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Statistica Sinica 20 (2010), 1581-1607





SEMIPARAMETRIC ADDITIVE RISKS REGRESSION FOR

TWO-STAGE DESIGN SURVIVAL STUDIES


Gang Li and Tong Tong Wu


University of California, Los Angeles and University of Maryland, College Park


Abstract: In this article we study a semiparametric additive risks model (McKeague and Sasieni (1994)) for two-stage design survival data where accurate information is available only on second stage subjects, a subset of the first stage study. We derive two-stage estimators by combining data from both stages. Large sample inferences are developed. As a by-product, we also obtain asymptotic properties of the single stage estimators of McKeague and Sasieni (1994) when the semiparametric additive risks model is misspecified. The proposed two-stage estimators are shown to be asymptotically more efficient than the second stage estimators. They also demonstrate smaller bias and variance for finite samples. The developed methods are illustrated using small intestine cancer data from the SEER (Surveillance, Epidemiology, and End Results) Program.



Key words and phrases: Censored data, correlation, efficiency, measurement errors, missing covariates.

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