Machine Learning-based Classification of Ischemic and Non-Ischemic Exercise Stress Test ECG

Dibya Chowdhury, B. Neelapu, K. Pal, J. Sivaraman
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引用次数: 1

Abstract

Myocardial Ischemia (MI) is a fatal heart condition due to insufficient blood flow in the heart muscles, which may cause unexpected heart attacks. Exercise Stress Test (EST) Electrocardiogram (ECG) is a non-invasive diagnostic procedure that can help identify various disease conditions, including MI. This study aims to classify the ischemic and non-ischemic EST ECG using Machine Learning (ML) algorithms. EST ECGs for 152 patients (n=53 female) of mean age ($50 \pm 11.92$ years) were used in this study. ST morphology changes, measured during pre-load, load, and recovery at $J+(40$, 60, and 80 ms) were utilized as input to 14 ML classifiers. 70% of the input data to the ML classifiers were considered as train data, and 30% of the input data as test. Random Forest (RF) was selected based on the most suitable output and was used to classify between ischemic and non-ischemic by considering the clinical features such as ST variations, Blood Pressure (BP), Metabolic equivalent (Mets), and Rate Pressure Product (RPP) as input for both lead-II and V5. The model accuracy, sensitivity, precision, and F1 score for lead-II were 93%, 89.17%, 93%, and 89.63%, respectively. For V5, the performance matrices were 91%, 80%, 95%, and 86.14%, respectively.
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基于机器学习的缺血性和非缺血性运动应激试验心电图分类
心肌缺血(MI)是一种致命的心脏疾病,由于心脏肌肉的血液流动不足,这可能导致意想不到的心脏病发作。运动应激测试(EST)心电图(ECG)是一种非侵入性诊断程序,可以帮助识别各种疾病状况,包括心肌梗死。本研究旨在使用机器学习(ML)算法对缺血性和非缺血性EST心电图进行分类。本研究使用了平均年龄(50美元/ pm 11.92美元)的152例患者(n=53名女性)的EST ECGs。ST形态变化,在预负荷、负荷和恢复时(40、60和80 ms)测量,作为14 ML分类器的输入。ML分类器输入数据的70%被认为是训练数据,30%被认为是测试数据。随机森林(Random Forest, RF)是根据最合适的输出选择的,并通过考虑ST变化、血压(BP)、代谢当量(Mets)和率压产物(RPP)等临床特征作为铅- ii和V5的输入,用于对缺血和非缺血进行分类。模型对铅- ii的准确度、灵敏度、精密度和F1评分分别为93%、89.17%、93%和89.63%。对于V5,性能矩阵分别为91%、80%、95%和86.14%。
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