FAIRness through automation: development of an automated medical data integration infrastructure for FAIR health data in a maximum care university hospital

被引:0
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作者
Marcel Parciak
Markus Suhr
Christian Schmidt
Caroline Bönisch
Benjamin Löhnhardt
Dorothea Kesztyüs
Tibor Kesztyüs
机构
[1] University Medical Center Göttingen,Department of Medical Informatics
[2] University MS Center,Data Science Institute (DSI)
[3] Biomedical Research Institute (BIOMED),undefined
[4] Hasselt University,undefined
[5] Hasselt University,undefined
[6] NextLytics AG,undefined
关键词
Medical data reuse; Electronic health record; Medical data integration center; Automated medical data processing; Medical informatics; Maximum care hospital;
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