• 1. School of Electronic Engineering, Beijing University of Posts and Telecommunications, Beijing 100876, P.R.China;
  • 2. School of computer and communication Engineering, Zhengzhou University of Light Industry, Zhengzhou 450002, P.R.China;
  • 3. Beijing Key Laboratory of Work Safety Intelligent Monitoring, Beijing 100876, P.R.China;
  • 4. Wisdom healthy technology co., Ltd, Xiamen, Fujian 361010, P.R.China;
  • 5. School of Automation Science and Electrical Engineering, Beihang University, Beijing 100191, P.R.China;
ZHANG Hongxin, Email: hongxinzhang@263.net
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Electrocardiogram (ECG) signals are easily disturbed by internal and external noise, and its morphological characteristics show significant variations for different patients. Even for the same patient, its characteristics are variable under different temporal and physical conditions. Therefore, ECG signal detection and recognition for the heart disease real-time monitoring and diagnosis are still difficult. Based on this, a wavelet self-adaptive threshold denoising combined with deep residual convolutional neural network algorithm was proposed for multiclass arrhythmias recognition. ECG signal filtering was implemented using wavelet adaptive threshold technology. A 20-layer convolutional neural network (CNN) containing multiple residual blocks, namely deep residual convolutional neural network (DR-CNN), was designed for recognition of five types of arrhythmia signals. The DR-CNN constructed by residual block local neural network units alleviated the difficulty of deep network convergence, the difficulty in tuning and so on. It also overcame the degradation problem of the traditional CNN when the network depth was increasing. Furthermore, the batch normalization of each convolution layer improved its convergence. Following the recommendations of the Association for the Advancements of Medical Instrumentation (AAMI), experimental results based on 94 091 2-lead heart beats from the MIT-BIH arrhythmia benchmark database demonstrated that our proposed method achieved the average detection accuracy of 99.034 9%, 99.498 0% and 99.334 7% for multiclass classification, ventricular ectopic beat (Veb) and supra-Veb (Sveb) recognition, respectively. Using the same platform and database, experimental results showed that under the comparable network complexity, our proposed method significantly improved the recognition accuracy, sensitivity and specificity compared to the traditional deep learning networks, such as deep Multilayer Perceptron (MLP), CNN, etc. The DR-CNN algorithm improves the accuracy of the arrhythmia intelligent diagnosis. If it is combined with wearable equipment, internet of things and wireless communication technology, the prevention, monitoring and diagnosis of heart disease can be extended to out-of-hospital scenarios, such as families and nursing homes. Therefore, it will improve the cure rate, and effectively save the medical resources.

Citation: LI Duan, ZHANG Hongxin, LIU Zhiqing, HUANG Juxiang, WANG Tian. Deep residual convolutional neural network for recognition of electrocardiogram signal arrhythmias. Journal of Biomedical Engineering, 2019, 36(2): 189-198. doi: 10.7507/1001-5515.201712031 Copy

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