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Evaluation of bagging ensemble method with time-domain feature extraction for diagnosing of arrhythmia beats

机译:基于时域特征提取的袋装合奏方法在心律失常搏动诊断中的评估

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摘要

We explore the effect of using bagged decision tree (BDT) as an ensemble learning method with proposed time-domain feature extraction methods on electrocardiogram (ECG) arrhythmia beat classification comparing with single decision tree (DT) classifier. RR interval is the main property which defines irregular heart rhythm, and its ratio to the previous value and difference from mean value are used as morphological feature extraction methods. Form factor, its ratio to the previous value and difference from mean value are used to express ECG waveform complexity. In addition, skewness and second-order linear predictive coding coefficients are added to the feature vector of 56,569 ECG heart beats obtained from MIT-BIH arrhythmia database as time-domain feature extraction methods. The quarter of ECG heart beat samples are used as test data for DT and BDT. The performance measures of these classifiers are evaluated using the metrics such as accuracy, sensitivity, specificity and Kappa coefficient for both classifiers, and the performance of BDT classifier is examined for number of base learners up to 75. The BDT results in more predictive performance than DT according to the performance measures. BDT with 69 base learners has 99.51% of accuracy, 97.50% of sensitivity, 99.80% of specificity and 0.989 of Kappa coefficient while DT gives 98.78, 96.05, 99.57 and 0.975%, respectively. These metrics show that the suggested BDT increases the numbers of successfully identified arrhythmia beats. Moreover, BDT with at least three base learners has higher distinguishing capability than DT.
机译:我们探讨了使用袋装决策树(BDT)作为整体学习方法以及拟议的时域特征提取方法对心电图(ECG)心律失常心律分类的效果,并与单决策树(DT)分类器进行了比较。 RR间隔是定义不规则心律的主要属性,其与前值的比值和与平均值的差值被用作形态学特征提取方法。形状因数,其与先前值的比率以及与平均值的差用于表示ECG波形的复杂性。此外,将偏度和二阶线性预测编码系数添加到从MIT-BIH心律失常数据库获得的56,569个ECG心跳的特征向量中,作为时域特征提取方法。四分之一的ECG心跳样本用作DT和BDT的测试数据。使用两个分类器的准确性,敏感性,特异性和Kappa系数等指标评估这些分类器的性能指标,并且对多达75个基础学习者的BDT分类器的性能进行了检查。BDT的预测性能比根据性能指标确定DT。具有69名基础学习者的BDT的准确度为99.51%,灵敏度为97.50%,特异性为99.80%和Kappa系数为0.989,而DT分别为98.78、96.05、99.57和0.975%。这些指标表明,建议的BDT可以增加成功识别出的心律失常心跳的次数。此外,具有至少三个基础学习者的BDT具有比DT更高的区分能力。

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