4.2 Article

Local linear estimation for time-dependent coefficients in Cox's regression models

Journal

SCANDINAVIAN JOURNAL OF STATISTICS
Volume 30, Issue 1, Pages 93-111

Publisher

WILEY
DOI: 10.1111/1467-9469.00320

Keywords

asymptotics; censored data; local constant fitting; local linear fitting; local partial likelihood; proportional hazards model; time-dependent covariate

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This article develops a local partial likelihood technique to estimate the time-dependent coefficients in Cox's regression model. The basic idea is a simple extension of the local linear fitting technique used,in the scatterplot smoothing. The coefficients are estimated locally based on the partial likelihood in a window around each time point. Multiple time-dependent covariates are incorporated in the local partial likelihood procedure. The procedure is useful as a diagnostic tool and can be used in uncovering time-dependencies or departure from the proportional hazards model. The programming involved in the local partial likelihood estimation is relatively simple and it can be modified with few efforts from the existing programs for the proportional hazards model. The asymptotic properties of the resulting estimator are established and compared with those from the local constant fitting. A consistent estimator of the asymptotic variance is also proposed. The approach is illustrated by a real data set from the study of gastric cancer patients and a simulation study is also presented.

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