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Ensuring electronic medical record simulation through better training, modeling, and evaluation
Author(s) -
Ziqi Zhang,
Chao Yan,
Diego A Mesa,
Jimeng Sun,
Bradley Malin
Publication year - 2019
Publication title -
journal of the american medical informatics association
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.614
H-Index - 150
eISSN - 1527-974X
pISSN - 1067-5027
DOI - 10.1093/jamia/ocz161
Subject(s) - training (meteorology) , computer science , electronic medical record , simulation training , medical record , electronic health record , medical simulation , artificial intelligence , simulation , medicine , internet privacy , physics , radiology , health care , meteorology , economics , economic growth
Electronic medical records (EMRs) can support medical research and discovery, but privacy risks limit the sharing of such data on a wide scale. Various approaches have been developed to mitigate risk, including record simulation via generative adversarial networks (GANs). While showing promise in certain application domains, GANs lack a principled approach for EMR data that induces subpar simulation. In this article, we improve EMR simulation through a novel pipeline that (1) enhances the learning model, (2) incorporates evaluation criteria for data utility that informs learning, and (3) refines the training process.

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