Estimation of the cumulative incidence function under multiple dependent and independent censoring mechanisms |
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Authors: | Judith J. Lok Shu Yang Brian Sharkey Michael D. Hughes |
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Affiliation: | 1.Department of Biostatistics,Harvard School of Public Health,Boston,USA;2.Department of Statistics,North Carolina State University,Raleigh,USA;3.Incyte,Wilmington,USA |
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Abstract: | Competing risks occur in a time-to-event analysis in which a patient can experience one of several types of events. Traditional methods for handling competing risks data presuppose one censoring process, which is assumed to be independent. In a controlled clinical trial, censoring can occur for several reasons: some independent, others dependent. We propose an estimator of the cumulative incidence function in the presence of both independent and dependent censoring mechanisms. We rely on semi-parametric theory to derive an augmented inverse probability of censoring weighted (AIPCW) estimator. We demonstrate the efficiency gained when using the AIPCW estimator compared to a non-augmented estimator via simulations. We then apply our method to evaluate the safety and efficacy of three anti-HIV regimens in a randomized trial conducted by the AIDS Clinical Trial Group, ACTG A5095. |
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