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Machine learning improves the accuracy of coronary artery disease diagnostic methods

机译:机器学习提高了冠状动脉疾病诊断方法的准确性

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The diagnostic process of coronary artery disease (CAD) consists of evaluation of symptoms and signs of the disease and ECG at rest, ECG during exercise, myocardial perfusion scintigraphy (MPS) and coronary angiography. Machine Learning (ML) can use all particular data in interpretation of result. The authors' goal was to predict in a group of 327 patients the results of coronary angiography obtained by ML method and compare them with the results of MPS as the highest step in the classical diagnostic procedure. The Naive Bayesian Classifier as one of the ML methods was applied. The sensitivity of MPS was 0.83 and specificity 0.85. The post-test probability for CAD was 0.75 for positive results and 0.43 for negative ones. With application of ML the authors achieved sensitivity 0.89, specificity 0.88 and the post-test probability 0.90 for positive and 0.25 for negative results.
机译:冠状动脉疾病(CAD)的诊断过程包括评估疾病的症状和体征,休息时的ECG,运动中的ECG,心肌灌注显像(MPS)和冠状动脉造影。机器学习(ML)可以使用所有特定数据来解释结果。作者的目的是在327例患者中预测通过ML方法获得的冠状动脉造影结果,并将其与MPS的结果进行比较,以作为经典诊断程序中的最高步骤。应用朴素贝叶斯分类器作为ML方法之一。 MPS的敏感性为0.83,特异性为0.85。阳性结果的CAD后测试概率为0.75,阴性结果为0.43。应用ML后,作者对阳性结果的灵敏度为0.89,对特异性为0.88,测试后概率为0.90,阴性结果为0.25。

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