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首页> 外文期刊>Translational Engineering in Health and Medicine, IEEE Journal of >A Multi-Task Group Bi-LSTM Networks Application on Electrocardiogram Classification
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A Multi-Task Group Bi-LSTM Networks Application on Electrocardiogram Classification

机译:一个多任务组BI-LSTM网络在心电图分类上应用

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摘要

Background: Cardiovascular diseases (CVD) are the leading cause of death globally. Electrocardiogram (ECG) analysis can provide thoroughly assessment for different CVDs efficiently. We propose a multi-task group bidirectional long short-term memory (MTGBi-LSTM) framework to intelligent recognize multiple CVDs based on multi-lead ECG signals. Methods: This model employs a Group Bi-LSTM (GBi-LSTM) and Residual Group Convolutional Neural Network (Res-GCNN) to learn the dual feature representation of ECG space and time series. GBi-LSTM is divided into Global Bi-LSTM and Intra-Group Bi-LSTM, which can learn the features of each ECG lead and the relationship between leads. Then, through attention mechanism, the different lead information of ECG is integrated to make the model to possess the powerful feature discriminability. Through multi-task learning, the model can fully mine the association information between diseases and obtain more accurate diagnostic results. In addition, we propose a dynamic weighted loss function to better quantify the loss to overcome the imbalance between classes. Results: Based on more than 170,000 clinical 12-lead ECG analysis, the MTGBi-LSTM method achieved accuracy, precision, recall and F1 of 88.86;, 90.67;, 94.19; and 92.39;, respectively. The experimental results show that the proposed MTGBi-LSTM method can reliably realize ECG analysis and provide an effective tool for computer-aided diagnosis of CVD.
机译:背景:心血管疾病(CVD)是全球死亡的主要原因。心电图(ECG)分析可以有效地为不同的CVD提供彻底评估。我们提出了一种基于多引导ECG信号的智能识别多个CVDS的多任务组双向短期内存(MTGBI-LSTM)框架。方法:该模型采用Bi-LSTM(GBI-LSTM)和残差组卷积神经网络(RES-GCNN)来学习ECG空间和时间序列的双重特征表示。 GBI-LSTM分为全球Bi-LSTM和群体内的BI-LSTM,可以学习每个ECG领先优势的特征和引线之间的关系。然后,通过注意机制,ECG的不同引线信息集成为使模型具有强大的特征可辨别性。通过多任务学习,该模型可以完全挖掘疾病之间的关联信息并获得更准确的诊断结果。此外,我们提出了一种动态的加权损失功能,以更好地量化损失以克服类之间的不平衡。结果:基于超过170,000个临床12引出的ECG分析,MTGBI-LSTM方法实现了精度,精度,召回和F1,共88.86; 90.67;,94.19;和92.39;分别。实验结果表明,所提出的MTGBI-LSTM方法可以可靠地实现心电图分析,并为CVD的计算机辅助诊断提供有效的工具。

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  • 作者单位

    Sun Yat Sen Univ Sch Intelligent Syst Engn Artificial Intelligence Med Ctr Shenzhen 510275 Peoples R China;

    Sun Yat Sen Univ Sch Intelligent Syst Engn Artificial Intelligence Med Ctr Shenzhen 510275 Peoples R China;

    Sun Yat Sen Univ Sch Intelligent Syst Engn Artificial Intelligence Med Ctr Shenzhen 510275 Peoples R China;

    Zhengzhou Univ Sch Software & Appl Technol Zhengzhou 450002 Peoples R China;

    Zhengzhou Univ Sch Software & Appl Technol Zhengzhou 450002 Peoples R China;

    Zhengzhou Univ Sch Software & Appl Technol Zhengzhou 450002 Peoples R China;

    Zhengzhou Univ Sch Software & Appl Technol Zhengzhou 450002 Peoples R China;

    Sun Yat Sen Univ Sch Intelligent Syst Engn Artificial Intelligence Med Ctr Shenzhen 510275 Peoples R China|China Med Univ Hosp Dept Med Res Taichung 40447 Taiwan|Asia Univ Dept Bioinformat & Med Engn Taichung 41354 Taiwan;

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  • 正文语种 eng
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  • 关键词

    ECG; bidirectional long short-term memory network; attention mechanism; multi-task learning;

    机译:ECG;双向长期短期记忆网络;注意机制;多任务学习;

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