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通过自适应心拍分段和相对心率与深度学习网络的集成进行 ECG 分类。

ECG classification via integration of adaptive beat segmentation and relative heart rate with deep learning networks.

机构信息

Department of Biomedical Engineering, University of Connecticut, Storrs, 06269, CT, USA.

Department of Biomedical Engineering, University of Connecticut, Storrs, 06269, CT, USA.

出版信息

Comput Biol Med. 2024 Oct;181:109062. doi: 10.1016/j.compbiomed.2024.109062. Epub 2024 Aug 27.

DOI:10.1016/j.compbiomed.2024.109062
PMID:39205344
Abstract

We propose a state-of-the-art deep learning approach for accurate electrocardiogram (ECG) signal analysis, addressing both waveform delineation and beat type classification tasks. For beat type classification, we integrated two novel schemes into the deep learning model, significantly enhancing its performance. The first scheme is an adaptive beat segmentation method that determines the optimal duration for each heartbeat based on RR-intervals, mitigating segmenting errors from conventional fixed-period segmentation. The second scheme incorporates relative heart rate information of the target beat compared to neighboring beats, improving the model's ability to accurately detect premature atrial contractions (PACs) that are easily confused with normal beats due to similar morphology. Extensive evaluations on the PhysioNet QT Database, MIT-BIH Arrhythmia Database, and real-world wearable device data demonstrated the proposed approach's superior capabilities over existing methods in both tasks. The proposed approach achieved sensitivities of 99.81% for normal beats, 99.08% for premature ventricular contractions, and 97.83% for PACs in beat type classification. For waveform delineation, we achieved F1-scores of 0.9842 for non-waveform, 0.9798 for P-waves, 0.9749 for QRS complexes, and 0.9848 for T-waves. It significantly outperforms existing methods in PAC detection while maintaining high performance across both tasks. The integration of aforementioned two schemes into the deep learning model improved the accuracy of normal sinus rhythms and arrhythmia detection.

摘要

我们提出了一种先进的深度学习方法,用于精确的心电图(ECG)信号分析,涵盖了波形描绘和心拍类型分类任务。对于心拍类型分类,我们将两个新颖的方案集成到深度学习模型中,显著提高了其性能。第一个方案是自适应心拍分段方法,根据 RR 间隔确定每个心拍的最佳持续时间,减轻了传统固定周期分段的分段错误。第二个方案结合了目标心拍与相邻心拍的相对心率信息,提高了模型准确检测房性早搏(PACs)的能力,这些 PACs由于形态相似,容易与正常心拍混淆。在 PhysioNet QT 数据库、MIT-BIH 心律失常数据库和真实可穿戴设备数据上的广泛评估表明,与现有方法相比,所提出的方法在两个任务中都具有优越的性能。所提出的方法在心拍类型分类中实现了正常心拍的敏感性为 99.81%,室性早搏的敏感性为 99.08%,PAC 的敏感性为 97.83%。对于波形描绘,我们在非波形、P 波、QRS 综合波和 T 波方面分别实现了 0.9842、0.9798、0.9749 和 0.9848 的 F1 分数。它在 PAC 检测方面显著优于现有方法,同时在两个任务中都保持了高性能。将上述两个方案集成到深度学习模型中提高了正常窦性节律和心律失常检测的准确性。

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