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Interpretation of SVM Using Data Mining Technique to Extract Syllogistic Rules Exploring the Notion of Explainable AI in Diagnosing CAD

机译:使用数据挖掘技术的SVM解释提取三段论规则,探讨可解释AI在诊断CAD中的概念

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Artificial Intelligence (AI) systems that can provide clear explanations of their behaviors have been suggested in many studies as a critical feature for human users to develop reliance and trust when using such systems. Medical Experts (ME) in particular while using an AI assistant system must understand how the system generates disease diagnoses before making patient care decisions based on the AI's output. In this paper, we report our work in progress and preliminary findings toward the development of a human-centered explainable AI (XAI) specifically for the diagnosis of Coronary Artery Disease (CAD). We applied syllogistic inference rules based on CAD Clinical Practice Guidelines (CPGs) to interpret the data mining results using a Support Vector Machine (i.e., S VM) classification technique-which forms an early model for a knowledge base (KB). The SVM's inference rules are then explained through a voice system to the MEs. Based on our initial findings, we discovered that MEs trusted the system's diagnoses when the XAI described the chain of reasoning behind the diagnosis process in a more interpretable form-suggesting an enhanced level of trust. Using syllogistic rules alone, however, to interpret the classification of the SVM algorithm lacked sufficient contextual information-which required augmentation with more descriptive explanations provided by a medical expert.
机译:在许多研究中,已经提出了可以为自己的行为提供清晰解释的人工智能(AI)系统,这是人类用户在使用此类系统时建立依赖和信任的一项重要功能。特别是在使用AI助手系统时,医学专家(ME)必须在根据AI的输出做出患者护理决策之前,了解系统如何生成疾病诊断。在本文中,我们报告了我们正在进行的工作以及针对以人为中心的可解释性AI(XAI)的开发(特别是用于诊断冠状动脉疾病(CAD))的初步发现。我们应用了基于CAD临床实践指南(CPG)的三段论推理规则,以使用支持向量机(SVM)分类技术来解释数据挖掘结果,该技术形成了知识库(KB)的早期模型。然后,通过语音系统向ME解释SVM的推理规则。基于我们的初步发现,当XAI以更可解释的形式描述了诊断过程背后的推理链时,ME便信任了系统的诊断,这表明增强了信任度。然而,仅使用三段论规则来解释SVM算法的分类缺乏足够的上下文信息,这需要使用医学专家提供的更具描述性的解释进行扩充。

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