Volume 36, Issue 23
Research Article

Semiparametric regression on cumulative incidence function with interval‐censored competing risks data

Giorgos Bakoyannis

Corresponding Author

E-mail address: gbakogia@iu.edu

Department of Biostatistics, Fairbanks School of Public Health and School of Medicine, Indiana University, Indianapolis, IN, U.S.A.

Correspondence to: Giorgos Bakoyannis, Department of Biostatistics, Fairbanks School of Public Health and School of Medicine, Indiana University, 410 West 10th Street, Indianapolis, IN 46202, U.S.A.

E‐mail: gbakogia@iu.edu

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Menggang Yu

Department of Biostatistics and Medical Informatics, University of Wisconsin‐Madison, Madison, WI, U.S.A.

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Constantin T. Yiannoutsos

Department of Biostatistics, Fairbanks School of Public Health and School of Medicine, Indiana University, Indianapolis, IN, U.S.A.

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First published: 12 June 2017
Citations: 2

Abstract

Many biomedical and clinical studies with time‐to‐event outcomes involve competing risks data. These data are frequently subject to interval censoring. This means that the failure time is not precisely observed but is only known to lie between two observation times such as clinical visits in a cohort study. Not taking into account the interval censoring may result in biased estimation of the cause‐specific cumulative incidence function, an important quantity in the competing risks framework, used for evaluating interventions in populations, for studying the prognosis of various diseases, and for prediction and implementation science purposes. In this work, we consider the class of semiparametric generalized odds rate transformation models in the context of sieve maximum likelihood estimation based on B‐splines. This large class of models includes both the proportional odds and the proportional subdistribution hazard models (i.e., the Fine–Gray model) as special cases. The estimator for the regression parameter is shown to be consistent, asymptotically normal and semiparametrically efficient. Simulation studies suggest that the method performs well even with small sample sizes. As an illustration, we use the proposed method to analyze data from HIV‐infected individuals obtained from a large cohort study in sub‐Saharan Africa. We also provide the R function ciregic that implements the proposed method and present an illustrative example. Copyright © 2017 John Wiley & Sons, Ltd.

Number of times cited according to CrossRef: 2

  • Semiparametric Competing Risks Regression Under Interval Censoring Using the R Package intccr, Computer Methods and Programs in Biomedicine, 10.1016/j.cmpb.2019.03.002, (2019).
  • Analysis of interval-censored competing risks data under missing causes, Journal of Applied Statistics, 10.1080/02664763.2019.1642309, (1-21), (2019).

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