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Developing DELPHI expert consensus rules for a digital twin model of acute stroke care in the neuro critical care unit
21
Zitationen
25
Autoren
2023
Jahr
Abstract
This descriptive study demonstrates the use of the DELPHI process to generate consensus among experts and establish a set of rules for the development of a digital twin model for use in the neurologic ICU. Compared to associative models of AI, which develop rules based on finding associations in datasets, digital twin AI created by the DELPHI process are easily interpretable models based on a current understanding of underlying physiology.
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Autoren
- Johnny Dang
- Amos Lal
- Amy Montgomery
- Laure Flurin
- John M. Litell
- Ognjen Gajić
- Alejandro A. Rabinstein
- Anna M. Cervantes‐Arslanian
- Chris Marcellino
- Chris Robinson
- Christopher L. Kramer
- David W. Freeman
- David Y. Hwang
- Edward M. Manno
- Eelco F. M. Wijdicks
- Jason T. Siegel
- Jennifer E. Fugate
- João Gomes
- Joseph A. Burns
- Kevin T. Gobeske
- Maximiliano A. Hawkes
- Philippe Couillard
- Sara E. Hocker
- Sudhir Datar
- Tia Chakraborty