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一种使用来自心电图(ECG)和光电容积脉搏波描记图(PPG)的多特征时间序列数据进行心房颤动分类的深度学习方法。

A Deep Learning Approach for Atrial Fibrillation Classification Using Multi-Feature Time Series Data from ECG and PPG.

作者信息

Aldughayfiq Bader, Ashfaq Farzeen, Jhanjhi N Z, Humayun Mamoona

机构信息

Department of Information Systems, College of Computer and Information Sciences, Jouf University, Sakaka 72388, Saudi Arabia.

School of Computer Science, SCS, Taylor's University, Subang Jaya 47500, Malaysia.

出版信息

Diagnostics (Basel). 2023 Jul 21;13(14):2442. doi: 10.3390/diagnostics13142442.

Abstract

Atrial fibrillation is a prevalent cardiac arrhythmia that poses significant health risks to patients. The use of non-invasive methods for AF detection, such as Electrocardiogram and Photoplethysmogram, has gained attention due to their accessibility and ease of use. However, there are challenges associated with ECG-based AF detection, and the significance of PPG signals in this context has been increasingly recognized. The limitations of ECG and the untapped potential of PPG are taken into account as this work attempts to classify AF and non-AF using PPG time series data and deep learning. In this work, we emploted a hybrid deep neural network comprising of 1D CNN and BiLSTM for the task of AF classification. We addressed the under-researched area of applying deep learning methods to transmissive PPG signals by proposing a novel approach. Our approach involved integrating ECG and PPG signals as multi-featured time series data and training deep learning models for AF classification. Our hybrid 1D CNN and BiLSTM model achieved an accuracy of 95% on test data in identifying atrial fibrillation, showcasing its strong performance and reliable predictive capabilities. Furthermore, we evaluated the performance of our model using additional metrics. The precision of our classification model was measured at 0.88, indicating its ability to accurately identify true positive cases of AF. The recall, or sensitivity, was measured at 0.85, illustrating the model's capacity to detect a high proportion of actual AF cases. Additionally, the F1 score, which combines both precision and recall, was calculated at 0.84, highlighting the overall effectiveness of our model in classifying AF and non-AF cases.

摘要

心房颤动是一种常见的心律失常,对患者构成重大健康风险。使用非侵入性方法检测房颤,如心电图和光电容积脉搏波描记图,因其可及性和易用性而受到关注。然而,基于心电图的房颤检测存在挑战,在此背景下,光电容积脉搏波信号的重要性日益得到认可。本研究尝试利用光电容积脉搏波时间序列数据和深度学习对房颤和非房颤进行分类,考虑到了心电图的局限性和光电容积脉搏波未被挖掘的潜力。在这项工作中,我们构建了一个由一维卷积神经网络和双向长短期记忆网络组成的混合深度神经网络,用于房颤分类任务。我们通过提出一种新方法,解决了将深度学习方法应用于透射式光电容积脉搏波信号这一研究不足的领域。我们的方法包括将心电图和光电容积脉搏波信号整合为多特征时间序列数据,并训练用于房颤分类的深度学习模型。我们的混合一维卷积神经网络和双向长短期记忆网络模型在测试数据上识别房颤的准确率达到了95%,展示了其强大的性能和可靠的预测能力。此外,我们使用其他指标评估了模型的性能。我们分类模型的精确率为0.88,表明其能够准确识别房颤的真阳性病例。召回率(即敏感度)为0.85,说明该模型能够检测出高比例的实际房颤病例。此外,结合精确率和召回率的F1分数计算得出为0.84,突出了我们的模型在分类房颤和非房颤病例方面的整体有效性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e9eb/10377944/677bf07e3155/diagnostics-13-02442-g0A1.jpg

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