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QRS detection method based on fully convolutional networks for capacitive electrocardiogram

机译:基于全卷积网络的QRS检测方法

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A capacitive electrocardiogram (cECG) signal is considered a promising alternative to a conventional contact electrocardiogram (ECG) signal because the cECG signal can serve the same purpose as the contact ECG signal but can be measured during daily life without causing a subject to feel uncomfortable. However, the cECG signal has a limitation in that detection of QRS complexes, which is a fundamental step to analyze heart condition, is not easy. That is because the cECG signal is sensitive to noise, especially motion noise. This paper proposes a method to detect QRS complexes in cECG signals degraded by motion noise. The proposed method is based on fully convolutional networks (FCNs) and mainly consists of three parts: the generation of ground-truth data, the FCN model, and postprocessing. A labeling process for generating the ground-truth data is proposed. Then, an FCN model that is suitable for cECG signals is proposed. The proposed FCN model uses filters of a large size to achieve a large receptive field, unlike the common FCN models used in image processing. The receptive field is sufficiently large to involve information about adjacent QRS complexes, such as the time interval between the QRS complexes and its variability. By considering the information, the proposed FCN model can reliably classify QRS complexes even in cECG signals degraded by motion noise. Additionally, postprocessing, which consists of an accumulation step and a non-maximum suppression step, is proposed to complement the proposed FCN model. In experiments with real data, the proposed method showed an average sensitivity of 96.94%, positive predictive value of 99.13%, and F1 score of 98.02%. These results demonstrate that the proposed method overcomes the limitation of a cECG signal and helps the cECG signal be widely utilized for medical or healthcare applications. (C) 2019 Elsevier Ltd. All rights reserved.
机译:电容性心电图(cECG)信号被认为是常规接触式心电图(ECG)信号的有希望的替代方法,因为cECG信号可以起到与接触式ECG信号相同的作用,但是可以在日常生活中进行测量而不会导致受试者感到不适。但是,cECG信号的局限性在于检测QRS复合物(这是分析心脏状况的基本步骤)并不容易。这是因为cECG信号对噪声特别是运动噪声敏感。本文提出了一种检测运动噪声降解的cECG信号中QRS波群的方法。所提出的方法基于全卷积网络(FCN),主要包括三个部分:真实数据的生成,FCN模型和后处理。提出了一种用于生成真实数据的标记过程。然后,提出了适用于cECG信号的FCN模型。所提出的FCN模型使用大尺寸的滤波器来实现大的接收场,这与在图像处理中使用的常见FCN模型不同。接收域足够大,可以包含有关相邻QRS复合体的信息,例如QRS复合体之间的时间间隔及其可变性。通过考虑这些信息,即使在运动噪声降低的cECG信号中,所提出的FCN模型也可以可靠地对QRS复杂度进行分类。此外,提出了由累积步骤和非最大抑制步骤组成的后处理,以补充所提出的FCN模型。在真实数据实验中,该方法的平均灵敏度为96.94%,阳性预测值为99.13%,F1得分为98.02%。这些结果表明,提出的方法克服了cECG信号的局限性,并有助于cECG信号被广泛用于医疗或保健应用。 (C)2019 Elsevier Ltd.保留所有权利。

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