联邦医学成像中基于自适应中介的客户级差异隐私

Meirui Jiang, Yuan Zhong, Anjie Le, Xiaoxiao Li, Qianming Dou
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引用次数: 0

摘要

尽管最近在通过差分隐私(DP)增强联邦学习(FL)的隐私方面取得了进展,但在现实医疗场景中,差分隐私保护与性能之间的权衡仍然没有得到充分的探讨。在本文中,我们提出在客户端级DP环境下优化权衡,该环境关注通信过程中的隐私。然而,医学成像的FL涉及的参与者(医院)通常比其他领域(例如,移动设备)少得多,因此确保客户与众不同的隐私更具挑战性。为了解决这个问题,我们提出了一种自适应中介策略,在不损害隐私的情况下提高性能。具体来说,我们在理论上发现将客户端划分为子客户端,这些子客户端充当医院和服务器之间的中介,可以在不损害隐私的情况下减轻DP引入的噪声。我们提出的方法使用两个公共数据集对分类和分割任务进行了实证评估,并通过显着的性能改进和全面的分析研究证明了其有效性。代码可从https://github.com/med-air/Client-DP-FL获得。
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Client-Level Differential Privacy via Adaptive Intermediary in Federated Medical Imaging
Despite recent progress in enhancing the privacy of federated learning (FL) via differential privacy (DP), the trade-off of DP between privacy protection and performance is still underexplored for real-world medical scenario. In this paper, we propose to optimize the trade-off under the context of client-level DP, which focuses on privacy during communications. However, FL for medical imaging involves typically much fewer participants (hospitals) than other domains (e.g., mobile devices), thus ensuring clients be differentially private is much more challenging. To tackle this problem, we propose an adaptive intermediary strategy to improve performance without harming privacy. Specifically, we theoretically find splitting clients into sub-clients, which serve as intermediaries between hospitals and the server, can mitigate the noises introduced by DP without harming privacy. Our proposed approach is empirically evaluated on both classification and segmentation tasks using two public datasets, and its effectiveness is demonstrated with significant performance improvements and comprehensive analytical studies. Code is available at: https://github.com/med-air/Client-DP-FL.
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