Development and Validation of Unplanned Extubation Prediction Models Using Intensive Care Unit Data: Retrospective, Comparative, Machine Learning Study.

intensive care unit machine learning mechanical ventilator patient safety unplanned extubation

Journal

Journal of medical Internet research
ISSN: 1438-8871
Titre abrégé: J Med Internet Res
Pays: Canada
ID NLM: 100959882

Informations de publication

Date de publication:
11 08 2021
Historique:
received: 16 08 2020
accepted: 13 07 2021
revised: 19 10 2020
entrez: 12 8 2021
pubmed: 13 8 2021
medline: 27 10 2021
Statut: epublish

Résumé

Patient safety in the intensive care unit (ICU) is one of the most critical issues, and unplanned extubation (UE) is considered the most adverse event for patient safety. Prevention and early detection of such an event is an essential but difficult component of quality care. This study aimed to develop and validate prediction models for UE in ICU patients using machine learning. This study was conducted in an academic tertiary hospital in Seoul, Republic of Korea. The hospital had approximately 2000 inpatient beds and 120 ICU beds. As of January 2019, the hospital had approximately 9000 outpatients on a daily basis. The number of annual ICU admissions was approximately 10,000. We conducted a retrospective study between January 1, 2010, and December 31, 2018. A total of 6914 extubation cases were included. We developed a UE prediction model using machine learning algorithms, which included random forest (RF), logistic regression (LR), artificial neural network (ANN), and support vector machine (SVM). For evaluating the model's performance, we used the area under the receiver operating characteristic curve (AUROC). The sensitivity, specificity, positive predictive value, negative predictive value, and F1 score were also determined for each model. For performance evaluation, we also used a calibration curve, the Brier score, and the integrated calibration index (ICI) to compare different models. The potential clinical usefulness of the best model at the best threshold was assessed through a net benefit approach using a decision curve. Among the 6914 extubation cases, 248 underwent UE. In the UE group, there were more males than females, higher use of physical restraints, and fewer surgeries. The incidence of UE was higher during the night shift as compared to the planned extubation group. The rate of reintubation within 24 hours and hospital mortality were higher in the UE group. The UE prediction algorithm was developed, and the AUROC for RF was 0.787, for LR was 0.762, for ANN was 0.763, and for SVM was 0.740. We successfully developed and validated machine learning-based prediction models to predict UE in ICU patients using electronic health record data. The best AUROC was 0.787 and the sensitivity was 0.949, which was obtained using the RF algorithm. The RF model was well-calibrated, and the Brier score and ICI were 0.129 and 0.048, respectively. The proposed prediction model uses widely available variables to limit the additional workload on the clinician. Further, this evaluation suggests that the model holds potential for clinical usefulness.

Sections du résumé

BACKGROUND
Patient safety in the intensive care unit (ICU) is one of the most critical issues, and unplanned extubation (UE) is considered the most adverse event for patient safety. Prevention and early detection of such an event is an essential but difficult component of quality care.
OBJECTIVE
This study aimed to develop and validate prediction models for UE in ICU patients using machine learning.
METHODS
This study was conducted in an academic tertiary hospital in Seoul, Republic of Korea. The hospital had approximately 2000 inpatient beds and 120 ICU beds. As of January 2019, the hospital had approximately 9000 outpatients on a daily basis. The number of annual ICU admissions was approximately 10,000. We conducted a retrospective study between January 1, 2010, and December 31, 2018. A total of 6914 extubation cases were included. We developed a UE prediction model using machine learning algorithms, which included random forest (RF), logistic regression (LR), artificial neural network (ANN), and support vector machine (SVM). For evaluating the model's performance, we used the area under the receiver operating characteristic curve (AUROC). The sensitivity, specificity, positive predictive value, negative predictive value, and F1 score were also determined for each model. For performance evaluation, we also used a calibration curve, the Brier score, and the integrated calibration index (ICI) to compare different models. The potential clinical usefulness of the best model at the best threshold was assessed through a net benefit approach using a decision curve.
RESULTS
Among the 6914 extubation cases, 248 underwent UE. In the UE group, there were more males than females, higher use of physical restraints, and fewer surgeries. The incidence of UE was higher during the night shift as compared to the planned extubation group. The rate of reintubation within 24 hours and hospital mortality were higher in the UE group. The UE prediction algorithm was developed, and the AUROC for RF was 0.787, for LR was 0.762, for ANN was 0.763, and for SVM was 0.740.
CONCLUSIONS
We successfully developed and validated machine learning-based prediction models to predict UE in ICU patients using electronic health record data. The best AUROC was 0.787 and the sensitivity was 0.949, which was obtained using the RF algorithm. The RF model was well-calibrated, and the Brier score and ICI were 0.129 and 0.048, respectively. The proposed prediction model uses widely available variables to limit the additional workload on the clinician. Further, this evaluation suggests that the model holds potential for clinical usefulness.

