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Estimation of causal effects of multiple treatments in observational studies with a binary outcome

机译:二元成果对观察研究中多种治疗的因果效应的估算

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摘要

There is a dearth of robust methods to estimate the causal effects of multiple treatments when the outcome is binary. This paper uses two unique sets of simulations to propose and evaluate the use of Bayesian additive regression trees in such settings. First, we compare Bayesian additive regression trees to several approaches that have been proposed for continuous outcomes, including inverse probability of treatment weighting, targeted maximum likelihood estimator, vector matching, and regression adjustment. Results suggest that under conditions of non-linearity and non-additivity of both the treatment assignment and outcome generating mechanisms, Bayesian additive regression trees, targeted maximum likelihood estimator, and inverse probability of treatment weighting using generalized boosted models provide better bias reduction and smaller root mean squared error. Bayesian additive regression trees and targeted maximum likelihood estimator provide more consistent 95% confidence interval coverage and better large-sample convergence property. Second, we supply Bayesian additive regression trees with a strategy to identify a common support region for retaining inferential units and for avoiding extrapolating over areas of the covariate space where common support does not exist. Bayesian additive regression trees retain more inferential units than the generalized propensity score-based strategy, and shows lower bias, compared to targeted maximum likelihood estimator or generalized boosted model, in a variety of scenarios differing by the degree of covariate overlap. A case study examining the effects of three surgical approaches for non-small cell lung cancer demonstrates the methods.
机译:当结果二进制时,有一种鲁棒的方法来估计多种治疗的因果效应。本文采用两组独特的模拟,提出和评估在这种环境中使用贝叶斯添加剂回归树。首先,我们将贝叶斯添加剂回归树进行比较以持续成果所提出的几种方法,包括治疗加权的逆概率,目标最大似然估计器,矢量匹配和回归调整。结果表明,在治疗分配和结果产生机制的非线性和非增量的条件下,贝叶斯添加剂回归树,有针对性的最大似然估计器和使用广义提升模型的治疗加权的逆概率提供更好的偏差减小和较小的根均匀的误差。贝叶斯添加剂回归树木和目标最大似然估计器提供了更一致的95%置信区间覆盖范围和更好的大样本收敛性。其次,我们提供贝叶斯添加剂回归树与策略来识别用于保持推理单元的共同支撑区,并用于避免在不存在共同支持的协变量的区域内推断。贝叶斯添加剂回归树保持比广义倾向得分的策略更加推理单元,并显示与目标最大似然估计或广义增压模型相比的较低的偏置,在各种情况下,通过协变量重叠的程度不同。检查三种手术方法对非小细胞肺癌的疗效表明该方法。

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