Meta-analysis of individualized treatment rules via sign-coherency

Jay Jojo Cheng, J. Huling, Guanhua Chen
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Abstract

Medical treatments tailored to a patient's baseline characteristics hold the potential of improving patient outcomes while reducing negative side effects. Learning individualized treatment rules (ITRs) often requires aggregation of multiple datasets(sites); however, current ITR methodology does not take between-site heterogeneity into account, which can hurt model generalizability when deploying back to each site. To address this problem, we develop a method for individual-level meta-analysis of ITRs, which jointly learns site-specific ITRs while borrowing information about feature sign-coherency via a scientifically-motivated directionality principle. We also develop an adaptive procedure for model tuning, using information criteria tailored to the ITR learning problem. We study the proposed methods through numerical experiments to understand their performance under different levels of between-site heterogeneity and apply the methodology to estimate ITRs in a large multi-center database of electronic health records. This work extends several popular methodologies for estimating ITRs (A-learning, weighted learning) to the multiple-sites setting.
基于符号一致性的个体化治疗规则元分析
根据患者的基线特征量身定制的医学治疗有可能改善患者的预后,同时减少负面副作用。学习个性化治疗规则(itr)通常需要汇总多个数据集(站点);然而,当前的ITR方法没有考虑到站点之间的异质性,这可能会在部署到每个站点时损害模型的泛化性。为了解决这一问题,我们开发了一种个体层面的itr元分析方法,该方法通过科学动机的方向性原则,在借鉴特征符号一致性信息的同时,共同学习特定地点的itr。我们还开发了一个自适应的模型调优过程,使用针对ITR学习问题量身定制的信息标准。我们通过数值实验研究了所提出的方法,以了解它们在不同站点间异质性水平下的性能,并将该方法应用于大型多中心电子健康记录数据库中的itr估计。这项工作将几种流行的估计itr的方法(a -学习,加权学习)扩展到多站点设置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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