Development and Verification of a Digital Twin Patient Model to Predict Specific Treatment Response During the First 24 Hours of Sepsis.
artificial intelligence
critical care
digital twin
directed acyclic graph
organ failure
Journal
Critical care explorations
ISSN: 2639-8028
Titre abrégé: Crit Care Explor
Pays: United States
ID NLM: 101746347
Informations de publication
Date de publication:
Nov 2020
Nov 2020
Historique:
entrez:
23
11
2020
pubmed:
24
11
2020
medline:
24
11
2020
Statut:
epublish
Résumé
To develop and verify a digital twin model of critically ill patient using the causal artificial intelligence approach to predict the response to specific treatment during the first 24 hours of sepsis. Directed acyclic graphs were used to define explicitly the causal relationship among organ systems and specific treatments used. A hybrid approach of agent-based modeling, discrete-event simulation, and Bayesian network was used to simulate treatment effect across multiple stages and interactions of major organ systems (cardiovascular, neurologic, renal, respiratory, gastrointestinal, inflammatory, and hematology). Organ systems were visualized using relevant clinical markers. The application was iteratively revised and debugged by clinical experts and engineers. Agreement statistics was used to test the performance of the model by comparing the observed patient response versus the expected response (primary and secondary) predicted by digital twin. Medical ICU of a large quaternary- care academic medical center in the United States. Adult (> 18 year yr old), medical ICU patients were included in the study. No additional interventions were made beyond the standard of care for this study. During the verification phase, model performance was prospectively tested on 145 observations in a convenience sample of 29 patients. Median age was 60 years (54-66 d) with a median Sequential Organ Failure Assessment score of 9.5 (interquartile range, 5.0-14.0). The most common source of sepsis was pneumonia, followed by hepatobiliary. The observations were made during the first 24 hours of the ICU admission with one-step interventions, comparing the output in the digital twin with the real patient response. The agreement between the observed versus and the expected response ranged from fair (kappa coefficient of 0.41) for primary response to good (kappa coefficient of 0.65) for secondary response to the intervention. The most common error detected was coding error in 50 observations (35%), followed by expert rule error in 29 observations (20%) and timing error in seven observations (5%). We confirmed the feasibility of development and prospective testing of causal artificial intelligence model to predict the response to treatment in early stages of critical illness. The availability of qualitative and quantitative data and a relatively short turnaround time makes the ICU an ideal environment for development and testing of digital twin patient models. An accurate digital twin model will allow the effect of an intervention to be tested in a virtual environment prior to use on real patients.
Identifiants
pubmed: 33225302
doi: 10.1097/CCE.0000000000000249
pmc: PMC7671877
doi:
Types de publication
Journal Article
Langues
eng
Pagination
e0249Informations de copyright
Copyright © 2020 The Authors. Published by Wolters Kluwer Health, Inc. on behalf of the Society of Critical Care Medicine.
Déclaration de conflit d'intérêts
The authors have disclosed that they do not have any potential conflicts of interest.
Références
N Engl J Med. 2001 Nov 8;345(19):1368-77
pubmed: 11794169
JAMA. 2016 Feb 23;315(8):801-10
pubmed: 26903338
Nat Med. 2018 Nov;24(11):1716-1720
pubmed: 30349085
N Engl J Med. 2017 Aug 3;377(5):414-417
pubmed: 28658587
Crit Care Med. 2019 Nov;47(11):1485-1492
pubmed: 31389839
Crit Care Med. 2019 Nov;47(11):1477-1484
pubmed: 31135500
AMIA Annu Symp Proc. 2018 Dec 05;2018:673-682
pubmed: 30815109
Sci Data. 2016 May 24;3:160035
pubmed: 27219127
Crit Care Med. 2013 Jun;41(6):1502-10
pubmed: 23528804
Crit Care Med. 2020 May;48(5):623-633
pubmed: 32141923
Sci Data. 2018 Sep 11;5:180178
pubmed: 30204154
Ann Intern Med. 2020 Jan 7;172(1):59-60
pubmed: 31842204
Emerg Med Serv. 2002 Jun;31(6):105
pubmed: 12078402
Ann Am Thorac Soc. 2019 Jan;16(1):22-28
pubmed: 30230362
Crit Care Med. 2011 May;39(5):1023-8
pubmed: 21761595
Science. 2005 Nov 11;310(5750):987-91
pubmed: 16284171
World J Crit Care Med. 2020 Jun 5;9(2):13-19
pubmed: 32577412
Pediatr Res. 2018 Oct;84(4):487-493
pubmed: 29967527
Nature. 2019 Aug;572(7767):116-119
pubmed: 31367026
Diabetes Care. 2003 Nov;26(11):3093-101
pubmed: 14578245