Bayesian Empirical Likelihood Regression for Semiparametric Estimation of Optimal Dynamic Treatment Regimes

被引:0
作者
Yu, Weichang [1 ]
Bondell, Howard [1 ]
机构
[1] Univ Melbourne, Sch Math & Stat, Parkville, VIC, Australia
关键词
Bayesian semiparametric models; dynamic treatment regimes; empirical likelihood regression; model misspecification; PROFILE REGRESSION; CAUSAL INFERENCE; LEARNING-METHODS;
D O I
10.1002/sim.10251
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
We propose a semiparametric approach to Bayesian modeling of dynamic treatment regimes that is built on a Bayesian likelihood-based regression estimation framework. Methods based on this framework exhibit a probabilistic coherence property that leads to accurate estimation of the optimal dynamic treatment regime. Unlike most Bayesian estimation methods, our proposed method avoids strong distributional assumptions for the intermediate and final outcomes by utilizing empirical likelihoods. Our proposed method allows for either linear, or more flexible forms of mean functions for the stagewise outcomes. A variational Bayes approximation is used for computation to avoid common pitfalls associated with Markov Chain Monte Carlo approaches coupled with empirical likelihood. Through simulations and analysis of the STAR*D sequential randomized trial data, our proposed method demonstrates superior accuracy over Q-learning and parametric Bayesian likelihood-based regression estimation, particularly when the parametric assumptions of regression error distributions may be potentially violated.
引用
收藏
页码:5461 / 5472
页数:12
相关论文
共 32 条
[21]   Optimal dynamic treatment regimes with survival endpoints: introducingDWSurvin theRpackageDTRreg [J].
Simoneau, Gabrielle ;
Moodie, Erica E. M. ;
Wallace, Michael P. ;
Platt, Robert W. .
JOURNAL OF STATISTICAL COMPUTATION AND SIMULATION, 2020, 90 (16) :2991-3008
[22]   FINDING THE OPTIMAL DYNAMIC TREATMENT REGIMES USING SMOOTH FISHER CONSISTENT SURROGATE LOSS [J].
Laha, Nilanjana ;
Sonabend-w, Aaron ;
Mukherjee, Rajarshi ;
Cai, Tianxi .
ANNALS OF STATISTICS, 2024, 52 (02) :679-707
[23]   Model selection for G-estimation of dynamic treatment regimes [J].
Wallace, Michael P. ;
Moodie, Erica E. M. ;
Stephens, David A. .
BIOMETRICS, 2019, 75 (04) :1205-1215
[24]   A SEMIPARAMETRIC MODELING APPROACH USING BAYESIAN ADDITIVE REGRESSION TREES WITH AN APPLICATION TO EVALUATE HETEROGENEOUS TREATMENT EFFECTS [J].
Zeldow, Bret ;
Lo Re, Vincent, III ;
Roy, Jason .
ANNALS OF APPLIED STATISTICS, 2019, 13 (03) :1989-2010
[25]   HIGH-DIMENSIONAL A-LEARNING FOR OPTIMAL DYNAMIC TREATMENT REGIMES [J].
Shi, Chengchun ;
Fan, Ailin ;
Song, Rui ;
Lu, Wenbin .
ANNALS OF STATISTICS, 2018, 46 (03) :925-957
[26]   On estimation and cross-validation of dynamic treatment regimes with competing risks [J].
Morzywolek, Pawel ;
Steen, Johan ;
Van Biesen, Wim ;
Decruyenaere, Johan ;
Vansteelandt, Stijn .
STATISTICS IN MEDICINE, 2022, 41 (26) :5258-5275
[27]   Risk Factor Adjustment in Marginal Structural Model Estimation of Optimal Treatment Regimes [J].
Moodie, Erica E. M. .
BIOMETRICAL JOURNAL, 2009, 51 (05) :774-788
[28]   Q- and A-Learning Methods for Estimating Optimal Dynamic Treatment Regimes [J].
Schulte, Phillip J. ;
Tsiatis, Anastasios A. ;
Laber, Eric B. ;
Davidian, Marie .
STATISTICAL SCIENCE, 2014, 29 (04) :640-661
[29]   Bayesian set of best dynamic treatment regimes: Construction and sample size calculation for SMARTs with binary outcomes [J].
Artman, William J. ;
Johnson, Brent A. ;
Lynch, Kevin G. ;
McKay, James R. ;
Ertefaie, Ashkan .
STATISTICS IN MEDICINE, 2022, 41 (09) :1688-1708
[30]   Optimal two-stage dynamic treatment regimes from a classification perspective with censored survival data [J].
Hager, Rebecca ;
Tsiatis, Anastasios A. ;
Davidian, Marie .
BIOMETRICS, 2018, 74 (04) :1180-1192