处理审查和高维的结果自适应倾向评分方法:在保险索赔中的应用。

IF 1.6 3区 医学 Q3 HEALTH CARE SCIENCES & SERVICES
Jiacong Du, Youfei Yu, Min Zhang, Zhenke Wu, Andrew M Ryan, Bhramar Mukherjee
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引用次数: 0

摘要

倾向评分通常用于减少非随机观察性研究中估计平均治疗效果的混杂偏倚。这种方法的一个重要假设是,所有与治疗和结果相关的混杂因素都被测量并包括在倾向评分模型中。在缺乏关于潜在混杂因素的强大先验知识的情况下,研究人员可能不知道地想要调整一组高维的预处理变量。因此,倾向分数估计需要变量选择程序。此外,研究表明,在倾向评分模型中只包括与治疗相关的变量可能会夸大治疗效果估计量的方差,而只包括预测结果的变量可以提高效率。在本文中,我们建议通过将预测的二元结果概率作为协变量纳入倾向评分模型中的结果-协变量关系。我们的方法可以很容易地适应变量选择方法的集合,包括正则化方法和基于分类和回归树的现代机器学习工具。我们评估了我们的方法,以估计跨多个治疗组的二元结果的治疗效果,这可能是审查的。仿真研究表明,结合结果概率来估计倾向得分可以提高统计效率,防止模型错配。所提出的方法应用于从私人保险索赔数据库中确定的晚期前列腺癌患者队列,以比较四种常用药物治疗去势抵抗性前列腺癌的不良反应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Outcome adaptive propensity score methods for handling censoring and high-dimensionality: Application to insurance claims.

Propensity scores are commonly used to reduce the confounding bias in non-randomized observational studies for estimating the average treatment effect. An important assumption underlying this approach is that all confounders that are associated with both the treatment and the outcome of interest are measured and included in the propensity score model. In the absence of strong prior knowledge about potential confounders, researchers may agnostically want to adjust for a high-dimensional set of pre-treatment variables. As such, variable selection procedure is needed for propensity score estimation. In addition, studies show that including variables related to treatment only in the propensity score model may inflate the variance of the treatment effect estimators, while including variables that are predictive of only the outcome can improve efficiency. In this article, we propose to incorporate outcome-covariate relationship in the propensity score model by including the predicted binary outcome probability as a covariate. Our approach can be easily adapted to an ensemble of variable selection methods, including regularization methods and modern machine-learning tools based on classification and regression trees. We evaluate our method to estimate the treatment effects on a binary outcome, which is possibly censored, across multiple treatment groups. Simulation studies indicate that incorporating outcome probability for estimating the propensity scores can improve statistical efficiency and protect against model misspecification. The proposed methods are applied to a cohort of advanced-stage prostate cancer patients identified from a private insurance claims database for comparing the adverse effects of four commonly used drugs for treating castration-resistant prostate cancer.

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来源期刊
Statistical Methods in Medical Research
Statistical Methods in Medical Research 医学-数学与计算生物学
CiteScore
4.10
自引率
4.30%
发文量
127
审稿时长
>12 weeks
期刊介绍: Statistical Methods in Medical Research is a peer reviewed scholarly journal and is the leading vehicle for articles in all the main areas of medical statistics and an essential reference for all medical statisticians. This unique journal is devoted solely to statistics and medicine and aims to keep professionals abreast of the many powerful statistical techniques now available to the medical profession. This journal is a member of the Committee on Publication Ethics (COPE)
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