During the next funding period of this grant, we will examine some important questions in regression models for right-censored data. The issues we have chosen extend work conducted during the current project period, and epidemiologic studies in cancer research. More specifically, we will investigate the following topics: 1. A study of properties of methods for fitting nonlinear models for covariate effects in proportional hazards regression. In particular, we will examine the loss of efficiency when overfitting nonlinear models, and the effect on inference of adaptive knot placement of regression splines. 2. Methods for inference in proportional hazards or relative risk regression models when either outcome variables or covariates are either measured with error, or are replaced by surrogate variables that are easier to measure. 3. Methods for parsimonious modeling of the association of survival data and covariates when different covariate values do not produce proportional conditional hazard functions. 4. A study of significance tests that are sensitive to a wide range of relationships between survival data and smooth (i.e. continuous) covariates.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project (R01)
Project #
5R01CA039929-08
Application #
3179302
Study Section
Special Emphasis Panel (SSS (D))
Project Start
1984-09-01
Project End
1993-12-31
Budget Start
1992-01-01
Budget End
1992-12-31
Support Year
8
Fiscal Year
1992
Total Cost
Indirect Cost
Name
Dana-Farber Cancer Institute
Department
Type
DUNS #
149617367
City
Boston
State
MA
Country
United States
Zip Code
02215
Huang, Jie; Harrington, David (2005) Iterative partial least squares with right-censored data analysis: a comparison to other dimension reduction techniques. Biometrics 61:17-24
Peckova, Monika; Fleming, Thomas R (2003) Adaptive test for testing the difference in survival distributions. Lifetime Data Anal 9:223-38
Huang, Jie; Harrington, David (2002) Penalized partial likelihood regression for right-censored data with bootstrap selection of the penalty parameter. Biometrics 58:781-91
Xu, R; Harrington, D P (2001) A semiparametric estimate of treatment effects with censored data. Biometrics 57:875-85
Jones, C L; Harrington, D P (2001) Omnibus tests of the martingale assumption in the analysis of recurrent failure time data. Lifetime Data Anal 7:157-71
Xu, R; Adak, S (2001) Survival analysis with time-varying relative risks: a tree-based approach. Methods Inf Med 40:141-7
Bernardo, M V; Harrington, D P (2001) Sample size calculations for the two-sample problem using the multiplicative intensity model. Stat Med 20:557-79
Patricia Bernardo , M V; Ibrahim, J G (2000) Group sequential designs for cure rate models with early stopping in favour of the null hypothesis. Stat Med 19:3023-35
Lin, D Y; Psaty, B M; Kronmal, R A (1998) Assessing the sensitivity of regression results to unmeasured confounders in observational studies. Biometrics 54:948-63
Gray, R J (1998) On tests for group variation with a small to moderate number of groups. Lifetime Data Anal 4:139-48

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