Lin Chun-Cheng, Yeh Cheng-Yu, Lin Jian-Hong
Department of Electrical Engineering, National Chin-Yi University of Technology, Taichung, Taiwan.
Med Biol Eng Comput. 2025 Jul 19. doi: 10.1007/s11517-025-03416-9.
Long-term ECG monitoring is crucial for detecting asymptomatic or intermittent myocardial ischemia, as it mitigates irreversible cardiac damage and prevents disease progression. Myocardial ischemia appears on ECG as transient ST-segment level and morphology alterations, known as ischemic ST change events (ISE). However, automatically identifying ISE based on ECG signals is challenging, as its recognition is highly susceptible to interference from non-ischemic ST change events, including heart rate-related ST change events (HRE), axis shift events (ASE), and conduction change events (CCE). To address this challenge, this study proposes ISENet, a lightweight deep learning-based neural network for ISE detection. The model was trained and evaluated using ECG signals and annotations from the PhysioNet long-term ST database, with tenfold cross-validation to ensure robustness and generalizability. Experimental results show that ISENet achieves an average ISE detection accuracy of 83.5%, surpassing benchmark models like VGG19 and ResNet50 while significantly reducing model complexity. This study is the first to apply a deep learning-based neural network for ISE detection using ECG signals from the long-term ST database. Compared to previous feature-engineering and feature-learning approaches, ISENet addresses key limitations in experimental design and methodology, representing a significant advancement in automated myocardial ischemia detection.
长期心电图监测对于检测无症状或间歇性心肌缺血至关重要,因为它可以减轻不可逆的心脏损伤并防止疾病进展。心肌缺血在心电图上表现为短暂的ST段水平和形态改变,称为缺血性ST改变事件(ISE)。然而,基于心电图信号自动识别ISE具有挑战性,因为其识别极易受到非缺血性ST改变事件的干扰,包括心率相关ST改变事件(HRE)、轴偏移事件(ASE)和传导改变事件(CCE)。为应对这一挑战,本研究提出了ISENet,一种基于深度学习的轻量级神经网络用于ISE检测。该模型使用来自PhysioNet长期ST数据库的心电图信号和注释进行训练和评估,并采用十折交叉验证以确保稳健性和通用性。实验结果表明,ISENet的平均ISE检测准确率达到83.5%,超过了VGG19和ResNet50等基准模型,同时显著降低了模型复杂度。本研究首次将基于深度学习的神经网络应用于使用长期ST数据库中的心电图信号进行ISE检测。与先前的特征工程和特征学习方法相比,ISENet解决了实验设计和方法中的关键局限性,代表了自动心肌缺血检测的重大进展。