Explaining a machine learning decision to physicians via counterfactuals

Supriya Nagesh, Nina Mishra, Yonatan Naamad, James M. Rehg, M. A. Shah, Alexei Wagner
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引用次数: 1

Abstract

Machine learning models perform well on several healthcare tasks and can help reduce the burden on the healthcare system. However, the lack of explainability is a major roadblock to their adoption in hospitals. \textit{How can the decision of an ML model be explained to a physician?} The explanations considered in this paper are counterfactuals (CFs), hypothetical scenarios that would have resulted in the opposite outcome. Specifically, time-series CFs are investigated, inspired by the way physicians converse and reason out decisions `I would have given the patient a vasopressor if their blood pressure was lower and falling'. Key properties of CFs that are particularly meaningful in clinical settings are outlined: physiological plausibility, relevance to the task and sparse perturbations. Past work on CF generation does not satisfy these properties, specifically plausibility in that realistic time-series CFs are not generated. A variational autoencoder (VAE)-based approach is proposed that captures these desired properties. The method produces CFs that improve on prior approaches quantitatively (more plausible CFs as evaluated by their likelihood w.r.t original data distribution, and 100$\times$ faster at generating CFs) and qualitatively (2$\times$ more plausible and relevant) as evaluated by three physicians.
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通过反事实向医生解释机器学习的决定
机器学习模型在一些医疗保健任务上表现良好,可以帮助减轻医疗保健系统的负担。然而,缺乏可解释性是医院采用它们的主要障碍。\textit{如何向医生解释ML模型的决定?}本文考虑的解释是反事实(CFs),即会导致相反结果的假设情景。具体来说,时间序列CFs的研究受到了医生交谈和推理决定的启发,“如果病人的血压较低且在下降,我就会给他们服用血管加压药”。本文概述了在临床环境中特别有意义的CFs的关键特性:生理上的合理性、与任务的相关性和稀疏的扰动。过去关于CF生成的工作不满足这些性质,特别是不生成真实时间序列CF的合理性。提出了一种基于变分自编码器(VAE)的方法来捕获这些期望的属性。该方法产生的CFs在数量上改进了先前的方法(通过原始数据分布的可能性来评估更可信的CFs,并且在生成CFs方面加快了100 $\times$)和质量上(2 $\times$更可信和相关),由三位医生进行了评估。
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