An Explainable AI System for the Diagnosis of High-Dimensional Biomedical Data

Alfred Ultsch, J. Hoffmann, M. Röhnert, M. von Bonin, U. Oelschlägel, Cornelia Brendel, Michael C. Thrun
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引用次数: 0

Abstract

Typical state-of-the-art flow cytometry data samples typically consist of measures of 10 to 30 features of more than 100,000 cell “events”. Artificial intelligence (AI) systems are able to diagnose such data with almost the same accuracy as human experts. However, such systems face one central challenge: their decisions have far-reaching consequences for the health and lives of people. Therefore, the decisions of AI systems need to be understandable and justifiable by humans. In this work, we present a novel explainable AI (XAI) method called algorithmic population descriptions (ALPODS), which is able to classify (diagnose) cases based on subpopulations in high-dimensional data. ALPODS is able to explain its decisions in a form that is understandable to human experts. For the identified subpopulations, fuzzy reasoning rules expressed in the typical language of domain experts are generated. A visualization method based on these rules allows human experts to understand the reasoning used by the AI system. A comparison with a selection of state-of-the-art XAI systems shows that ALPODS operates efficiently on known benchmark data and on everyday routine case data.
用于高维生物医学数据诊断的可解释人工智能系统
典型的先进流式细胞仪数据样本通常包括 10 到 30 个特征的测量值,涉及 10 万多个细胞 "事件"。人工智能(AI)系统能够以几乎与人类专家相同的准确度诊断这些数据。然而,这些系统面临着一个核心挑战:它们的决定会对人们的健康和生命产生深远影响。因此,人工智能系统的决策必须能够被人类理解并证明是合理的。在这项工作中,我们提出了一种名为算法种群描述(ALPODS)的新型可解释人工智能(XAI)方法,它能够根据高维数据中的子种群对病例进行分类(诊断)。ALPODS 能够以人类专家可以理解的形式解释其决定。对于识别出的子群,会生成以领域专家的典型语言表达的模糊推理规则。基于这些规则的可视化方法可以让人类专家理解人工智能系统的推理过程。与一些最先进的 XAI 系统的比较表明,ALPODS 在已知基准数据和日常例行案例数据上都能高效运行。
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CiteScore
1.70
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