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首页> 外文期刊>Neural computing & applications >A novel hybrid network of fusing rhythmic and morphological features for atrial fibrillation detection on mobile ECG signals
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A novel hybrid network of fusing rhythmic and morphological features for atrial fibrillation detection on mobile ECG signals

机译:一种新型混合网络的融合节律和形态特征在移动心电图信号上的心房颤动检测

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摘要

Atrial fibrillation (AF) is one of the most common arrhythmia diseases, the incidence of which is ascendant with age increase. What's more, AF is a high-risk factor for stroke, ischemia myocardial and other malignant cardiovascular diseases, which would threaten people's life significantly. Using a mobile device to screen AF segments is an effective way to reduce the mortality and morbidity of malignant cardiovascular diseases. However, most of existing AF detection methods mainly centered on clinical resting ECG signals and were incapable of processing mobile ECG signals with low signal-to-noise ratio which collected by mobile devices. In this paper, we take advantage of a fully convolutional network variant named U-Net for heart rhythmic information capturing by locating R peak positions as well as calculating RR intervals and a 34-layer residual network for waveform morphological features capturing from ECG signals. Combining both rhythmic information and waveform morphological features, two-layer fully connected networks are employed successively to discriminate AF, normal sinus rhythm , and other abnormal rhythm (other). The extensive experimental results show that our proposed AF our proposed AF screening framework named FRM-CNN can achieveF1value of 85.08 +/- 0.99% and accuracy of87.22 +/- 0.7 on identifying AF segments well without handcraft engineering. Compared with the cutting-edge AF detection methods, the FRM-CNN has more superior performance on monitoring people's health conditions with mobile devices.
机译:心房颤动(AF)是最常见的心律失常疾病之一,其发病率与年龄增加是升级。更重要的是,AF是中风,缺血心肌和其他恶性心血管疾病的高危因素,这会显着威胁着人们的生活。使用移动设备来筛选AF段是降低恶性心血管疾病的死亡率和发病率的有效途径。然而,大多数现有的AF检测方法主要以临床休息的ECG信号为中心,并且不能处理由移动设备收集的低信噪比的移动ECG信号。在本文中,我们利用了一个全卷积的网络变体,通过定位R峰位置以及计算RR间隔以及从ECG信号捕获的波形形态特征的RR间隔和34层剩余网络来捕获心律信息捕获。结合有节奏信息和波形形态特征,连续使用两层完全连接的网络以区分AF,正常窦性心律和其他异常节律(其他)。广泛的实验结果表明,我们提出的AF我们提出的AF筛查框架命名为FRM-CNN,可以实现85.08 +/- 0.99%的1Value和87.22 +/- 0.7的准确性,在没有手工工程的情况下识别AF段。与尖端AF检测方法相比,FRM-CNN在使用移动设备监测人的健康状况方面具有更优异的性能。

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