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A novel fuzzy c-means method for classifying heartbeat cases from ECG signals

机译:一种从心电图信号分类心跳病例的新型模糊c均值方法

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摘要

This study proposes a simple and reliable method termed the fuzzy c-means method for classifying the heartbeat cases from electrocardiogram (ECG) signals. The proposed method has the advantages of good detection results, no complex mathematic computations, low memory space and low time complexity. The FCMM can accurately classify and distinguish the difference between normal heartbeats and abnormal heartbeats. Classifying the heartbeat cases from ECG signals consists of four main procedures: (i) Procedure-DOM for detecting QRS waveform using the Difference Operation Method; (ii) qualitative features stage (Procedure-ROM) for qualitative feature selection using the Range-Overlaps Method on ECG signals; (iii) Procedure-CCC is used to compute the cluster center for each class; and (iv) Procedure-HCD is used to determine the heartbeat case for the patient. The experiments show that the sensitivities were 98.28percent, 90.35percent, 86.97percent, 92.19percent, and 94.86percent for NORM, LBBB, RBBB, VPC and APC, respectively. The total classification accuracy was approximately 93.57percent.
机译:这项研究提出了一种简单可靠的方法,称为模糊c均值方法,用于根据心电图(ECG)信号对心跳病例进行分类。该方法检测结果好,不需要复杂的数学运算,存储空间小,时间复杂度低。 FCMM可以准确地分类和区分正常心跳和异常心跳之间的差异。根据ECG信号对心跳情况进行分类包括四个主要过程:(i)使用差值运算方法检测QRS波形的过程DOM; (ii)使用范围重叠法对ECG信号进行定性特征选择的定性特征阶段(Procedure-ROM); (iii)Procedure-CCC用于计算每个类别的聚类中心; (iv)程序-HCD用于确定患者的心跳情况。实验表明,NORM,LBBB,RBBB,VPC和APC的灵敏度分别为98.28%,90.35%,86.97%,92.19%和94.86%。总分类准确度约为93.57%。

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