
SummaryMany survival studies have error-contaminated covariates due to the lack of a gold standard of measurement. Furthermore, the error distribution can depend on the true covariates but the structure may be difficult to characterize; heteroscedasticity is a common manifestation. We suggest a novel dependent measurement error model with minimal assumptions on the dependence structure, and propose a new functional modeling method for Cox regression when an instrumental variable is available. This proposal accommodates much more general error contamination than existing approaches including nonparametric correction methods of Huang and Wang (2000, Journal of the American Statistical Association95, 1209–1219; 2006, Statistica Sinica16, 861–881). The estimated regression coefficients are consistent and asymptotically normal, and a consistent variance estimate is provided for inference. Simulations demonstrate that the procedure performs well even under substantial error contamination. Illustration with a clinical study is provided.
heteroscedastic error, Acquired Immunodeficiency Syndrome, Clinical Trials as Topic, Reliability and life testing, Models, Statistical, functional modeling, proportional hazards model, survival studies, Survival Analysis, nonparametric correction, Applications of statistics to biology and medical sciences; meta analysis, instrumental variable, CD4 Lymphocyte Count, Humans, Regression Analysis, Computer Simulation, Scientific Experimental Error, Nonparametric regression and quantile regression, multiplicative error, Cox regression, Proportional Hazards Models
heteroscedastic error, Acquired Immunodeficiency Syndrome, Clinical Trials as Topic, Reliability and life testing, Models, Statistical, functional modeling, proportional hazards model, survival studies, Survival Analysis, nonparametric correction, Applications of statistics to biology and medical sciences; meta analysis, instrumental variable, CD4 Lymphocyte Count, Humans, Regression Analysis, Computer Simulation, Scientific Experimental Error, Nonparametric regression and quantile regression, multiplicative error, Cox regression, Proportional Hazards Models
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