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Estimating parameters for probabilistic linkage of privacy-preserved datasets
- Source :
- BMC Medical Research Methodology, BMC Medical Research Methodology, Vol 17, Iss 1, Pp 1-10 (2017)
- Publication Year :
- 2017
- Publisher :
- BioMed Central, 2017.
-
Abstract
- Background Probabilistic record linkage is a process used to bring together person-based records from within the same dataset (de-duplication) or from disparate datasets using pairwise comparisons and matching probabilities. The linkage strategy and associated match probabilities are often estimated through investigations into data quality and manual inspection. However, as privacy-preserved datasets comprise encrypted data, such methods are not possible. In this paper, we present a method for estimating the probabilities and threshold values for probabilistic privacy-preserved record linkage using Bloom filters. Methods Our method was tested through a simulation study using synthetic data, followed by an application using real-world administrative data. Synthetic datasets were generated with error rates from zero to 20% error. Our method was used to estimate parameters (probabilities and thresholds) for de-duplication linkages. Linkage quality was determined by F-measure. Each dataset was privacy-preserved using separate Bloom filters for each field. Match probabilities were estimated using the expectation-maximisation (EM) algorithm on the privacy-preserved data. Threshold cut-off values were determined by an extension to the EM algorithm allowing linkage quality to be estimated for each possible threshold. De-duplication linkages of each privacy-preserved dataset were performed using both estimated and calculated probabilities. Linkage quality using the F-measure at the estimated threshold values was also compared to the highest F-measure. Three large administrative datasets were used to demonstrate the applicability of the probability and threshold estimation technique on real-world data. Results Linkage of the synthetic datasets using the estimated probabilities produced an F-measure that was comparable to the F-measure using calculated probabilities, even with up to 20% error. Linkage of the administrative datasets using estimated probabilities produced an F-measure that was higher than the F-measure using calculated probabilities. Further, the threshold estimation yielded results for F-measure that were only slightly below the highest possible for those probabilities. Conclusions The method appears highly accurate across a spectrum of datasets with varying degrees of error. As there are few alternatives for parameter estimation, the approach is a major step towards providing a complete operational approach for probabilistic linkage of privacy-preserved datasets.
- Subjects :
- 020205 medical informatics
Epidemiology
Computer science
Datasets as Topic
Health Informatics
Probabilistic
02 engineering and technology
Linkage (mechanical)
Synthetic data
law.invention
03 medical and health sciences
Record linkage
0302 clinical medicine
law
Expectation–maximization algorithm
Statistics
0202 electrical engineering, electronic engineering, information engineering
Humans
Linkage quality
030212 general & internal medicine
Computer Security
Probability
lcsh:R5-920
Estimation theory
Probabilistic logic
Data quality
Reproducibility of Results
Data Accuracy
Privacy
Pairwise comparison
Medical Record Linkage
lcsh:Medicine (General)
Research Article
Subjects
Details
- Language :
- English
- ISSN :
- 14712288
- Volume :
- 17
- Database :
- OpenAIRE
- Journal :
- BMC Medical Research Methodology
- Accession number :
- edsair.doi.dedup.....63a7c90a88b136c98c7915a6905d4dfb