[基于持续学习的心脏健康与心理健康联合分析]。

Q4 Medicine
Hongxiang Gao, Zhipeng Cai, Jianqing Li, Chengyu Liu
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引用次数: 0

摘要

心血管疾病和心理障碍是人类身心健康的两大威胁。对心电图信号的研究为解决这些问题提供了宝贵的机会。然而,现有的方法在理解ECG特征和跨任务传递知识方面存在局限性。针对这些挑战,本研究开发了一种基于残差网络的多分辨率特征编码网络,有效提取心电信号的局部形态特征和全局节律特征,从而增强特征表征。在此基础上,提出了一种基于模型压缩的持续学习方法,实现了知识从简单任务到复杂任务的结构化迁移,从而提高了下游任务的性能。该多分辨率学习模型在5个数据集上表现出优于或与最先进的算法相当的性能,包括ECG QRS复杂检测、心律失常分类和情绪分类等任务。持续学习方法在跨领域、跨任务和增量数据场景下比传统训练方法取得了显著的改进。这些结果突出了该方法在心电分析中有效的跨任务知识转移的潜力,并为利用心电信号进行多任务学习提供了新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[The joint analysis of heart health and mental health based on continual learning].

Cardiovascular diseases and psychological disorders represent two major threats to human physical and mental health. Research on electrocardiogram (ECG) signals offers valuable opportunities to address these issues. However, existing methods are constrained by limitations in understanding ECG features and transferring knowledge across tasks. To address these challenges, this study developed a multi-resolution feature encoding network based on residual networks, which effectively extracted local morphological features and global rhythm features of ECG signals, thereby enhancing feature representation. Furthermore, a model compression-based continual learning method was proposed, enabling the structured transfer of knowledge from simpler tasks to more complex ones, resulting in improved performance in downstream tasks. The multi-resolution learning model demonstrated superior or comparable performance to state-of-the-art algorithms across five datasets, including tasks such as ECG QRS complex detection, arrhythmia classification, and emotion classification. The continual learning method achieved significant improvements over conventional training approaches in cross-domain, cross-task, and incremental data scenarios. These results highlight the potential of the proposed method for effective cross-task knowledge transfer in ECG analysis and offer a new perspective for multi-task learning using ECG signals.

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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
自引率
0.00%
发文量
4868
期刊介绍:
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