Almogadwy Bassam, Alqarafi Abdulrahman
College of Computer Science and Engineering, Taibah University, 42353, Medina, Saudi Arabia.
Sci Rep. 2025 Jul 7;15(1):24263. doi: 10.1038/s41598-025-06574-w.
Federated Learning (FL) enables artificial intelligence frameworks to train on private information without compromising privacy, which is especially useful in the medical and healthcare industries where the knowledge or data at hand is never enough. It paved the way for a substantial amount of study because of the high degree of communication efficacy it possessed, which is connected to dispersed training issues. The major goal of this paper is to shed light on how FL approaches might be adapted and put to use in several aspects of healthcare, including medicine discovery, medical assessment, digital health management, and the forecasting and identification of disease. This article presents a comprehensive and in-depth study of the data about fused federated learning in healthcare version 5.0. The purpose of this research is to develop a Healthcare 5.0 monitoring system by utilizing a fused federated learning approach integrated with RTS-DELM. It gives medical practitioners the ability to monitor patients through the use of various medical sensors and to take remedial action at regular intervals. The approach is shown to be successfully improved by the use of the recommended system, which is intended for healthcare monitoring. This paper introduces a novel framework leveraging Fused Federated Learning (FFL) integrated with IoMT devices aimed at securely monitoring patient health data in a decentralized manner. This study introduces a novel integration of Real-Time Sequential Deep Extreme Learning Machine (RTS-DELM) and Fused Federated Learning (FFL) for secure and decentralized chronic kidney disease diagnosis within Healthcare 5.0. The proposed approach efficiently aggregates data from distributed Internet of Medical Things (IoMT) devices, enhancing predictive accuracy while maintaining patient privacy. Experimental validation demonstrates significant improvements, achieving an accuracy rate of 98.21%, thereby showcasing superior performance over existing federated learning methodologies.
联邦学习(FL)使人工智能框架能够在不损害隐私的情况下对私有信息进行训练,这在医学和医疗保健行业中尤为有用,因为在这些行业中,手头的知识或数据总是不够的。由于其具有高度的通信效率,这与分散训练问题相关联,它为大量的研究铺平了道路。本文的主要目标是阐明如何将联邦学习方法应用于医疗保健的多个方面,包括药物发现、医学评估、数字健康管理以及疾病的预测和识别。本文对医疗保健5.0版本中融合联邦学习的数据进行了全面深入的研究。本研究的目的是通过利用与RTS-DELM集成的融合联邦学习方法来开发一个医疗保健5.0监测系统。它使医疗从业者能够通过使用各种医疗传感器来监测患者,并定期采取补救措施。通过使用旨在用于医疗保健监测的推荐系统,该方法被证明成功得到了改进。本文介绍了一种新颖的框架,该框架利用与物联网设备集成的融合联邦学习(FFL),旨在以分散的方式安全地监测患者健康数据。本研究引入了实时序列深度极限学习机(RTS-DELM)和融合联邦学习(FFL)的新颖集成,用于在医疗保健5.0中进行安全且分散的慢性肾脏病诊断。所提出的方法有效地聚合了来自分布式医疗物联网(IoMT)设备的数据,在保持患者隐私的同时提高了预测准确性。实验验证表明有显著改进,准确率达到98.21%,从而展示了优于现有联邦学习方法的卓越性能。