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Interpretability Analysis of Machine Learning Algorithms in the Detection of ST-Elevation Myocardial Infarction

机译:ST升高心肌梗死检测中机器学习算法的解释性分析

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Recent studies suggested that ST-Elevation Myocardial Infarction (STEMI) can be detected in the ECG relying on machine learning (ML) algorithms. However, most of ML algorithms lack of an interpretability analysis, since they do not provide any justification for their decisions. In this study, we trained a Random Forest (RF) on the Physionet PTB database to automatically detect STEMI patients, considering 12-lead average templates as input. Then, we used the Local Interpretable Model-agnostic Explanations (LIME) method to highlight the input parts that mostly contributed to the detection. LIME interpretations were validated with the anatomical position of the myocardial infarction available within the dataset. Experimental results showed that RF achieved a high test set accuracy (ranging from 0.84 to 0.92). However, LIME identified areas within QRS complexes as the most relevant ones for the RF decision, rather than in the ST segment as expected. Our study suggests that, despite the test set accuracy, ML algorithms for STEMI classification, trained on small or unbalanced/biased populations, may rely on features which are not clinically significant. In this regard, interpretability algorithms like LIME may help in understanding possible pitfalls.
机译:最近的研究表明,在依托机器学习(ML)算法的ECG中,可以检测到ST升高心肌梗死(Stemi)。然而,大多数ML算法缺乏可解释性分析,因为他们没有为他们的决定提供任何理由。在这项研究中,我们在物理体PTB数据库上培训了随机森林(RF),以自动检测STEMI患者,考虑到12铅平均模板作为输入。然后,我们使用本地可解释的模型 - 不可知解释(Lime)方法来突出显示主要导致检测的输入部分。利用数据集中可用的心肌梗死的解剖头来验证石灰解释。实验结果表明,射频达到了高测试设施精度(范围为0.84至0.92)。然而,石灰确定了QRS复合物中的区域,作为最相关的RF决定,而不是按预期的总结。我们的研究表明,尽管测试设置精度,用于STEMI分类的ML算法,训练在小或不平衡/偏置的人口上,可能依赖于在临床上显着的特征。在这方面,像石灰这样的可解释性算法可以帮助理解可能的陷阱。

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