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"De-black-boxing health AI: demonstrating reproducible machine learning ..."
Emily R. Pfaff et al. (2023)
- Emily R. Pfaff
, Andrew T. Girvin, Miles Crosskey, Srushti Gangireddy, Hiral Master
, Wei-Qi Wei, Vern Eric Kerchberger, Mark G. Weiner, Paul A. Harris, Melissa A. Basford, Christopher Lunt, Christopher G. Chute, Richard A. Moffitt, Melissa A. Haendel:
De-black-boxing health AI: demonstrating reproducible machine learning computable phenotypes using the N3C-RECOVER Long COVID model in the All of Us data repository. J. Am. Medical Informatics Assoc. 30(7): 1305-1312 (2023)
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