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VFPred: A fusion of signal processing and machine learning techniques in detecting ventricular fibrillation from ECG signals

机译:VFPred:信号处理和机器学习技术的融合,可从ECG信号检测心室颤动

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摘要

Ventricular Fibrillation (VF), one of the most dangerous arrhythmias, is responsible for sudden cardiac arrests. Thus, various algorithms have been developed to predict VF from electrocardiogram (ECG), which is a binary classification problem. In the literature, we find a number of algorithms based on signal processing, where, after some robust mathematical operations the decision is given based on a predefined threshold over a single value. On the other hand, some machine learning based algorithms are also reported in the literature; however, these algorithms merely combine some parameters and make a prediction using those as features. Both the approaches have their perks and pitfalls; thus our motivation was to coalesce them to get the best out of the both worlds. Hence we have developed, VFPred that, in addition to employing a signal processing pipeline, namely, Empirical Mode Decomposition and Discrete Fourier Transform for useful feature extraction, uses a Support Vector Machine for efficient classification. VFPred turns out to be a robust algorithm as it is able to successfully segregate the two classes with equal confidence (sensitivity= 99.99%, specificity = 98.40%) even from a short signal of 5 s long, whereas existing works though requires longer signals, flourishes in one but fails in the other. (C) 2018 Elsevier Ltd. All rights reserved.
机译:心室纤颤(VF)是最危险的心律不齐之一,可导致心脏骤停。因此,已经开发出各种算法来根据心电图(ECG)预测VF,这是一种二进制分类问题。在文献中,我们发现了许多基于信号处理的算法,其中,经过一些可靠的数学运算后,将基于单个值上的预定义阈值给出决策。另一方面,文献中还报道了一些基于机器学习的算法。然而,这些算法仅结合了一些参数并使用这些参数作为特征进行预测。两种方法都有其优点和陷阱。因此,我们的动机是凝聚他们,以从两全其美中获得最大收益。因此,我们开发了VFPred,除了采用信号处理流水线(即经验模式分解和离散傅里叶变换)以进行有用的特征提取外,VFPred还使用支持向量机进行有效分类。 VFPred证明是一种可靠的算法,因为即使从5 s长的短信号中,它也能够以相等的置信度(灵敏度= 99.99%,特异性= 98.40%)成功地将两个类别分离开来,而现有的作品虽然需要更长的信号,一方面繁荣,另一方面失败。 (C)2018 Elsevier Ltd.保留所有权利。

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