CODE - XAI:通过使用真实世界数据的可解释人工智能构建和解读治疗效果

Mingyu Lu, Ian Covert, Nathan J. White, Su-In Lee
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引用次数: 0

摘要

长期以来,在临床决策中,确定哪些特征会影响个体患者的治疗效果一直是一个复杂而关键的问题。来自随机对照试验(RCT)的证据是指导治疗决策的黄金标准。然而,患者的个体差异往往使随机对照试验结果的应用复杂化,导致治疗方案不完善。由于数据维度、类型和研究设计的原因,传统的亚组分析存在不足。为了克服这些局限性,我们提出了 CODE-XAI,这是一个利用可解释人工智能(XAI)解释条件平均治疗效果(CATE)模型的框架,用于进行特征发现。CODE-XAI 提供了个体受试者层面的特征归因,增强了我们对治疗反应的理解。我们使用半合成数据和 RCT 对这些 XAI 方法进行了基准测试,证明了它们在发现特征贡献和实现跨队列分析方面的有效性,从而推动了精准医疗和科学发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CODE - XAI: Construing and Deciphering Treatment Effects via Explainable AI using Real-world Data
Determining which features drive the treatment effect for individual patients has long been a complex and critical question in clinical decision-making. Evidence from randomized controlled trials (RCTs) are the gold standard for guiding treatment decisions. However, individual patient differences often complicate the application of RCT findings, leading to imperfect treatment options. Traditional subgroup analyses fall short due to data dimensionality, type, and study design. To overcome these limitations, we propose CODE-XAI, a framework that interprets Conditional Average Treatment Effect (CATE) models using Explainable AI (XAI) to perform feature discovery. CODE-XAI provides feature attribution at the individual subject level, enhancing our understanding of treatment responses. We benchmark these XAI methods using semi-synthetic data and RCTs, demonstrating their effectiveness in uncovering feature contributions and enabling cross-cohort analysis, advancing precision medicine and scientific discovery.
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