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Machine Learning Improves the Detection of Misplaced V1 and V2 Electrodes During 12-Lead Electrocardiogram Acquisition

机译:机器学习可改善12导联心电图采集过程中错置的V1和V2电极的检测

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Electrode misplacement during 12-lead Electrocardiogram (ECG) acquisition can cause false ECG diagnosis and subsequent incorrect clinical treatment. A common misplacement error is the superior placement of V1 and V2 electrodes. The aim of the current research was to detect lead V1 and V2 misplacement using machine learning to enhance ECG data quality to improve clinical decision making. In this particular study, we reasonably assume that V1 and V2 are concurrently superiorly misplaced together. ECGs for 450 patients were extracted from body surface potential maps. Sixteen features were extracted including: morphological, statistical and time-frequency features. Two feature selection approaches (filter method and wrapper method) were applied to find an optimal set of features that provide a high accuracy. To ensure accuracy, six classifiers were applied including: fine tree, coarse tree, bagged tree, Linear Support Vector Machine (LSVM), Quadratic Support Vector Machine (QSVM) and logistic regression. The accuracy of V1 and V2 misplacement detection was 94.3% in the first ICS, 92.7% in the second ICS and 70% in third ICS respectively. Bagged tree was the best classifier in the first, second and third ICS to detect V1 and V2 misplacement.
机译:采集12导联心电图(ECG)期间电极错位可能导致错误的ECG诊断和随后的不正确的临床治疗。一个常见的放错位置的错误是V1和V2电极的位置优越。当前研究的目的是使用机器学习来检测V1和V2铅的错位,以增强ECG数据质量以改善临床决策。在此特定研究中,我们合理地假设V1和V2并发地同时错位在一起。从体表电位图中提取了450名患者的ECG。提取了16个特征,包括:形态特征,统计特征和时频特征。应用了两种特征选择方法(过滤器方法和包装器方法)来找到可提供高精度的最佳特征集。为了确保准确性,应用了六个分类器,包括:细树,粗糙树,袋装树,线性支持向量机(LSVM),二次支持向量机(QSVM)和逻辑回归。第一个ICS中的V1和V2错位检测的准确性分别为94.3%,第二个ICS中的92.7%和第三个ICS中的70%。在第一,第二和第三ICS中,袋装树是检测V1和V2放错位置的最佳分类器。

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