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A Multifaceted benchmarking of synthetic electronic health record generation models

Chao Yan, Yao Yan, Zhiyu Wan, Ziqi Zhang, Larsson Omberg, Justin Guinney, Sean D. Mooney, Bradley Malin

2022Nature Communications88 citationsDOIOpen Access PDF

Abstract

Synthetic health data have the potential to mitigate privacy concerns in supporting biomedical research and healthcare applications. Modern approaches for data generation continue to evolve and demonstrate remarkable potential. Yet there is a lack of a systematic assessment framework to benchmark methods as they emerge and determine which methods are most appropriate for which use cases. In this work, we introduce a systematic benchmarking framework to appraise key characteristics with respect to utility and privacy metrics. We apply the framework to evaluate synthetic data generation methods for electronic health records data from two large academic medical centers with respect to several use cases. The results illustrate that there is a utility-privacy tradeoff for sharing synthetic health data and further indicate that no method is unequivocally the best on all criteria in each use case, which makes it evident why synthetic data generation methods need to be assessed in context.

Topics & Concepts

BenchmarkingHealth recordsElectronic health recordData scienceComputer scienceComputational biologyBusinessBiologyHealth carePolitical scienceMarketingLawMachine Learning in HealthcareElectronic Health Records SystemsArtificial Intelligence in Healthcare
A Multifaceted benchmarking of synthetic electronic health record generation models | Litcius