Enabling counterfactual survival analysis with balanced representations

Paidamoyo Chapfuwa, Serge Assaad, Shuxi Zeng, M. Pencina, L. Carin, Ricardo Henao
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引用次数: 12

Abstract

Balanced representation learning methods have been applied successfully to counterfactual inference from observational data. However, approaches that account for survival outcomes are relatively limited. Survival data are frequently encountered across diverse medical applications, i.e., drug development, risk profiling, and clinical trials, and such data are also relevant in fields like manufacturing (e.g., for equipment monitoring). When the outcome of interest is a time-to-event, special precautions for handling censored events need to be taken, as ignoring censored outcomes may lead to biased estimates. We propose a theoretically grounded unified framework for counterfactual inference applicable to survival outcomes. Further, we formulate a nonparametric hazard ratio metric for evaluating average and individualized treatment effects. Experimental results on real-world and semi-synthetic datasets, the latter of which we introduce, demonstrate that the proposed approach significantly outperforms competitive alternatives in both survival-outcome prediction and treatment-effect estimation.
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通过平衡的表示实现反事实生存分析
平衡表征学习方法已经成功地应用于从观测数据中进行反事实推理。然而,能够解释生存结果的方法相对有限。生存数据经常在各种医疗应用中遇到,即药物开发、风险分析和临床试验,这些数据也与制造等领域相关(例如,用于设备监测)。当感兴趣的结果是到事件的时间时,需要采取特殊的预防措施来处理经过审查的事件,因为忽略经过审查的结果可能导致有偏差的估计。我们提出了一个适用于生存结果的反事实推理的理论基础统一框架。此外,我们制定了一个非参数风险比度量来评估平均和个性化治疗效果。在真实世界和半合成数据集上的实验结果表明,我们提出的方法在生存结果预测和治疗效果估计方面都明显优于其他竞争方法。
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