Phase III (comparative) trials. Other emphases will include the development of exploratory methods in survival analysis, multistate and multivariate survival analysis methods, and other topics, such as study of the small sample properties of the logrank test and group sequential strategies for testing biological specimens, that are pertinent to the design or analysis of clinical studies. A small administrative and computing core will serve to coordinate, standardize and facilitate the methodologic work. The proposed developments have the potential to increase the efficiency and reliability, and to decrease the cost of various important types of medical/biomedical studies, and to enhance the use of routinely collected biomedical data.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Program Projects (P01)
Project #
5P01CA053996-22
Application #
2856307
Study Section
Cancer Centers and Research Programs Review Committee (CCRP)
Program Officer
Erickson, Burdette (BUD) W
Project Start
1991-01-15
Project End
2000-12-31
Budget Start
1999-02-11
Budget End
1999-12-31
Support Year
22
Fiscal Year
1999
Total Cost
Indirect Cost
Name
Fred Hutchinson Cancer Research Center
Department
Type
DUNS #
075524595
City
Seattle
State
WA
Country
United States
Zip Code
98109
Liu, Dandan; Cai, Tianxi; Lok, Anna et al. (2018) Nonparametric Maximum Likelihood Estimators of Time-Dependent Accuracy Measures for Survival Outcome Under Two-Stage Sampling Designs. J Am Stat Assoc 113:882-892
Yu, Hsiang; Cheng, Yu-Jen; Wang, Ching-Yun (2018) Methods for multivariate recurrent event data with measurement error and informative censoring. Biometrics 74:966-976
Monaco, John V; Gorfine, Malka; Hsu, Li (2018) General Semiparametric Shared Frailty Model: Estimation and Simulation with frailtySurv. J Stat Softw 86:
Dai, James Y; Wang, Xiaoyu; Buas, Matthew F et al. (2018) Whole-genome sequencing of esophageal adenocarcinoma in Chinese patients reveals distinct mutational signatures and genomic alterations. Commun Biol 1:174
Dai, James Y; Peters, Ulrike; Wang, Xiaoyu et al. (2018) Diagnostics for Pleiotropy in Mendelian Randomization Studies: Global and Individual Tests for Direct Effects. Am J Epidemiol 187:2672-2680
Dai, James Y; Liang, C Jason; LeBlanc, Michael et al. (2018) Case-only approach to identifying markers predicting treatment effects on the relative risk scale. Biometrics 74:753-763
Prentice, Ross L; Zhao, Shanshan (2018) Nonparametric estimation of the multivariate survivor function: the multivariate Kaplan-Meier estimator. Lifetime Data Anal 24:3-27
Howard, Barbara V; Aragaki, Aaron K; Tinker, Lesley F et al. (2018) A Low-Fat Dietary Pattern and Diabetes: A Secondary Analysis From the Women's Health Initiative Dietary Modification Trial. Diabetes Care 41:680-687
Huang, Yijian; Wang, Ching-Yun (2018) Cox regression with dependent error in covariates. Biometrics 74:118-126
Su, Yu-Ru; Di, Chongzhi; Bien, Stephanie et al. (2018) A Mixed-Effects Model for Powerful Association Tests in Integrative Functional Genomics. Am J Hum Genet 102:904-919

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