Volume 34, Issue 9
Research Article

Rank‐based estimating equations with general weight for accelerated failure time models: an induced smoothing approach

S. Chiou

Corresponding Author

Department of Mathematics and Statistics, University of Minnesota Duluth, Duluth, MN, U.S.A.

Correspondence to: S. Chiou, Department of Mathematics and Statistics, University of Minnesota Duluth, Duluth, MN, U.S.A.

E‐mail: schiou@d.umn.edu

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S. Kang

Department of Applied Statistics, Yonsei University, Korea

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J. Yan

Department of Statistics, University of Connecticut, Storrs, CT, U.S.A.

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First published: 14 January 2015
Citations: 9

Abstract

The induced smoothing technique overcomes the difficulties caused by the non‐smoothness in rank‐based estimating functions for accelerated failure time models, but it is only natural when the estimating function has Gehan's weight. For a general weight, the induced smoothing method does not provide smooth estimating functions that can be easily evaluated. We propose an iterative‐induced smoothing procedure for general weights with the estimator from Gehan's weight initial value. The resulting estimators have the same asymptotic properties as those from the non‐smooth estimating equations with the same weight. Their variances are estimated with an efficient resampling approach that avoids solving estimating equations repeatedly. The methodology is generalized to incorporate an additional weight to accommodate missing data and various sampling schemes. In a numerical study, the proposed estimators were obtained much faster without losing accuracy in comparison to those from non‐smooth estimating equations, and the variance estimators provided good approximation of the variation in estimation. The methodology was applied to two real datasets, the first one from an adolescent depression study and the second one from a cancer study with missing covariates by design. The implementation is available in an R package aftgee. Copyright © 2015 John Wiley & Sons, Ltd.

Number of times cited according to CrossRef: 9

  • Censored linear regression in the presence or absence of auxiliary survival information, Biometrics, 10.1111/biom.13193, 76, 3, (734-745), (2019).
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  • Smoothed quantile regression analysis of competing risks, Biometrical Journal, 10.1002/bimj.201700104, 60, 5, (934-946), (2018).
  • Induced smoothing for rank‐based regression with recurrent gap time data, Statistics in Medicine, 10.1002/sim.7564, 37, 7, (1086-1100), (2017).
  • Semiparametric regression analysis for alternating recurrent event data, Statistics in Medicine, 10.1002/sim.7563, 37, 6, (996-1008), (2017).
  • Rank-based inference for the accelerated failure time model in the presence of interval censored data, Numerical Algebra, Control & Optimization, 10.3934/naco.2017007, 7, 1, (107-112), (2017).
  • Fitting semiparametric accelerated failure time models for nested case–control data, Journal of Statistical Computation and Simulation, 10.1080/00949655.2016.1222611, 87, 4, (652-663), (2016).
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  • Accelerated failure time model under general biased sampling scheme: Table 1., Biostatistics, 10.1093/biostatistics/kxw008, 17, 3, (576-588), (2016).

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