Zhu Junjiang, Lv Jintao, Kong Dongdong
School of Mechanical and Electrical Engineering, China Jiliang University, Hangzhou 310018, China.
School of Mechatronic Engineering and Automation, Shanghai University, Shanghai 200444, China.
Entropy (Basel). 2022 Mar 28;24(4):471. doi: 10.3390/e24040471.
(1) Background and objective: Cardiovascular disease is one of the most common causes of death in today's world. ECG is crucial in the early detection and prevention of cardiovascular disease. In this study, an improved deep learning method is proposed to diagnose abnormal and normal ECG accurately. (2) Methods: This paper proposes a CNN-FWS that combines three convolutional neural networks (CNN) and recursive feature elimination based on feature weights (FW-RFE), which diagnoses abnormal and normal ECG. F1 score and Recall are used to evaluate the performance. (3) Results: A total of 17,259 records were used in this study, which validated the diagnostic performance of CNN-FWS for normal and abnormal ECG signals in 12 leads. The experimental results show that the F1 score of CNN-FWS is 0.902, and the Recall of CNN-FWS is 0.889. (4) Conclusion: CNN-FWS absorbs the advantages of convolutional neural networks (CNN) to obtain three parts of different spatial information and enrich the learned features. CNN-FWS can select the most relevant features while eliminating unrelated and redundant features by FW-RFE, making the residual features more representative and effective. The method is an end-to-end modeling approach that enables an adaptive feature selection process without human intervention.
(1) 背景与目的:心血管疾病是当今世界最常见的死亡原因之一。心电图在心血管疾病的早期检测和预防中至关重要。在本研究中,提出了一种改进的深度学习方法以准确诊断异常和正常心电图。(2) 方法:本文提出了一种结合三个卷积神经网络(CNN)和基于特征权重的递归特征消除(FW-RFE)的CNN-FWS,用于诊断异常和正常心电图。使用F1分数和召回率来评估性能。(3) 结果:本研究共使用了17259条记录,验证了CNN-FWS对12导联正常和异常心电图信号的诊断性能。实验结果表明,CNN-FWS的F1分数为0.902,召回率为0.889。(4) 结论:CNN-FWS吸收了卷积神经网络(CNN)的优点,获得了三部分不同的空间信息并丰富了学习到的特征。CNN-FWS可以通过FW-RFE选择最相关的特征,同时消除不相关和冗余的特征,使剩余特征更具代表性和有效性。该方法是一种端到端的建模方法,能够在无需人工干预的情况下实现自适应特征选择过程。