在保护隐私的前提下共享时间到事件数据。

Luca Bonomi, Liyue Fan
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引用次数: 0

摘要

共享从时间到事件的数据有利于开展合作研究(如生存研究)、促进有效干预措施的设计以及推动患者护理(如早期诊断)。尽管有许多针对共享时间到事件数据的隐私解决方案,但最近的研究表明,外部信息可能会被对手获取(例如,在社交媒体上自我披露参与研究的情况),从而带来新的隐私问题。在这项工作中,我们提出了一种针对时间到事件数据共享的队列推断攻击,在这种攻击中,知情的对手旨在推断目标个体在特定队列中的成员资格。我们的研究调查了与时间到事件数据相关的隐私风险,并评估了流行的隐私保护解决方案(如分档、差分隐私)所提供的经验隐私保护。此外,我们还提出了一种新方法,在为输入值提供不可区分性保证的同时,私下发布具有高效用的个体级时间到事件数据。研究表明,我们的 TE-Sanitizer 方法能有效缓解推理攻击,并在生存分析中具有很高的实用性。研究结果和讨论为领域专家提供了有关所研究方法的隐私性和实用性的见解。
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Sharing Time-to-Event Data with Privacy Protection.

Sharing time-to-event data is beneficial for enabling collaborative research efforts (e.g., survival studies), facilitating the design of effective interventions, and advancing patient care (e.g., early diagnosis). Despite numerous privacy solutions for sharing time-to-event data, recent research studies have shown that external information may become available (e.g., self-disclosure of study participation on social media) to an adversary, posing new privacy concerns. In this work, we formulate a cohort inference attack for time-to-event data sharing, in which an informed adversary aims at inferring the membership of a target individual in a specific cohort. Our study investigates the privacy risks associated with time-to-event data and evaluates the empirical privacy protection offered by popular privacy-protecting solutions (e.g., binning, differential privacy). Furthermore, we propose a novel approach to privately release individual level time-to-event data with high utility, while providing indistinguishability guarantees for the input value. Our method TE-Sanitizer is shown to provide effective mitigation against the inference attacks and high usefulness in survival analysis. The results and discussion provide domain experts with insights on the privacy and the usefulness of the studied methods.

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