在生存分析中保护患者隐私

Luca Bonomi, Xiaoqian Jiang, L. Ohno-Machado
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引用次数: 9

摘要

目的生存分析是许多医疗保健应用的基础,其中计算一组患者的“生存”概率(例如,摆脱某种疾病的时间,死亡时间)以指导临床决策。广泛应用于生物医学研究和医疗保健领域。然而,频繁地分享确切的生存曲线可能会泄露个别患者的信息,因为对手可能会推断出某个感兴趣的人是某项研究的参与者或某一特定群体的参与者。因此,研究在生存分析中保护患者隐私的方法势在必行。材料和方法我们开发了一个基于差分隐私的正式模型的框架,它提供了可证明的隐私保护,以对抗知识渊博的对手。我们展示了广泛使用的Kaplan-Meier非参数生存模型的隐私保护解决方案的性能。结果我们对一个流行的流行病学数据集和一个合成数据集的隐私保护框架的有效性和降低的隐私风险进行了实证评估。结果表明,与非私有方法相比,我们的方法显著降低了隐私风险,同时保留了生存曲线的效用。所提出的框架论证了进行隐私保护生存分析的可行性。我们讨论了未来的研究方向,以进一步提高我们提出的解决方案在生物医学研究应用中的有用性。结论我们提出的隐私保护方法在保留生存分析有用性的同时,提供了强有力的隐私保护。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Protecting patient privacy in survival analyses
OBJECTIVE Survival analysis is the cornerstone of many healthcare applications in which the "survival" probability (eg, time free from a certain disease, time to death) of a group of patients is computed to guide clinical decisions. It is widely used in biomedical research and healthcare applications. However, frequent sharing of exact survival curves may reveal information about the individual patients, as an adversary may infer the presence of a person of interest as a participant of a study or of a particular group. Therefore, it is imperative to develop methods to protect patient privacy in survival analysis. MATERIALS AND METHODS We develop a framework based on the formal model of differential privacy, which provides provable privacy protection against a knowledgeable adversary. We show the performance of privacy-protecting solutions for the widely used Kaplan-Meier nonparametric survival model. RESULTS We empirically evaluated the usefulness of our privacy-protecting framework and the reduced privacy risk for a popular epidemiology dataset and a synthetic dataset. Results show that our methods significantly reduce the privacy risk when compared with their nonprivate counterparts, while retaining the utility of the survival curves. DISCUSSION The proposed framework demonstrates the feasibility of conducting privacy-protecting survival analyses. We discuss future research directions to further enhance the usefulness of our proposed solutions in biomedical research applications. CONCLUSION The results suggest that our proposed privacy-protection methods provide strong privacy protections while preserving the usefulness of survival analyses.
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