RoA: visual analytics support for deconfounded causal inference in observational studies

Dennis Dingen, Marcel Van 't Veer, T. Bakkes, Erik Korsten, Arthur Bouwman, J. van Wijk
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Abstract

The gold standard in medical research to estimate the causal effect of a treatment is the Randomized Controlled Trial (RCT), but in many cases these are not feasible due to ethical, financial or practical issues. Observational studies are an alternative, but can easily lead to doubtful results, because of unbalanced selection bias and confounding. Moreover, RCTs often only apply to a specific subgroup and cannot readily be extrapolated. In response, we present Rod of Asclepius (RoA), a novel visual analytics method that integrates modern techniques designed for identification of causal effects and effect size estimation with subgroup analysis. The result is an interactive display designed to combine exploratory analysis with a robust set of techniques, including causal do-calculus, propensity score weighting, and effect estimation. It enables analysts to conduct observational studies in an exploratory, yet robust way. This is demonstrated by means of a use case involving patients undergoing surgery, for which we collaborated closely with clinical researchers.
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RoA:可视化分析支持观察研究中的非混淆因果推理
在医学研究中,估算治疗效果的黄金标准是随机对照试验(RCT),但在很多情况下,由于伦理、经济或实际问题,随机对照试验并不可行。观察研究是一种替代方法,但由于不平衡的选择偏差和混杂因素,很容易导致可疑的结果。此外,RCT 通常只适用于特定的亚组,不能轻易推断。为此,我们提出了Rod of Asclepius (RoA),这是一种新颖的可视化分析方法,它将用于识别因果效应和效应大小估计的现代技术与亚组分析相结合。它是一种交互式显示,旨在将探索性分析与一套强大的技术(包括因果计算、倾向得分加权和效应估计)结合起来。它使分析人员能够以探索性但稳健的方式开展观察研究。我们与临床研究人员密切合作,通过一个涉及手术患者的使用案例来证明这一点。
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