Adaptive Predictive Control-Based Noise Cancellation With Deep Learning for Arrhythmia Classification from ECG Signals

Rajesh. S. Pashikanti, A. Shinde, C. Patil
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Abstract

Arrhythmia is a disorder in the heart produced due to irregular electrical activities of the heart, and an electrocardiogram (ECG) represents a modality used by clinicians to discover arrhythmias. The occurrence of noise in ECG and irregular heartbeat is the complexity faced while diagnosing arrhythmias. Thus, there is a requirement for a technique that can attain high accuracy in arrhythmia classification. This paper utilizes the Deep Maxout network (DMN) for classifying arrhythmia using ECG signals. Here, the ECG signal is considered as an input to adaptive prediction noise control wherein the noise cancellation is performed using adaptive Least Mean Square (LMS) to discard noise and obtain a clean signal. From a clean signal, the features, like Empirical Mode Decomposition (EMD), wave component detection, wave features, such as RR interval, QT interval, PR interval, PP interval, and R peak whereas statistical features, such as kurtosis, eccentricity are mined for improved analysis. At last, the classification of arrhythmia is done using DMN. The greatest accuracy of 92.1%, the sensitivity of 92.6%, and the specificity of 91.9% are measured using DMN.
基于自适应预测控制和深度学习的心电信号心律失常分类噪声消除
心律失常是由于心脏电活动不规律而引起的心脏疾病,而心电图(ECG)是临床医生发现心律失常的一种方式。心电杂音和心律不齐的出现是心律失常诊断面临的复杂问题。因此,需要一种能够在心律失常分类中达到高精度的技术。本文利用深度Maxout网络(Deep Maxout network, DMN)对心电信号进行心律失常分类。在这里,心电信号被视为自适应预测噪声控制的输入,其中使用自适应最小均方(LMS)进行噪声消除,以去除噪声并获得干净的信号。从一个干净的信号中,特征,如经验模式分解(EMD),波分量检测,波特征,如RR间隔,QT间隔,PR间隔,PP间隔,R峰,而统计特征,如峰度,偏心率被挖掘以改进分析。最后用DMN对心律失常进行分类。DMN检测的最高准确率为92.1%,灵敏度为92.6%,特异性为91.9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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