Stratified Cox models with time‐varying effects for national kidney transplant patients: A new blockwise steepest ascent method

Type: Article

Publication Date: 2021-04-19

Citations: 5

DOI: https://doi.org/10.1111/biom.13473

Abstract

Analyzing the national transplant database, which contains about 300,000 kidney transplant patients treated in over 290 transplant centers, may guide the disease management and inform the policy of kidney transplantation. Cox models stratified by centers provide a convenient means to account for the clustered data structure, while studying more than 160 predictors with effects that may vary over time. As fitting a time-varying effect model with such a large sample size may defy any existing software, we propose a blockwise steepest ascent procedure by leveraging the block structure of parameters inherent from the basis expansions for each coefficient function. The algorithm iteratively updates the optimal blockwise search direction, along which the increment of the partial likelihood is maximized. The proposed method can be interpreted from the perspective of the minorization-maximization algorithm and increases the partial likelihood until convergence. We further propose a Wald statistic to test whether the effects are indeed time varying. We evaluate the utility of the proposed method via simulations. Finally, we apply the method to analyze the national kidney transplant data and detect the time-varying nature of the effects of various risk factors.

Locations

  • PubMed Central - View
  • Deep Blue (University of Michigan) - View - PDF
  • PubMed - View
  • Biometrics - View

Similar Works

Action Title Year Authors
+ Minorization-Maximization-based Steepest Ascent for Large-scale Survival Analysis with Time-Varying Effects: Application to the National Kidney Transplant Dataset 2019 Kevin He
Ji Zhu
Jian Kang
Yi Li
+ Modeling Time-Varying Effects With Large-Scale Survival Data: An Efficient Quasi-Newton Approach 2017 Kevin He
Yuan Yang
Yanming Li
Ji Zhu
Yi Li
+ Modeling Time-Varying Effects With Large-Scale Survival Data: An Efficient Quasi-Newton Approach 2019 Kevin He
Yuan Yang
Yanming Li
Ji Zhu
Yi Li
+ Modeling Time-Varying Effects With Large-Scale Survival Data: An Efficient Quasi-Newton Approach 2016 Kevin He
Yuan Yang
Yanming Li
Ji Zhu
Yi Li
+ Modeling Time-varying Effects with Large-scale Survival Data: An Efficient Quasi-Newton Approach 2016 Kevin He
Yuan Yang
Yanming Li
Ji Zhu
Yi Li
+ A global partial likelihood estimator of the time-varying effects for time-dependent treatment 2014 Huazhen Lin
Zhe Fei
Yi Li
+ PDF Chat Debiased lasso for stratified Cox models with application to the national kidney transplant data 2023 Lu Xia
Bin Nan
Yi Li
+ PDF Chat A Semiparametrically Efficient Estimator of the Time‐Varying Effects for Survival Data with Time‐Dependent Treatment 2015 Huazhen Lin
Zhe Fei
Yi Li
+ De-biased lasso for stratified Cox models with application to the national kidney transplant data 2022 Lu Xia
Bin Nan
Yi Li
+ PDF Chat Joint structure selection and estimation in the time-varying coefficient Cox model 2015 Wei Xiao
Wenbin Lu
Hao Helen Zhang
+ High-dimensional partially linear functional Cox models 2024 Xin Chen
Hua Liu
Jiaqi Men
Jinhong You
+ surtvep: An R package for estimating time-varying effects 2024 Lingfeng Luo
Wenbo Wu
Jeremy M. G. Taylor
Jian Kang
Michael Kleinsasser
Kevin He
+ Scalable proximal methods for cause-specific hazard modeling with time-varying coefficients 2022 Wenbo Wu
Jeremy M. G. Taylor
Andrew F. Brouwer
Lingfeng Luo
Jian Kang
Hui Jiang
Kevin He
+ Variable selection for joint models with time-varying coefficients 2019 Yujing Xie
Zangdong He
Wanzhu Tu
Zhangsheng Yu
+ PDF Chat Model Selection for Cox Models with Time‐Varying Coefficients 2012 Jun Yan
Jian Huang
+ Efficient GPU-accelerated fitting of observational health-scaled stratified and time-varying Cox models 2023 Jianxiao Yang
Martijn J. Schuemie
Marc A. Suchard
+ PDF Chat Time‐dependent prognostic score matching for recurrent event analysis to evaluate a treatment assigned during follow‐up 2015 Abigail R. Smith
Douglas E. Schaubel
+ Statistical Methods for Accommodating Immortal Time: A Selective Review and Comparison 2022 Jiping Wang
Peter Peduzzi
Michael Wininger
Shuangge Ma
+ PDF Chat Boosting in Cox regression: a comparison between the likelihood-based and the model-based approaches with focus on the R-packages CoxBoost and mboost 2016 Riccardo De Bin
+ Piecewise exponential models with time‐varying effects: Estimating mortality after listing for solid organ transplant 2020 Andrew Wey
Nicholas Salkowski
Walter K. Kremers
Yoon Son Ahn
Jon J. Snyder