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A Novel CNN-Based Framework for Classification of Signal Quality and Sleep Position from a Capacitive ECG Measurement

机译:一种基于CNN的新型框架,可通过电容式ECG测量来对信号质量和睡眠位置进行分类

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摘要

The further exploration of the capacitive ECG (cECG) is hindered by frequent fluctuations in signal quality from body movement and changes in sleep position. The processing framework must be fundamentally adapted to make full use of this signal. Therefore, we propose a new signal-processing framework that determines the signal quality for short signal segments (2 and 4 seconds) using a multi-class classification model (qua_model) based on a convolutional neural network (CNN). We built another independent deep CNN classifier (pos_model) to classify the sleep position. In the validation, 12 subjects were recruited for a 30-minute experiment, which required the subjects to lie on a bed in different sleeping positions. The short segments, classified as clear (C1 class) by the qua_model, were used to determine sleep positions with the pos_model. In 10-fold cross-validation, the qua_model for signals of 4-second length could recognize the signal of the C1 class at a 0.99 precision and a 0.99 recall; the pos_model could recognize the supine sleep position, the left, and right lateral sleep positions at a 0.99 averaged precision and a 0.99 averaged recall. Given the amount of data accumulated per night and the instability in the signal quality, this fully automatic processing framework is indispensable for a personal healthcare system. Therefore, this study could serve as an important step for cECG technique trying to explore the cECG for unconstrained heart monitoring.
机译:电容性心电图(cECG)的进一步探索受到人体运动和睡眠位置变化引起的信号质量频繁波动的阻碍。必须从根本上调整处理框架以充分利用此信号。因此,我们提出了一种新的信号处理框架,该框架使用基于卷积神经网络(CNN)的多类分类模型(qua_model)确定短信号段(2和4秒)的信号质量。我们建立了另一个独立的深度CNN分类器(pos_model)对睡眠位置进行分类。在验证中,招募了12名受试者进行30分钟的实验,该试验要求受试者以不同的睡眠姿势躺在床上。被qua_model归类为“ clear”(C1类)的短段用于通过pos_model确定睡眠位置。在10倍交叉验证中,长度为4秒的信号的qua_model可以以0.99的精度和0.99的召回率识别C1类信号。 pos_model可以以0.99的平均精度和0.99的平均召回率来识别仰卧位,左右侧位。考虑到每晚积累的数据量以及信号质量的不稳定,这种全自动处理框架对于个人医疗保健系统是必不可少的。因此,这项研究可以作为cECG技术的重要步骤,试图探索无约束心脏监测的cECG。

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