Artificial intelligence versus expert: a comparison of rapid visual inferior vena cava collapsibility assessment between POCUS experts and a deep learning algorithm.

artificial intelligence critical care deep learning fluid responsiveness inferior vena cava point‐of‐care ultrasound

Journal

Journal of the American College of Emergency Physicians open
ISSN: 2688-1152
Titre abrégé: J Am Coll Emerg Physicians Open
Pays: United States
ID NLM: 101764779

Informations de publication

Date de publication:
Oct 2020
Historique:
received: 17 05 2020
revised: 02 07 2020
accepted: 13 07 2020
entrez: 4 11 2020
pubmed: 5 11 2020
medline: 5 11 2020
Statut: epublish

Résumé

We sought to create a deep learning algorithm to determine the degree of inferior vena cava (IVC) collapsibility in critically ill patients to enable novice point-of-care ultrasound (POCUS) providers. We used publicly available long short term memory (LSTM) deep learning basic architecture that can track temporal changes and relationships in real-time video, to create an algorithm for ultrasound video analysis. The algorithm was trained on public domain IVC ultrasound videos to improve its ability to recognize changes in varied ultrasound video. A total of 220 IVC videos were used, 10% of the data was randomly used for cross correlation during training. Data were augmented through video rotation and manipulation to multiply effective training data quantity. After training, the algorithm was tested on the 50 new IVC ultrasound video obtained from public domain sources and not part of the data set used in training or cross validation. Fleiss' κ was calculated to compare level of agreement between the 3 POCUS experts and between deep learning algorithm and POCUS experts. There was very substantial agreement between the 3 POCUS experts with κ = 0.65 (95% CI = 0.49-0.81). Agreement between experts and algorithm was moderate with κ = 0.45 (95% CI = 0.33-0.56). Our algorithm showed good agreement with POCUS experts in visually estimating degree of IVC collapsibility that has been shown in previously published studies to differentiate fluid responsive from fluid unresponsive septic shock patients. Such an algorithm could be adopted to run in real-time on any ultrasound machine with a video output, easing the burden on novice POCUS users by limiting their task to obtaining and maintaining a sagittal proximal IVC view and allowing the artificial intelligence make real-time determinations.

Identifiants

pubmed: 33145532
doi: 10.1002/emp2.12206
pii: EMP212206
pmc: PMC7593461
doi:

Types de publication

Journal Article

Langues

eng

Pagination

857-864

Informations de copyright

© 2020 The Authors. JACEP Open published by Wiley Periodicals LLC on behalf of the American College of Emergency Physicians.

Déclaration de conflit d'intérêts

MB consults with EchoNous Inc., Sonosim Inc. Ethos Medical and 410Medical. None of the companies had influence or contribution to this study and article or knowledge of its performance.

Références

Lancet. 2018 Dec 1;392(10162):2388-2396
pubmed: 30318264
J Intensive Care Med. 2019 Oct 14;:885066619881123
pubmed: 31610729
Ultrasound Med Biol. 2018 Dec;44(12):2793-2801
pubmed: 30213669
Acad Emerg Med. 2011 Jan;18(1):98-101
pubmed: 21414063
Nihon Jinzo Gakkai Shi. 1996 Mar;38(3):119-23
pubmed: 8721332
Circulation. 2018 Oct 16;138(16):1623-1635
pubmed: 30354459
Circ Cardiovasc Imaging. 2019 Sep;12(9):e009303
pubmed: 31522550
Am J Emerg Med. 2013 Oct;31(10):1509-11
pubmed: 24012423
J Ultrasound Med. 2020 Jun;39(6):1187-1194
pubmed: 31872477
J Ultrasound Med. 2020 Aug;39(8):1573-1579
pubmed: 32078174
Ultrason Imaging. 2018 Jul;40(4):232-244
pubmed: 29862931
J Intensive Care Med. 2020 Apr;35(4):354-363
pubmed: 29343170
PLoS Med. 2018 Nov 27;15(11):e1002699
pubmed: 30481176
IEEE Trans Med Imaging. 2020 Jun;39(6):1868-1883
pubmed: 31841401
J Crit Care. 2017 Oct;41:130-137
pubmed: 28525778
PLoS One. 2018 Oct 4;13(10):e0204155
pubmed: 30286097
Emerg Med Australas. 2015 Aug;27(4):295-9
pubmed: 26072675
Adv Emerg Nurs J. 2014 Jul-Sep;36(3):271-8
pubmed: 25076402
Am J Emerg Med. 2012 Oct;30(8):1414-1419.e1
pubmed: 22221934

Auteurs

Michael Blaivas (M)

Department of Emergency Medicine, St. Francis Hospital, School of Medicine University of South Carolina Columbus South Carolina USA.

Srikar Adhikari (S)

Department of Emergency Medicine, School of Medicine University of Arizona Tucson Arizona USA.

Eric A Savitsky (EA)

Department of Emergency Medicine, UCLA David Geffen School of Medicine UCLA Ronald Reagan Medical Center Los Angeles California USA.

Laura N Blaivas (LN)

Department of Emergency Medicine, Harbor-UCLA Medical Center, David Geffren School of Medicine UCLA Los Angeles California USA.

Yiju T Liu (YT)

Michigan State University-East Lansing East Lansing Michigan USA.

Classifications MeSH