School of Electronics Engineering (SENSE), Vellore Institute of Technology, Chennai, Tamil Nadu, India.
Department of ECE, Saveetha School of Engineering, Saveetha Institute of Medical and Technical Sciences, Saveetha University, Chennai, 602105, India.
Sci Rep. 2024 Sep 27;14(1):22354. doi: 10.1038/s41598-024-73334-7.
Expert system recommendation assists the healthcare system to develop in real-time monitoring and diagnosis of patient conditions over several healthcare institutions. Privacy concerns, however, present significant problems since patient data leaks can lead to big effects including financial losses for hospitals and invasions of personal privacy for people. To address these issues, the research introduces a privacy-preserving collaborative medical diagnosis (CMD) method on a federated learning (FL). FL maintains patient privacy and data localization by spreading only model parameters, therefore enabling training models on remote datasets. The combination of Partially Homomorphic Cryptosystem (PHC) and Residual Learning based Deep Belief Network (RDBN) ensures an accurate and safe classification of patient physiological data. Experimental results show that the proposed method is successful in maintaining the diagnostic accuracy over numerous healthcare institutions and protecting privacy. The results show that the RDBN and PHC computations requires around 1000 ms and 150 ms, respectively for classification and privacy; the data transmission from the user to server and from server to user is 5 MB and 4 MB, respectively. Finally with a 30% reduction in overhead, the proposed approach offers an average increase in classification accuracy of 10% over multiple datasets.
专家系统推荐有助于医疗系统实时监测和诊断多个医疗机构的患者病情。然而,隐私问题是一个重大挑战,因为患者数据泄露可能会导致严重后果,包括医院的经济损失和个人隐私的侵犯。为了解决这些问题,本研究提出了一种基于联邦学习(FL)的隐私保护协同医疗诊断(CMD)方法。FL 通过仅传播模型参数来维护患者隐私和数据本地化,从而能够在远程数据集上训练模型。部分同态加密系统(PHC)和基于残差学习的深度置信网络(RDBN)的结合确保了患者生理数据的准确和安全分类。实验结果表明,该方法在多个医疗机构中成功地保持了诊断准确性,并保护了隐私。结果表明,RDBN 和 PHC 的计算分别需要大约 1000 毫秒和 150 毫秒用于分类和隐私;用户到服务器和服务器到用户的数据传输分别为 5MB 和 4MB。最后,通过减少 30%的开销,该方法在多个数据集上平均提高了 10%的分类准确性。