Estimation and Optimization of Composite Outcomes.

IF 4.3 3区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS
Journal of Machine Learning Research Pub Date : 2021-01-01
Daniel J Luckett, Eric B Laber, Siyeon Kim, Michael R Kosorok
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Abstract

There is tremendous interest in precision medicine as a means to improve patient outcomes by tailoring treatment to individual characteristics. An individualized treatment rule formalizes precision medicine as a map from patient information to a recommended treatment. A treatment rule is defined to be optimal if it maximizes the mean of a scalar outcome in a population of interest, e.g., symptom reduction. However, clinical and intervention scientists often seek to balance multiple and possibly competing outcomes, e.g., symptom reduction and the risk of an adverse event. One approach to precision medicine in this setting is to elicit a composite outcome which balances all competing outcomes; unfortunately, eliciting a composite outcome directly from patients is difficult without a high-quality instrument, and an expert-derived composite outcome may not account for heterogeneity in patient preferences. We propose a new paradigm for the study of precision medicine using observational data that relies solely on the assumption that clinicians are approximately (i.e., imperfectly) making decisions to maximize individual patient utility. Estimated composite outcomes are subsequently used to construct an estimator of an individualized treatment rule which maximizes the mean of patient-specific composite outcomes. The estimated composite outcomes and estimated optimal individualized treatment rule provide new insights into patient preference heterogeneity, clinician behavior, and the value of precision medicine in a given domain. We derive inference procedures for the proposed estimators under mild conditions and demonstrate their finite sample performance through a suite of simulation experiments and an illustrative application to data from a study of bipolar depression.

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综合结果的估算和优化。
人们对精准医疗产生了浓厚的兴趣,认为这是一种通过根据个体特征量身定制治疗方案来改善患者预后的手段。个体化治疗规则将精准医疗正式定义为从患者信息到推荐治疗的映射。如果治疗规则能使相关人群的标量结果(如症状减轻)的平均值最大化,那么它就被定义为最佳治疗规则。然而,临床和干预科学家往往需要平衡多种可能相互竞争的结果,如症状减轻和不良事件风险。在这种情况下,精准医疗的一种方法是得出一个能平衡所有竞争结果的综合结果;遗憾的是,如果没有高质量的工具,直接从患者那里得出综合结果是很困难的,而且专家得出的综合结果可能无法考虑患者偏好的异质性。我们提出了一种利用观察数据研究精准医疗的新模式,该模式完全依赖于临床医生近似(即不完全)做出决策以最大化患者个人效用这一假设。估算出的综合结果随后被用于构建个体化治疗规则的估算器,该规则能最大化患者特定综合结果的平均值。估算出的综合结果和估算出的最佳个体化治疗规则为了解患者偏好异质性、临床医生行为以及特定领域精准医疗的价值提供了新的视角。我们推导出了温和条件下拟议估计器的推断程序,并通过一系列模拟实验和双相抑郁症研究数据的示例应用证明了它们的有限样本性能。
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来源期刊
Journal of Machine Learning Research
Journal of Machine Learning Research 工程技术-计算机:人工智能
CiteScore
18.80
自引率
0.00%
发文量
2
审稿时长
3 months
期刊介绍: The Journal of Machine Learning Research (JMLR) provides an international forum for the electronic and paper publication of high-quality scholarly articles in all areas of machine learning. All published papers are freely available online. JMLR has a commitment to rigorous yet rapid reviewing. JMLR seeks previously unpublished papers on machine learning that contain: new principled algorithms with sound empirical validation, and with justification of theoretical, psychological, or biological nature; experimental and/or theoretical studies yielding new insight into the design and behavior of learning in intelligent systems; accounts of applications of existing techniques that shed light on the strengths and weaknesses of the methods; formalization of new learning tasks (e.g., in the context of new applications) and of methods for assessing performance on those tasks; development of new analytical frameworks that advance theoretical studies of practical learning methods; computational models of data from natural learning systems at the behavioral or neural level; or extremely well-written surveys of existing work.
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