Bokhari Syed Mohsin, Sohaib Sarmad, Shafi Muhammad
Department of Electrical and Computer Engineering, University of Engineering and Technology, Taxila, Pakistan.
Department of Electrical and Electronic Engineering, University of Jeddah, Jeddah, Saudi Arabia.
PLoS One. 2025 Jul 11;20(7):e0327108. doi: 10.1371/journal.pone.0327108. eCollection 2025.
This paper presents a novel privacy-preserving architecture, a fusion of Federated Learning with Personalized Models and Differential Privacy (FLPMDP), for diagnosing arrhythmia from 12-lead electrocardiogram (ECG) signals. The architecture supports collaborative training in decentralized healthcare institutions without exposing sensitive patient information. By employing gated recurrent units (GRUs) for temporal sequence modeling along with feature fusion techniques and local differential privacy enforcement, FLPMDP ensures robust classification performance with data confidentiality. The architecture is evaluated on four experimental setups and demonstrates significant performance gain over centralized and federated baseline models. An empirical experiment on a large ECG dataset of 10,646 recordings indicates that the FLPMDP approach achieves an average accuracy of 93.71%. The FLPMDP approach yields F1-scores of 0.98, 0.93, 0.88, and 0.89 for sinus bradycardia (SB), atrial fibrillation (AFIB), supraventricular tachycardia (GSVT), and sinus rhythm (SR), respectively. Additionally, FLPMDP recorded a specificity up to 0.98, with a Kappa score of 0.8971 and a Matthews Correlation Coefficient of 0.9042, indicating high diagnostic accuracy and model strength. Comparative analysis against state-of-the-art methods-such as CNN, ResNet, and attention-based RNNs-indicate that FLPMDP consistently outperforms current models in accuracy, sensitivity, and robustness when facing non-IID data conditions. In the context of this research, federated learning is highly pertinent to modern healthcare, enabling secure and collaborative model training across institutions while complying with data privacy. The proposed FLPMDP framework offers a scalable and privacy-compliant solution for real-time arrhythmia detection, marking a step forward in deploying trustworthy artificial intelligence for decentralized medical diagnostics.
本文提出了一种新颖的隐私保护架构,即联合学习与个性化模型及差分隐私的融合(FLPMDP),用于从12导联心电图(ECG)信号中诊断心律失常。该架构支持在分散的医疗机构中进行协作训练,而不会暴露患者的敏感信息。通过使用门控循环单元(GRU)进行时间序列建模,结合特征融合技术和局部差分隐私实施,FLPMDP在保证数据保密性的同时确保了强大的分类性能。该架构在四种实验设置上进行了评估,并显示出相对于集中式和联合基线模型有显著的性能提升。在一个包含10646条记录的大型ECG数据集上进行的实证实验表明,FLPMDP方法的平均准确率达到了93.71%。对于窦性心动过缓(SB)、心房颤动(AFIB)、室上性心动过速(GSVT)和窦性心律(SR),FLPMDP方法的F1分数分别为0.98、0.93、0.88和0.89。此外,FLPMDP的特异性高达0.98,卡帕分数为0.8971,马修斯相关系数为0.9042,表明具有较高的诊断准确性和模型强度。与诸如卷积神经网络(CNN)、残差网络(ResNet)和基于注意力的循环神经网络(RNN)等现有方法的对比分析表明——在面对非独立同分布(non-IID)数据条件时,FLPMDP在准确性、敏感性和鲁棒性方面始终优于当前模型。在本研究的背景下,联合学习与现代医疗高度相关,能够在符合数据隐私的情况下跨机构进行安全的协作模型训练。所提出的FLPMDP框架为实时心律失常检测提供了一种可扩展且符合隐私规定的解决方案,标志着在为分散式医学诊断部署可靠人工智能方面向前迈进了一步。