This research project will focus on the development of statistical techniques for assessing the effects of covariates and potential risk factors that are tested in complex longitudinal studies. The project has three distinct goals: 1. The adjustment of long term survival experiments for random effects such as common genetic or environmental factors which induce a dependency among some members of the population. Parametric and semi-parametric approaches based on the proportional hazards and an accelerated failure time model will be developed. 2. The development of a formalized modeling procedure for complex illness- recovery processes. This will lead to an extension of the causal modeling methods, such as path analysis, to survival analysis. 3. The development of improved techinques for comparing the survival experience of a prospective clinical study in which it is not feasible to randomize patients to conservative treatments or a historical control group. In each of these three areas, a study of both the large and small sample properties will be given and appropriate software will be developed to implement these methods.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project (R01)
Project #
7R01CA054706-03
Application #
2096106
Study Section
Epidemiology and Disease Control Subcommittee 2 (EDC)
Project Start
1991-09-30
Project End
1995-06-30
Budget Start
1993-09-30
Budget End
1995-06-30
Support Year
3
Fiscal Year
1993
Total Cost
Indirect Cost
Name
Medical College of Wisconsin
Department
Biostatistics & Other Math Sci
Type
Schools of Medicine
DUNS #
073134603
City
Milwaukee
State
WI
Country
United States
Zip Code
53226
Logan, Brent R; Mo, Shuyuan (2015) Group sequential tests for long-term survival comparisons. Lifetime Data Anal 21:218-40
Barrett, Jessica K; Henderson, Robin; Rosthøj, Susanne (2014) Doubly Robust Estimation of Optimal Dynamic Treatment Regimes. Stat Biosci 6:244-260
Scheike, Thomas H; Maiers, Martin J; Rocha, Vanderson et al. (2013) Competing risks with missing covariates: effect of haplotypematch on hematopoietic cell transplant patients. Lifetime Data Anal 19:19-32
Logan, Brent R; Zhang, Mei-Jie (2013) The use of group sequential designs with?common competing risks tests. Stat Med 32:899-913
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Martin, Eric F; Huang, Jonathan; Xiang, Qun et al. (2012) Recipient survival and graft survival are not diminished by simultaneous liver-kidney transplantation: an analysis of the united network for organ sharing database. Liver Transpl 18:914-29
Scheike, Thomas H; Sun, Yanqing (2012) On cross-odds ratio for multivariate competing risks data. Biostatistics 13:680-94
Rosthoj, S; Keiding, N; Schmiegelow, K (2012) Estimation of dynamic treatment strategies for maintenance therapy of children with acute lymphoblastic leukaemia: an application of history-adjusted marginal structural models. Stat Med 31:470-88
Scheike, Thomas H; Martinussen, Torben; Zhang, Mei-Jie (2011) The additive risk model for estimation of effect of haplotype match in BMT studies. Scand Stat Theory Appl 38:409-423
Zhang, Xu; Zhang, Mei-Jie; Fine, Jason (2011) A proportional hazards regression model for the subdistribution with right-censored and left-truncated competing risks data. Stat Med 30:1933-51

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