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Open AccessJournal ArticleDOI

Semiparametric inference of competing risks data with additive hazards and missing cause of failure under MCAR or MAR assumptions

Laurent Bordes, +2 more
- 01 Jan 2014 - 
- Vol. 8, Iss: 1, pp 41-95
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TLDR
In this article, the authors considered a semiparametric model for lifetime data with competing risks and missing causes of death, and derived estimators of the regression and functional parameters under the missing at random (MAR) mechanism.
Abstract
In this paper, we consider a semiparametric model for lifetime data with competing risks and missing causes of death. We assume that an additive hazards model holds for each cause-specific hazard rate function and that a random right censoring occurs. Our goal is to estimate the regression parameters as well as the functional parameters such as the baseline and cause-specific cumulative hazard rate functions / cumulative incidence functions. We first introduce preliminary estimators of the unknown (Euclidean and functional) parameters when cause of death indicators are missing completely at random (MCAR). These estimators are obtained using the observations with known cause of failure. The advantage of considering the MCAR model is that the information given by the observed lifetimes with unknown failure cause can be used to improve the preliminary estimates in order to attain an asymptotic optimality criterion. This is the main purpose of our work. However, since it is often more realistic to consider a missing at random (MAR) mechanism, we also derive estimators of the regression and functional parameters under the MAR model. We study the large sample properties of our estimators through martingales and empirical process techniques. We also provide a simulation study to compare the behavior of our three types of estimators under the different mechanisms of missingness. It is shown that our improved estimators under MCAR assumption are quite robust if only the MAR assumption holds. Finally, three illustrations on real datasets are also given.

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Citations
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Journal ArticleDOI

Semiparametric regression and risk prediction with competing risks data under missing cause of failure

TL;DR: Simulation studies show that the estimators perform well even in the presence of a large fraction of missing cause of failures, and that the regression coefficient estimator can be substantially more efficient compared to the previously proposed augmented inverse probability weighting estimator.
Journal ArticleDOI

Semiparametric regression and risk prediction with competing risks data under missing cause of failure

TL;DR: In this paper, the authors proposed a unified framework for inference about both the regression coefficients of the proportional cause-specific hazards model and the covariate-specific cumulative incidence functions under missing at random cause of failure.
Book ChapterDOI

On Competing Risks with Masked Failures

TL;DR: In this article, some statistical inference procedures used when the cause of failure is missing or masked for some units are reviewed.
Posted Content

Semiparametric Marginal Regression for Clustered Competing Risks Data with Missing Cause of Failure

TL;DR: In this paper, a maximum partial pseudolikelihood estimator under a missing at random assumption was proposed for population-averaged analysis with clustered competing risks data with informative cluster size and missing causes of failure.
References
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Journal ArticleDOI

Parametric modeling for survival with competing risks and masked failure causes.

TL;DR: It is shown how stage-1 and stage-2 information can be combined to provide statistical inference about survival functions of the individual risks, the proportions of failures associated with individual risks and probability, for a specified masked case, that each of the masked competing risks is responsible for the failure.
Journal ArticleDOI

Modelling competing risks data with missing cause of failure

TL;DR: There is substantial bias in the estimates when fitting the Fine and Gray model with naive techniques for missing data, under missing at random cause of failure, and the MI-based method gave estimates with much smaller biases and coverage probabilities closer to the nominal level.
Journal ArticleDOI

Efficient Estimation from Right-Censored Data When Failure Indicators are Missing at Random

TL;DR: In this paper, a sieved nonparametric maximum likelihood estimator is proposed for the estimation of a bivariate survival function from bivariate right-censored data, which is related to our work.
Journal ArticleDOI

Inference for the dependent competing risks model with masked causes of failure.

TL;DR: An EM-based approach is proposed which allows for dependent competing risks and produces estimators for the sub-distribution functions and discusses identifiability of parameters if none of the masked items have their cause of failure clarified in a second stage analysis (e.g. autopsy).
Journal ArticleDOI

Product-limit Estimators and Cox Regression with Missing Censoring Information

TL;DR: In this article, a method of survival function estimation when the censoring indicators are missing completely at random (MCAR) was developed, and the resulting estimator is a smooth functional of the Nelson-Aalen estimators of certain cumulative transition intensities.
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