Semantic-based Privacy-preserving Record Linkage.

IF 1.6 Q3 HEALTH CARE SCIENCES & SERVICES International Journal of Population Data Science Pub Date : 2022-08-25 DOI:10.23889/ijpds.v7i3.1956
Yang Lu
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Abstract

IntroductionSharing aggregated electronic health records (EHRs) for integrated health care and public health studies is increasingly demanded. Patient privacy demands that anonymisation procedures are in place for data sharing. ObjectiveTraditional methods such as k-anonymity and its derivations are often overgeneralising resulting in lower data accuracy. To tackle this issue, we proposed the Semantic Linkage K-Anonymity (SLKA) approach to balance the privacy and utility preservation through detecting risky combinations hidden in the record linkage releases. ApproachK-anonymity processing quasi-identifiers of data may lead to ‘over generalisation’ when dealing with linkage data sets. As most linkage cases do not include all local patients and thus not all modifying data for privacy-preserving purposes needs to be used, we proposed the linkage k-anonymity (LKA) by which only obfuscated individuals in a released linkage set are required to be indistinguishable from at least k-1 other individuals in the local dataset. Considering the inference disclosure issue, we further designed the semantic-based linkage k-anonymity (SLKA) method through extending with a semantic-rule base for automatic detection of (and ruling out) risky associations from previous linked data releases. Specially, associations identified from the “previous releases” of the linkage dataset can become the input of semantic reasoning for the “next release”. ResultsThe approach is evaluated based on a linkage scenario where researchers apply to link data from an Australia-wide national type-1 diabetes platform with survey results from 25,000+ Victorians about their health and wellbeing. In comparing the information loss of three methods, we find that extra cost can be incurred in SLKA for dealing with risky individuals, e.g., 13.7% vs 5.9% (LKA, k=4) however it performs much better than k-anonymity, which can cause 24% information loss (k=4). Besides, the k values can affect the level of distortion in SLKA, such as 11.5% (k=2) vs 12.9% (k=3). ConclusionThe SLKA framework provides dynamic protection for repeated linkage releases while preserving data utility by avoiding unnecessary generalisation as typified by k-anonymity.
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基于语义的隐私保护记录链接。
引言为综合医疗保健和公共卫生研究共享汇总电子健康记录(EHR)的需求越来越大。患者隐私要求数据共享采用匿名程序。传统方法,如k-匿名及其衍生方法,往往过于笼统,导致数据准确性较低。为了解决这个问题,我们提出了语义链接K-匿名(SLKA)方法,通过检测隐藏在记录链接发布中的风险组合来平衡隐私和效用保护。在处理链接数据集时,匿名处理数据的准标识符可能会导致“过度泛化”。由于大多数链接情况不包括所有本地患者,因此也不需要使用所有出于隐私保护目的的修改数据,我们提出了链接k匿名性(LKA),通过该链接,仅要求已发布链接集中的模糊个体与本地数据集中的至少k-1个其他个体不可区分。考虑到推理公开问题,我们通过扩展语义规则库,进一步设计了基于语义的链接k匿名(SLKA)方法,用于自动检测(并排除)先前链接数据发布中的风险关联。特别地,从链接数据集的“以前的版本”中识别的关联可以成为“下一个版本”的语义推理的输入。结果该方法是基于一个链接场景进行评估的,研究人员将澳大利亚全国1型糖尿病平台的数据与25000多名维多利亚州人的健康状况调查结果联系起来。在比较三种方法的信息损失时,我们发现SLKA在处理风险个体时可能会产生额外的成本,例如13.7%对5.9%(LKA,k=4),但它的性能远好于k-匿名,后者可能会导致24%的信息损失(k=4)。此外,k值可以影响SLKA中的失真水平,例如11.5%(k=2)vs 12.9%(k=3)。结论SLKA框架为重复链接发布提供了动态保护,同时通过避免以k匿名为代表的不必要的泛化来保持数据的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.50
自引率
0.00%
发文量
386
审稿时长
20 weeks
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