{"title":"通过合理的多层感知器建立可解释的医疗预测模型","authors":"Thiti Suttaket, Stanley Kok","doi":"10.1145/3671150","DOIUrl":null,"url":null,"abstract":"The healthcare sector has recently experienced an unprecedented surge in digital data accumulation, especially in the form of electronic health records (EHRs). These records constitute a precious resource that Information Systems (IS) researchers could utilize for various clinical applications, such as morbidity prediction and risk stratification. Recently, deep learning has demonstrated state-of-the-art empirical results in terms of predictive performance on EHRs. However, the blackbox nature of deep learning models prevents both clinicians and patients from trusting the models, especially with regards to life-critical decision making. To mitigate this, attention mechanisms are normally employed to improve the transparency of deep learning models. However, these mechanisms can only highlight important inputs without sufficient clarity on how they correlate with each other and still confuse end-users. To address this drawback, we pioneer a novel model called Rational Multi-Layer Perceptrons (RMLP) that is constructed from weighted finite state automata. RMLP is able to provide better interpretability by coherently linking together relevant inputs at different timesteps into distinct sequences. RMLP can be shown to be a generalization of a multi-layer perceptron (that only works on static data) to sequential, dynamic data. With its theoretical roots in rational series, RMLP’s ability to process longitudinal time-series data and extract interpretable patterns sets it apart. Using real-world EHRs, we have substantiated the effectiveness of our RMLP model through empirical comparisons on six clinical tasks, all of which demonstrate its considerable efficacy.","PeriodicalId":45274,"journal":{"name":"ACM Transactions on Management Information Systems","volume":null,"pages":null},"PeriodicalIF":2.5000,"publicationDate":"2024-06-06","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Interpretable Predictive Models for Healthcare via Rational Multi-Layer Perceptrons\",\"authors\":\"Thiti Suttaket, Stanley Kok\",\"doi\":\"10.1145/3671150\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"The healthcare sector has recently experienced an unprecedented surge in digital data accumulation, especially in the form of electronic health records (EHRs). 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引用次数: 0
摘要
最近,医疗保健领域的数字数据积累出现了前所未有的激增,尤其是以电子健康记录(EHR)的形式出现。这些记录是信息系统(IS)研究人员可用于各种临床应用(如发病率预测和风险分层)的宝贵资源。最近,深度学习在 EHR 的预测性能方面取得了最先进的实证结果。然而,深度学习模型的黑箱性质妨碍了临床医生和患者对模型的信任,尤其是在做出生命攸关的决策时。为了缓解这一问题,通常会采用关注机制来提高深度学习模型的透明度。然而,这些机制只能突出重要的输入,而不能充分明确它们之间的相互关系,仍然会让最终用户感到困惑。为了解决这一缺陷,我们开创了一种名为 "理性多层感知器"(RMLP)的新型模型,该模型由加权有限状态自动机构建而成。RMLP 能够将不同时间步的相关输入连贯地连接成不同的序列,从而提供更好的可解释性。可以证明,RMLP 是多层感知器(只适用于静态数据)对连续动态数据的一种概括。RMLP 的理论基础是有理数列,它能够处理纵向时间序列数据并提取可解释的模式,这使其与众不同。我们利用现实世界中的电子病历,通过对六项临床任务的实证比较,证实了 RMLP 模型的有效性,所有这些都证明了它的巨大功效。
Interpretable Predictive Models for Healthcare via Rational Multi-Layer Perceptrons
The healthcare sector has recently experienced an unprecedented surge in digital data accumulation, especially in the form of electronic health records (EHRs). These records constitute a precious resource that Information Systems (IS) researchers could utilize for various clinical applications, such as morbidity prediction and risk stratification. Recently, deep learning has demonstrated state-of-the-art empirical results in terms of predictive performance on EHRs. However, the blackbox nature of deep learning models prevents both clinicians and patients from trusting the models, especially with regards to life-critical decision making. To mitigate this, attention mechanisms are normally employed to improve the transparency of deep learning models. However, these mechanisms can only highlight important inputs without sufficient clarity on how they correlate with each other and still confuse end-users. To address this drawback, we pioneer a novel model called Rational Multi-Layer Perceptrons (RMLP) that is constructed from weighted finite state automata. RMLP is able to provide better interpretability by coherently linking together relevant inputs at different timesteps into distinct sequences. RMLP can be shown to be a generalization of a multi-layer perceptron (that only works on static data) to sequential, dynamic data. With its theoretical roots in rational series, RMLP’s ability to process longitudinal time-series data and extract interpretable patterns sets it apart. Using real-world EHRs, we have substantiated the effectiveness of our RMLP model through empirical comparisons on six clinical tasks, all of which demonstrate its considerable efficacy.