[用两级卷积神经网络训练基于有限心电图数据的心脏骤停早期分类和识别算法]。

Xingzeng Cha, Yue Zhang, Yifei Zhang, Ye Su, Dakun Lai
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引用次数: 0

摘要

心脏骤停(SCA)是一种致命的心律失常,对人类的生命和健康构成严重威胁。然而,心脏性猝死(SCD)的临床记录心电图(ECG)数据极为有限。本文提出了一种基于深度迁移学习的 SCA 早期预测和分类算法。该算法利用有限的心电图数据,在 SCA 发病前提取心率变异性特征,并利用轻量级卷积神经网络模型进行预训练和微调,分两个阶段进行深度迁移学习。这实现了神经网络模型对 SCA 高风险心电信号的早期分类、识别和预测。基于国际公开心电图数据库中20名SCA患者和18名窦性心律患者的16 788个30秒心率特征片段,通过十倍交叉验证进行算法性能评估,结果表明预测事件前30分钟内SCA发病的平均准确率(Acc)、灵敏度(Sen)和特异性(Spe)分别为91.79%、87.00%和96.63%。不同患者的平均估计准确率达到 96.58%。与现有文献报道的传统机器学习算法相比,本文提出的方法有助于解决深度学习模型对大量训练数据集的要求,并能在 SCA 发病前早期准确检测和识别高危心电图征象。
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[Early classification and recognition algorithm for sudden cardiac arrest based on limited electrocardiogram data trained with a two-stages convolutional neural network].

Sudden cardiac arrest (SCA) is a lethal cardiac arrhythmia that poses a serious threat to human life and health. However, clinical records of sudden cardiac death (SCD) electrocardiogram (ECG) data are extremely limited. This paper proposes an early prediction and classification algorithm for SCA based on deep transfer learning. With limited ECG data, it extracts heart rate variability features before the onset of SCA and utilizes a lightweight convolutional neural network model for pre-training and fine-tuning in two stages of deep transfer learning. This achieves early classification, recognition and prediction of high-risk ECG signals for SCA by neural network models. Based on 16 788 30-second heart rate feature segments from 20 SCA patients and 18 sinus rhythm patients in the international publicly available ECG database, the algorithm performance evaluation through ten-fold cross-validation shows that the average accuracy (Acc), sensitivity (Sen), and specificity (Spe) for predicting the onset of SCA in the 30 minutes prior to the event are 91.79%, 87.00%, and 96.63%, respectively. The average estimation accuracy for different patients reaches 96.58%. Compared to traditional machine learning algorithms reported in existing literatures, the method proposed in this paper helps address the requirement of large training datasets for deep learning models and enables early and accurate detection and identification of high-risk ECG signs before the onset of SCA.

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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
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0.00%
发文量
4868
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