Artificial intelligence & clinical nutrition: What the future might have in store

Clinical Nutrition ESPEN - Tập 57 - Trang 542-549 - 2023
Ashley Bond1,2, Kevin Mccay3,4, Simon Lal1,2
1Intestinal Failure Unit, Salford Royal Foundation Trust, UK
2University of Manchester, Manchester, UK
3Manchester Metropolitan University, Manchester, UK
4Northern Care Alliance NHS Foundation Trust, Salford Royal Hospital, Salford, UK

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