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Sieve estimation in a Markov illness-death process under dual censoring.


ABSTRACT: Semiparametric methods are well established for the analysis of a progressive Markov illness-death process observed up to a noninformative right censoring time. However, often the intermediate and terminal events are censored in different ways, leading to a dual censoring scheme. In such settings, unbiased estimation of the cumulative transition intensity functions cannot be achieved without some degree of smoothing. To overcome this problem, we develop a sieve maximum likelihood approach for inference on the hazard ratio. A simulation study shows that the sieve estimator offers improved finite-sample performance over common imputation-based alternatives and is robust to some forms of dependent censoring. The proposed method is illustrated using data from cancer trials.

SUBMITTER: Boruvka A 

PROVIDER: S-EPMC5963425 | biostudies-literature | 2016 Apr

REPOSITORIES: biostudies-literature

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Sieve estimation in a Markov illness-death process under dual censoring.

Boruvka Audrey A   Cook Richard J RJ  

Biostatistics (Oxford, England) 20151122 2


Semiparametric methods are well established for the analysis of a progressive Markov illness-death process observed up to a noninformative right censoring time. However, often the intermediate and terminal events are censored in different ways, leading to a dual censoring scheme. In such settings, unbiased estimation of the cumulative transition intensity functions cannot be achieved without some degree of smoothing. To overcome this problem, we develop a sieve maximum likelihood approach for in  ...[more]

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