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Semi-supervised learning for ECG classification without patient-specific labeled data

机译:半监督ECG分类学习,没有患者特定的标记数据

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In this paper, we propose a semi-supervised learning-based ECG classification system for detection of supraventricular ectopic beats (SVEB or S beats) and ventricular ectopic beats (VEB or V beats) which does not require manual labeling of the patient-specific ECG data. Owing to inter-subject variability in ECG signal, patient-specific data is usually required to achieve good performance in ECG classification system. However, manual labeling of patient-specific data requires expert intervention, which is costly and time consuming. Our proposed system is based on a 2D convolutional neural network (CNN) with inputs generated from heartbeat triplets. The system also consists of two auxiliary modules: a normal beat estimation module and an iterative beat label update algorithm. The normal beat estimation selects a small amount of patient-specific normal beats accurately from the testing ECG record in an unsupervised manner. These estimated normal beats are used, together with a common pool dataset, to train a preliminary patient-specific CNN classifier which provides initial labels for the testing data. These labels then undergo a semi-supervised iterative update process for improved performance. Our proposed system was evaluated on the MIT-BIH arrhythmia database. The training of our proposed system is fully automatic, and its performance is comparable with several state-of-art supervised methods which require extra manual labeling of patient-specific ECG data. Our proposed system can be a useful tool for batch processing a large amount of ECG data in clinical applications. (C) 2020 Elsevier Ltd. All rights reserved.
机译:在本文中,我们提出了一种半监督的基于学习的ECG分类系统,用于检测Supraventriculary opecic Beats(SVeb或S搏动)和心室异位节拍(VEB或V BEET),其不需要手动标记患者特定的ECG数据。由于ECG信号中的互受对象可变性,通常需要特定于患者的数据来实现ECG分类系统的良好性能。但是,手动标记患者特定的数据需要专家干预,这是昂贵且耗时的。我们所提出的系统基于2D卷积神经网络(CNN),其中来自心跳三联体产生的输入。该系统还包括两个辅助模块:正常节拍估计模块和迭代节拍标签更新算法。正常节拍估计以无监督的方式从测试ECG记录中精确地选择少量患者特定的正常节拍。这些估计的正常节拍与公共池数据集一起使用,以训练初步患者特定的CNN分类器,该分类为测试数据提供初始标签。然后,这些标签进行半监督的迭代更新过程,以提高性能。我们的提出系统在MIT-BIH心律失常数据库上进行了评估。我们提出的系统的培训是全自动的,其性能与几种最先进的监督方法相当,需要额外的手动标记患者特定的ECG数据。我们所提出的系统可以是批量处理临床应用中大量ECG数据的有用工具。 (c)2020 elestvier有限公司保留所有权利。

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