Atwa Ahmed E Mansour, Atlam El-Sayed, Ahmed Ali, Atwa Mohamed Ahmed, Abdelrahim Elsaid Md, Siam Ali I
Electronics and Communication Department, College of Engineering and Computer Science, Mustaqbal University, Buraydah 51411, Saudi Arabia.
Department of Computer Science, College of Computer Science and Engineering, Taibah University, Yanbu 966144, Saudi Arabia.
Diagnostics (Basel). 2025 Aug 4;15(15):1950. doi: 10.3390/diagnostics15151950.
Automatic classification of ECG signal arrhythmias plays a vital role in early cardiovascular diagnostics by enabling prompt detection of life-threatening conditions. Manual ECG interpretation is labor-intensive and susceptible to errors, highlighting the demand for automated, scalable approaches. Deep learning (DL) methods are effective in ECG analysis due to their ability to learn complex patterns from raw signals. : This study introduces two models: a custom convolutional neural network (CNN) with a dual-branch architecture for processing ECG signals and demographic data (e.g., age, gender), and a modified VGG16 model adapted for multi-branch input. Using the PTB-XL dataset, a widely adopted large-scale ECG database with over 20,000 recordings, the models were evaluated on binary, multiclass, and subclass classification tasks across 2, 5, 10, and 15 disease categories. Advanced preprocessing techniques, combined with demographic features, significantly enhanced performance. : The CNN model achieved up to 97.78% accuracy in binary classification and 79.7% in multiclass tasks, outperforming the VGG16 model (97.38% and 76.53%, respectively) and state-of-the-art benchmarks like CNN-LSTM and CNN entropy features. This study also emphasizes interpretability, providing lead-specific insights into ECG contributions to promote clinical transparency. : These results confirm the models' potential for accurate, explainable arrhythmia detection and their applicability in real-world healthcare diagnostics.
心电图信号心律失常的自动分类在早期心血管诊断中起着至关重要的作用,它能够及时检测出危及生命的状况。人工解读心电图劳动强度大且容易出错,这凸显了对自动化、可扩展方法的需求。深度学习(DL)方法在心电图分析中很有效,因为它们能够从原始信号中学习复杂模式。:本研究引入了两种模型:一种具有双分支架构的定制卷积神经网络(CNN),用于处理心电图信号和人口统计学数据(如年龄、性别),以及一种适用于多分支输入的改进型VGG16模型。使用PTB-XL数据集(一个广泛采用的大规模心电图数据库,有超过20000条记录),对这些模型在2、5、10和15种疾病类别的二分类、多分类和子分类任务上进行了评估。先进的预处理技术与人口统计学特征相结合,显著提高了性能。:CNN模型在二分类中达到了高达97.78%的准确率,在多分类任务中达到了79.7%,优于VGG16模型(分别为97.38%和76.53%)以及诸如CNN-LSTM和CNN熵特征等当前最先进的基准。本研究还强调了可解释性,提供了针对导联的见解,以深入了解心电图的作用,从而提高临床透明度。:这些结果证实了这些模型在准确、可解释的心律失常检测方面的潜力及其在实际医疗诊断中的适用性。