Privacy-Preserving Maximum Matching on General Graphs and its Application to Enable Privacy-Preserving Kidney Exchange

Malte Breuer, Ulrike Meyer, S. Wetzel
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引用次数: 5

Abstract

To this day, there are still some countries where the exchange of kidneys between multiple incompatible patient-donor pairs is restricted by law. Typically, legal regulations in this context are put in place to prohibit coercion and manipulation in order to prevent a market for organ trade. Yet, in countries where kidney exchange is practiced, existing platforms to facilitate such exchanges generally lack sufficient privacy mechanisms. In this paper, we propose a privacy-preserving protocol for kidney exchange that not only addresses the privacy problem of existing platforms but also is geared to lead the way in overcoming legal issues in those countries where kidney exchange is still not practiced. In our approach, we use the concept of secret sharing to distribute the medical data of patients and donors among a set of computing peers in a privacy-preserving fashion. These computing peers then execute our new Secure Multi-Party Computation (SMPC) protocol among each other to determine an optimal set of kidney exchanges. As part of our new protocol, we devise a privacy-preserving solution to the maximum matching problem on general graphs. We have implemented the protocol in the SMPC benchmarking framework MP-SPDZ and provide a comprehensive performance evaluation. Furthermore, we analyze the practicality of our protocol when used in a dynamic setting where patients and donors arrive and depart over time) based on a data set from the United Network for Organ Sharing.
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一般图上的保隐私最大匹配及其在保隐私肾交换中的应用
直到今天,仍有一些国家在法律上限制多对不相容的患者-供体之间交换肾脏。通常情况下,这方面的法律规定是禁止强迫和操纵,以防止器官交易市场。然而,在实行肾脏交换的国家,促进这种交换的现有平台通常缺乏足够的隐私机制。在本文中,我们提出了一种用于肾脏交换的隐私保护协议,该协议不仅解决了现有平台的隐私问题,而且还旨在引领那些尚未实施肾脏交换的国家克服法律问题。在我们的方法中,我们使用秘密共享的概念,以保护隐私的方式在一组计算对等体之间分发患者和捐赠者的医疗数据。然后,这些计算节点在彼此之间执行我们新的安全多方计算(SMPC)协议,以确定一组最佳的肾脏交换。作为新协议的一部分,我们设计了一个保护隐私的解决方案来解决一般图的最大匹配问题。我们已经在SMPC基准测试框架MP-SPDZ中实现了该协议,并提供了全面的性能评估。此外,我们根据来自器官共享联合网络的数据集,分析了我们的协议在动态环境(患者和捐赠者随着时间的推移到达和离开)中使用时的实用性。
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Session details: Session 7: Encryption and Privacy RS-PKE: Ranked Searchable Public-Key Encryption for Cloud-Assisted Lightweight Platforms Prediction of Mobile App Privacy Preferences with User Profiles via Federated Learning Building a Commit-level Dataset of Real-world Vulnerabilities Shared Multi-Keyboard and Bilingual Datasets to Support Keystroke Dynamics Research
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