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A Novel Approach to ECG Classification Based upon Two-Layered HMMs in Body Sensor Networks

机译:传感器网络中基于两层HMM的心电图分类新方法

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摘要

This paper presents a novel approach to ECG signal filtering and classification. Unlike the traditional techniques which aim at collecting and processing the ECG signals with the patient being still, lying in bed in hospitals, our proposed algorithm is intentionally designed for monitoring and classifying the patient's ECG signals in the free-living environment. The patients are equipped with wearable ambulatory devices the whole day, which facilitates the real-time heart attack detection. In ECG preprocessing, an integral-coefficient-band-stop (ICBS) filter is applied, which omits time-consuming floating-point computations. In addition, two-layered Hidden Markov Models (HMMs) are applied to achieve ECG feature extraction and classification. The periodic ECG waveforms are segmented into ISO intervals, P subwave, QRS complex and T subwave respectively in the first HMM layer where expert-annotation assisted Baum-Welch algorithm is utilized in HMM modeling. Then the corresponding interval features are selected and applied to categorize the ECG into normal type or abnormal type (PVC, APC) in the second HMM layer. For verifying the effectiveness of our algorithm on abnormal signal detection, we have developed an ECG body sensor network (BSN) platform, whereby real-time ECG signals are collected, transmitted, displayed and the corresponding classification outcomes are deduced and shown on the BSN screen.
机译:本文提出了一种新颖的心电信号滤波和分类方法。与旨在在患者躺在医院的床上静止不动的情况下收集和处理ECG信号的传统技术不同,我们提出的算法是有意设计的,用于在自由生活的环境中监视和分类患者的ECG信号。患者整天都配备了可穿戴的门诊设备,这有助于实时检测心脏病发作。在ECG预处理中,应用了积分系数带阻(ICBS)滤波器,该滤波器省去了费时的浮点计算。另外,应用两层隐马尔可夫模型(HMM)来实现ECG特征提取和分类。在第一HMM层中,将周期性的ECG波形分别分为ISO间隔,P子波,QRS复数和T子波,其中在HMM建模中使用专家注释辅助的Baum-Welch算法。然后,选择相应的间隔特征并将其应用于在第二HMM层中将ECG分为正常类型或异常类型(PVC,APC)。为了验证我们的算法在异常信号检测中的有效性,我们开发了一个ECG人体传感器网络(BSN)平台,借此收集,传输,显示实时ECG信号,并推导出相应的分类结果并显示在BSN屏幕上。

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