Acceptance, Barriers, and Facilitators to Implementing Artificial Intelligence–Based Decision Support Systems in Emergency Departments: Quantitative and Qualitative Evaluation
Ryo Fujimori(The University of Tokyo), Tadahiro Goto(University of Fukui), Konan Hara(University of Arizona), Kentaro Ogura(University of Arizona), Hiromu Naraba(Hitachi General Hospital), Keibun Liu(The University of Queensland), Takayuki Ogura(Saiseikai Utsunomiya hospital), Shoko Soeno(Southern Tohoku General Hospital), Kensuke Nakamura(Hitachi General Hospital), Tomohiro Sonoo(Hitachi General Hospital)
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