智能医疗的边缘智能协同隐私保护解决方案

Jinshan Lai , Xiaotong Song , Ruijin Wang , Xiong Li
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引用次数: 3

摘要

在大数据时代,有能力的医疗已经进入人们的生活。然而,现有的智能诊断模型准确性低,通用性差。同时,在健康监测和辅助诊断过程中存在隐私泄露的风险。本文将边缘计算和联合学习相结合,提出了一种用于智能医疗的边缘智能协同隐私保护解决方案(EICPP),以确保模型的准确性并保护患者隐私。首先,我们提供了一个名为KubeFL的轻量级边缘智能协作联合学习框架,以支持健康监测和辅助诊断;其次,我们设计了一个基于设备边缘云分层的联合学习训练模型,完全准确率高达95.8%;最后,提出了一种用于边缘云模型传输的差分隐私算法,该算法可以用较低的精度损失换取可靠的隐私保护。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Edge intelligent collaborative privacy protection solution for smart medical

In the era of big data, competent medical care has entered people’s lives. However, the existing intelligent diagnosis models have low accuracy and poor universality. At the same time, there is a risk of privacy leakage in the process of health monitoring and auxiliary diagnosis. This paper combines edge computing and federated learning ensure model accuracy and protect patient privacy by proposing an Edge intelligent collaborative privacy protection solution for smart medical (EICPP). First, we offer a lightweight edge intellectual collaborative federated learning framework named KubeFL to support health monitoring and auxiliary diagnosis; secondly, we design a federated learning training model based on device-edge-cloud layering, with complete accuracy of up to 95.8%; Finally, a differential privacy algorithm for edge-cloud model transmission is proposed, which can exchange a lower accuracy loss for solid privacy protection.

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