000 01574cam a2200181 4500500
005 20250413023859.0
041 _afre
042 _adc
100 1 0 _aEchajari, Loubna
_eauthor
700 1 0 _a Jeanningros, Hugo
_eauthor
700 1 0 _a Lewkowicz, Myriam
_eauthor
245 0 0 _aWhen AI challenges the encoding of medical information. Performance and uncertainty of medical information encoding in a hospital
260 _c2025.
500 _a25
520 _aThe deployment of artificial intelligence (AI) in healthcare organizations is not limited to the fields of research and care; the encoding of medical data, an essential part of hospital administration, is also challenged by AI, in the framework of activity-based pricing. Drawing on an interview and observation survey in a French hospital, we analyse the methods and effects of introducing AI into a Medical Information Department. While AI currently has only a marginal impact on professional and communication practices and procedures within this department, we show that the main reason for integrating AI is the financial efficiency of encoding in the context of activity-based pricing. The article establishes not only that AI does not reduce uncertainty in the encoding process, but also that it is likely to generate uncertainty about the quality of the encoded data, whereas it is an essential resource for medical research.
786 0 _nRéseaux | o 248 | 6 | 2025-01-14 | p. 153-191 | 0751-7971
856 4 1 _uhttps://shs.cairn.info/journal-reseaux-2024-6-page-153?lang=en&redirect-ssocas=7080
999 _c1122131
_d1122131