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Detection of Cardiac Arrhythmia using Autonomic Nervous System, Gaussian Mixture Model and Artificial Neural Network

机译:使用自主神经系统,高斯混合模型和人工神经网络检测心律失常

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In this study, a new technique which detects anomalies in skin sympathetic nerve activity (SKNA) by using state-of-the-art signal processing and machine learning methods is developed to perform the robust detection of cardiac arrhythmia (CA). For this purpose, a signal processing technique that simultaneously obtains SKNA and ECG from wideband recordings on MIT-BIH database is developed. By using preprocessed data, a novel feature extraction technique which obtains SKNA features that are critical for the reliable detection of CA is developed. By using extracted features, a supervised learning technique based on artificial neural network (ANN) and an unsupervised learning technique based on Gaussian mixture model (GMM) are developed to perform the robust detection of SKNA anomalies. A Neyman-Pearson type of approach is developed to perform the robust detection of outliers that correspond to CA. The performance results of the proposed technique over MIT-BIH database showed that the technique provides highly reliable detection of CA by performing the robust detection of SKNA anomalies. Therefore, in cases where the diagnostic information of ECG is not sufficient for the reliable diagnosis of CA, the proposed technique can provide early diagnosis of the disease, which can lead to a significant reduction in the mortality rates of cardiovascular diseases.
机译:在该研究中,开发了一种通过使用最先进的信号处理和机器学习方法来检测皮肤交感神经活动(SKNA)中的异常的新技术,以进行心律失常(CA)的鲁棒检测。为此目的,开发了一种从MIT-BIH数据库上的宽带记录获得SKNA和ECG的信号处理技术。通过使用预处理数据,开发了一种新的特征提取技术,其获得对CA可靠检测至关重要的SKNA特征。通过提取特征,开发了一种基于人工神经网络(ANN)的监督学习技术和基于高斯混合模型(GMM)的无监督学习技术以进行稳健的检测SKNA异常。开发了一种Neyman-Pearson类型的方法,以执行与CA对应的异常值的强大检测。通过MIT-BIH数据库的所提出的技术的性能结果表明,通过执行SKNA异常的鲁棒检测,该技术可提供高度可靠的Ca检测。因此,在ECG的诊断信息不足以可靠诊断CA的情况下,所提出的技术可以提供疾病的早期诊断,这可能导致心血管疾病的死亡率显着降低。

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