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Deep Learning Approach for QRS Wave Detection in ECG Monitoring

机译:心电图监测中QRS波检测的深度学习方法

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Paper describes an approach of deep learning for QRS wave detection for using in mobile heart monitoring systems. Authors analyze a deep learning approach and its advantages in the field of feature extraction and detection, and deep network architecture. Two different variants of deep network are proposed. ECG data processing scheme that includes a neural network is described. It presumes preprocessing, filtering, windowing of ECG signal, buffering, QRS wave detection and analysis. Network training process is mathematically founded. Two variants of neural network are experimentally tested. Training sets and test sets are obtained from free ECG data bank PhysioN et.org. Experimental results show that network with decreasing number of neurons in hidden layers has a better generalization capability. Next steps of research will include experiments with training set size and determining of its' influence on the quality of detection.
机译:论文描述了一种用于移动心脏监测系统的QRS波检测深度学习方法。作者分析了深度学习方法及其在特征提取和检测以及深度网络体系结构方面的优势。提出了两种不同的深度网络变体。描述了包括神经网络的ECG数据处理方案。它假定进行预处理,滤波,ECG信号的窗口化,缓冲,QRS波检测和分析。网络训练过程是数学上建立的。对神经网络的两种变体进行了实验测试。训练集和测试集可从免费的ECG数据库PhysioN et.org获得。实验结果表明,隐层神经元数量减少的网络具有更好的泛化能力。下一步的研究将包括对训练集大小进行实验,并确定其对检测质量的影响。

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