Cyber Physical System Based Smart Healthcare System with Federated Deep Learning Architectures with Data Analytics

Dadang Hermawan, Ni Made Dewi Kansa Putri, Lucky Kartanto
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Abstract

Data shared between hospitals and patients using mobile and wearable Internet of Medical Things (IoMT) devices raises privacy concerns due to the methods used in training. the development of the Internet of Medical Things (IoMT) and related technologies and the most current advances in these areas The Internet of Medical Things and other recent technological advancements have transformed the traditional healthcare system into a smart one. improvement in computing power and the spread of information have transformed the healthcare system into a high-tech, data-driven operation. On the other hand, mobile and wearable IoMT devices present privacy concerns regarding the data transmitted between hospitals and end users because of the way in which artificial intelligence is trained (AI-centralized). In terms of machine learning (AI-centralized). Devices connected to the IoMT network transmit highly confidential information that could be intercepted by adversaries. Due to the portability of electronic health record data for clinical research made possible by medical cyber-physical systems, the rate at which new scientific discoveries can be made has increased. While AI helps improve medical informatics, the current methods of centralised data training and insecure data storage management risk exposing private medical information to unapproved foreign organisations. New avenues for protecting users' privacy in IoMT without requiring access to their data have been opened by the federated learning (FL) distributive AI paradigm. FL safeguards user privacy by concealing all but gradients during training. DeepFed is a novel Federated Deep Learning approach presented in this research for the purpose of detecting cyber threats to intelligent healthcare CPSs.
基于网络物理系统的智能医疗保健系统,具有数据分析的联邦深度学习架构
医院和患者之间使用移动和可穿戴医疗物联网(IoMT)设备共享的数据由于培训中使用的方法引起了隐私问题。医疗物联网(IoMT)和相关技术的发展以及这些领域的最新进展医疗物联网和其他最近的技术进步已经将传统的医疗保健系统转变为智能医疗系统。计算能力的提高和信息的传播已经将医疗保健系统转变为高科技、数据驱动的操作。另一方面,由于人工智能的训练方式(以人工智能为中心),移动和可穿戴物联网设备在医院和最终用户之间传输的数据存在隐私问题。在机器学习方面(以ai为中心)。连接到IoMT网络的设备传输高度机密的信息,这些信息可能被对手拦截。由于医疗信息物理系统使临床研究的电子健康记录数据的可移植性成为可能,新的科学发现的速度可以增加。虽然人工智能有助于改善医疗信息学,但目前的集中数据培训方法和不安全的数据存储管理有可能将私人医疗信息暴露给未经批准的外国组织。联邦学习(FL)分布式人工智能范式为在IoMT中保护用户隐私而不需要访问他们的数据开辟了新的途径。FL通过隐藏训练期间的梯度来保护用户隐私。DeepFed是本研究中提出的一种新颖的联邦深度学习方法,用于检测智能医疗保健cps的网络威胁。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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