论文标题
具有离散结果的个性化治疗规则的可变选择
Variable Selection for Individualized Treatment Rules with Discrete Outcomes
论文作者
论文摘要
个性化治疗规则(ITR)是一项决策规则,旨在通过根据患者的特定信息建议最佳治疗来改善单个患者的健康结果。在观察性研究中,收集的数据可能包含许多与做出治疗决策无关的变量。在ITR的统计模型中包括所有可用变量,可能会导致效率丧失和不必要的复杂治疗规则,这对于医生来说很难解释或实施。因此,以数据驱动的方法选择重要的剪裁变量,以改善估计的决策规则至关重要。虽然越来越多的文献来选择具有连续结果的ITR中的变量,但离散结果的方法相对较少,即使在没有变量选择的情况下,也会构成其他计算挑战。在本文中,我们为具有离散结果的ITR提出了一种变量选择方法。我们从理论和经验上表明我们的方法具有双重鲁棒性属性,并且它与其他竞争方法相比有利。我们从研究基于自适应网络的压力管理工具的研究中说明了有关数据的建议方法,以识别哪些变量与裁缝治疗有关。
An individualized treatment rule (ITR) is a decision rule that aims to improve individual patients health outcomes by recommending optimal treatments according to patients specific information. In observational studies, collected data may contain many variables that are irrelevant for making treatment decisions. Including all available variables in the statistical model for the ITR could yield a loss of efficiency and an unnecessarily complicated treatment rule, which is difficult for physicians to interpret or implement. Thus, a data-driven approach to select important tailoring variables with the aim of improving the estimated decision rules is crucial. While there is a growing body of literature on selecting variables in ITRs with continuous outcomes, relatively few methods exist for discrete outcomes, which pose additional computational challenges even in the absence of variable selection. In this paper, we propose a variable selection method for ITRs with discrete outcomes. We show theoretically and empirically that our approach has the double robustness property, and that it compares favorably with other competing approaches. We illustrate the proposed method on data from a study of an adaptive web-based stress management tool to identify which variables are relevant for tailoring treatment.