Real-time ECG signal pre-processing and neuro fuzzy-based CHD risk prediction

S. Satheeskumaran, C. Venkatesan, Swaminathan Saravanan
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引用次数: 9

Abstract

Coronary heart disease (CHD) is a major chronic disease which is directly responsible for myocardial infarction. Heart rate variability (HRV) has been used for the prediction of CHD risk in human beings. In this work, neuro fuzzy-based CHD risk prediction is performed after performing pre-processing and HRV feature extraction. The pre-processing is used to remove high frequency noise which is modelled as white Gaussian noise. The real-time ECG signal acquisition, pre-processing and HRV feature extraction are performed using NI LabVIEW and DAQ board. A 30 seconds recording of ECG signal was selected in both smokers and non-smokers. Various statistical parameters are extracted from HRV to predict coronary heart disease (CHD) risk among the subjects. The HRV extracted signals are classified into normal and CHD risky subjects using neuro fuzzy classifier. The classification performance of the neuro fuzzy classifier is compared with the ANN, KNN, and decision tree classifiers.
实时心电信号预处理及基于神经模糊的冠心病风险预测
冠心病(CHD)是直接导致心肌梗死的主要慢性疾病。心率变异性(HRV)已被用于预测人类冠心病的风险。在本工作中,通过预处理和HRV特征提取,进行基于神经模糊的冠心病风险预测。预处理用于去除高频噪声,将高频噪声建模为高斯白噪声。利用NI LabVIEW和DAQ板进行实时心电信号采集、预处理和HRV特征提取。吸烟者和非吸烟者均选择30秒的心电图信号记录。从HRV中提取各种统计参数来预测受试者的冠心病(CHD)风险。利用神经模糊分类器将提取的HRV信号分为正常受试者和冠心病高危受试者。将神经模糊分类器的分类性能与人工神经网络、KNN和决策树分类器进行了比较。
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