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A Signal Quality Assessment Method for Electrocardiography Acquired by Mobile Device

机译:移动设备获取心电图的信号质量评估方法

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Electrocardiography (ECG) is a significant tool for detecting cardiovascular diseases. The remote ECG monitoring system by mobile device can gather data anywhere, at any time, which broaden the scope of diagnosis service. However, in clinical, the crucial obstacle involved in the remote system is to identify whether the ECG collected by inexperienced person is usable for diagnostic interpretation. In this study, we address the quality assessment problem of clinical ECG and provide an effective 7-layer Long Short-Term Memory neural network, named LSTM-ECG. According to medical knowledge, we devise a comprehensive feature set which covers the spectral distribution, signal complexity, horizontal and vertical variation of waves, and so on. Meanwhile, we design two LSTM layers in LSTM-ECG to automatically learn the related features. A merge layer is utilized to accomplish feature fusion between domain feature set and LSTM layer feature set and a dropout layer is introduced to prevent overfitting. In order to test the effectiveness of LSTM-ECG, four classifiers are implemented for contrast. Two datasets include large scale clinical data are used in experiments. Comprehensive experiments show that LSTM-ECG is better than the prior state-of-art method and effective in clinical data.
机译:心电图(ECG)是检测心血管疾病的重要工具。移动设备的远程心电监护系统可以随时随地采集数据,拓宽了诊断服务的范围。然而,在临床上,远程系统所涉及的关键障碍是确定没有经验的人收集的ECG是否可用于诊断解释。在这项研究中,我们解决了临床心电图的质量评估问题,并提供了一个有效的7层长短期记忆神经网络,称为LSTM-ECG。根据医学知识,我们设计了一个综合的功能集,该功能集涵盖了频谱分布,信号复杂性,波的水平和垂直变化等。同时,我们在LSTM-ECG中设计了两个LSTM层,以自动学习相关功能。利用合并层来完成域特征集和LSTM层特征集之间的特征融合,并引入一个辍学层以防止过度拟合。为了测试LSTM-ECG的有效性,实施了四个分类器进行对比。实验中使用了包括大规模临床数据在内的两个数据集。全面的实验表明,LSTM-ECG优于现有技术,并且在临床数据中有效。

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