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首页> 外文期刊>Internet of Things Journal, IEEE >A Resource-Constrained and Privacy-Preserving Edge-Computing-Enabled Clinical Decision System: A Federated Reinforcement Learning Approach
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A Resource-Constrained and Privacy-Preserving Edge-Computing-Enabled Clinical Decision System: A Federated Reinforcement Learning Approach

机译:支持资源受限和隐私保留的边缘计算的临床决策系统:联合加强学习方法

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摘要

Internet-of-Things-enabled E-health system, which could monitor and collect the personal health information (PHI), has gradually transformed the clinical treatment to a more personalized way with in-home monitoring smart devices. Then, with the collected PHI, clinical decision support systems (CDSSs), which are based on data mining techniques and historical electronic medical records (EMRs) to help clinicians make proper treatment decisions, have attracted considerable attention. To address issues, such as network congestion and low rate of responsiveness for traditional methods when implementing CDSSs, we integrate the technologies mobile-edge computing (MEC) and software-defined networking for exploiting the computation resources and storage capacities among edge nodes (ENs) (i.e., MEC servers) in our model. Based on this integrated system, each edge node will deploy a double deep Q-network (DDQN) to obtain a stable and sequential clinical treatment policy. It is enabled by a novel fully decentralized federated framework (FDFF) for aggregating models of DDQN and extracting the knowledge from EMRs across all ENs. Furthermore, we discuss the convergence of FDFF in resource-constrained environments. However, since most EMRs are faced with stringent privacy concerns, we adopt two additively homomorphic encryption schemes to prevent leakage of EMRs' privacy during the training process of FDFF. Finally, we measure the time cost of our additively homomorphic encryption schemes and validate DDQN with experiments on large data sets based on FDFF, which shows promising performance on clinician treatment.
机译:互联网的启用事情-E-卫生系统,它可以监测和收集的个人健康信息(PHI),已逐渐转化与家用监视智能设备的临床治疗,以更加个性化的方式。然后,将收集的PHI,临床决策支持系统(CDSSs),这是基于数据挖掘技术和历史的电子医疗记录(EMR的),以帮助医生作出正确的处理决定,引起了极大的关注。来解决问题,比如网络拥塞和实施CDSSs时响应的传统方法率低,我们整合了技术的移动边缘计算(MEC)和软件定义的边缘节点之间利用计算资源和存储能力,网络(ENS) (即MEC服务器)在我们的模型。根据本集成系统上,每个边缘节点将部署一个双深Q-网络(DDQN)以获得稳定的和连续的临床治疗策略。它是由一种新型的完全分散联合框架(FDFF)用于聚集DDQN的模型,并从所有的EN电子病历提取知识启用。此外,我们讨论FDFF在资源有限的环境融合。然而,由于大多数电子病历都面临着严格的隐私问题,我们采用两种加法同态加密方案,以防止在FDFF的训练过程中的电子病历的隐私泄露。最后,我们衡量我们的加法同态加密方案的时间成本和验证DDQN基于FDFF大型数据集上的实验,这表明在临床医生的治疗有前途的性能。

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