Identifiants

pubmed: 34382940
pii: v23i8e23508
doi: 10.2196/23508
pmc: PMC8387891
doi:

Types de publication

Journal Article Research Support, Non-U.S. Gov't

Langues

eng

Sous-ensembles de citation

IM

Pagination

e23508

Informations de copyright

©Sujeong Hur, Ji Young Min, Junsang Yoo, Kyunga Kim, Chi Ryang Chung, Patricia C Dykes, Won Chul Cha. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 11.08.2021.

Références

Intensive Crit Care Nurs. 2010 Oct;26(5):241-5
pubmed: 20837320
Crit Care Med. 2016 Feb;44(2):319-27
pubmed: 26496452
Int J Med Inform. 2018 Sep;117:6-12
pubmed: 30032966
BMC Med Inform Decis Mak. 2018 Jun 22;18(1):44
pubmed: 29929496
Am J Respir Crit Care Med. 1998 Apr;157(4 Pt 1):1131-7
pubmed: 9563730
J Matern Fetal Neonatal Med. 2020 Sep;33(18):3077-3085
pubmed: 30632822
Am J Crit Care. 2008 Sep;17(5):408-15; quiz 416
pubmed: 18775996
J Clin Epidemiol. 1995 Dec;48(12):1503-10
pubmed: 8543964
Stat Med. 2019 Sep 20;38(21):4051-4065
pubmed: 31270850
J Am Med Inform Assoc. 2006 Mar-Apr;13(2):138-47
pubmed: 16357358
Crit Care Med. 2001 Jul;29(7):1370-9
pubmed: 11445689
Crit Care. 2012 Jun 21;16(3):R108
pubmed: 22715923
Anaesth Intensive Care. 2007 Jun;35(3):382-6
pubmed: 17591133
Am J Respir Crit Care Med. 2002 Nov 15;166(10):1338-44
pubmed: 12421743
Am J Respir Crit Care Med. 2000 Jun;161(6):1912-6
pubmed: 10852766
PLoS One. 2019 Jan 9;14(1):e0210103
pubmed: 30625197
N Engl J Med. 2016 Sep 29;375(13):1216-9
pubmed: 27682033
Med Decis Making. 2006 Nov-Dec;26(6):565-74
pubmed: 17099194
Diabetes Care. 2019 Dec;42(12):2298-2306
pubmed: 31519694
Psychol Rev. 1958 Nov;65(6):386-408
pubmed: 13602029
Ann Intern Med. 2006 Feb 7;144(3):201-9
pubmed: 16461965
Crit Care. 2009;13(3):R77
pubmed: 19457226
Stat Med. 2019 Mar 30;38(7):1276-1296
pubmed: 30357870
Biom J. 2008 Aug;50(4):457-79
pubmed: 18663757
Chest. 1997 Nov 5;112(5):1317-23
pubmed: 9367475
Acta Biomed. 2018 Dec 07;89(7-S):25-31
pubmed: 30539936
Am J Epidemiol. 1995 Dec 15;142(12):1255-64
pubmed: 7503045
Intensive Care Med. 2006 Oct;32(10):1591-8
pubmed: 16874492
Respir Care. 2010 May;55(5):561-8
pubmed: 20420726
Int J Trauma Nurs. 2001 Jul-Sep;7(3):93-9
pubmed: 11477388
Circulation. 2015 Jan 13;131(2):211-9
pubmed: 25561516
Biomed Instrum Technol. 2012 Jul-Aug;46(4):268-77
pubmed: 22839984
BMJ. 2016 Jan 25;352:i6
pubmed: 26810254
Crit Care Med. 2000 Mar;28(3):659-64
pubmed: 10752811
J Clin Epidemiol. 1996 Dec;49(12):1373-9
pubmed: 8970487
Bioinformatics. 2007 Oct 1;23(19):2507-17
pubmed: 17720704

Auteurs

Sujeong Hur (S)

Department of Digital Health, Samsung Advanced Institute for Health Sciences & Technology, Sungkyunkwan University, Seoul, Republic of Korea.
Department of Patient Experience Management, Samsung Medical Center, Seoul, Republic of Korea.

Ji Young Min (JY)

Department of Digital Health, Samsung Advanced Institute for Health Sciences & Technology, Sungkyunkwan University, Seoul, Republic of Korea.

Junsang Yoo (J)

Department of Nursing, College of Nursing, Sahmyook University, Seoul, Republic of Korea.

Kyunga Kim (K)

Department of Digital Health, Samsung Advanced Institute for Health Sciences & Technology, Sungkyunkwan University, Seoul, Republic of Korea.
Biomedical Statistics Center, Research Institute for Future Medicine, Samsung Medical Center, Seoul, Republic of Korea.

Chi Ryang Chung (CR)

Department of Critical Care Medicine, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul, Republic of Korea.
Department of Medicine, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul, Republic of Korea.

Patricia C Dykes (PC)

Division of General Internal Medicine and Primary Care, Brigham and Women's Hospital, Harvard Medical School, Boston, MA, United States.

Won Chul Cha (WC)

Department of Digital Health, Samsung Advanced Institute for Health Sciences & Technology, Sungkyunkwan University, Seoul, Republic of Korea.
Department of Emergency Medicine, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul, Republic of Korea.
Digital Innovation Center, Samsung Medical Center, Seoul, Republic of Korea.

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