digital twins personalized care critical care ICU CPHS model-based control decision support innovation technology adoption cyber–physical–human systems automation
Disciplines :
Anesthesia & intensive care
Author, co-author :
Chase, J Geoffrey ; Université de Liège - ULiège > Département d'astrophysique, géophysique et océanographie (AGO) > Thermodynamique des phénomènes irréversibles
Zhou C; University of Canterbury > Mechanical Engineering
Knopp JL; University of Canterbury > Mechanical Engineering
Moeller K; Furtwangen University, Institute of Technical Medicine > Biomedical Engineering,
Benyo B; Budapest University of Technology and Economics > Control Engineering and Information Technology
Desaive, Thomas ; Université de Liège - ULiège > Département d'astrophysique, géophysique et océanographie (AGO) > Thermodynamique des phénomènes irréversibles
Wong JHK; University of Canterbury > Psychology, Speech and Hearing
Malinen S; University of Canterbury > Management, Marketing, and Entrepreneurship
Naswall K; University of Canterbury > Psychology, Speech and Hearing
Shaw GM; Christchurch Hospital > Intensive Care
Lambermont, Bernard ; Centre Hospitalier Universitaire de Liège - CHU > > Service des soins intensifs
Chiew YS; Monash University Malaysia [MY] > Mechanical Engineering
Language :
English
Title :
Digital Twins and Automation of Care in the Intensive Care Unit
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