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Predicting responders to prone positioning in mechanically ventilated patients with COVID-19 using machine learning.

Authors :
Dam TA
Roggeveen LF
van Diggelen F
Fleuren LM
Jagesar AR
Otten M
de Vries HJ
Gommers D
Cremer OL
Bosman RJ
Rigter S
Wils EJ
Frenzel T
Dongelmans DA
de Jong R
Peters MAA
Kamps MJA
Ramnarain D
Nowitzky R
Nooteboom FGCA
de Ruijter W
Urlings-Strop LC
Smit EGM
Mehagnoul-Schipper DJ
Dormans T
de Jager CPC
Hendriks SHA
Achterberg S
Oostdijk E
Reidinga AC
Festen-Spanjer B
Brunnekreef GB
Cornet AD
van den Tempel W
Boelens AD
Koetsier P
Lens J
Faber HJ
Karakus A
Entjes R
de Jong P
Rettig TCD
Arbous S
Vonk SJJ
Machado T
Herter WE
de Grooth HJ
Thoral PJ
Girbes ARJ
Hoogendoorn M
Elbers PWG
Source :
Annals of intensive care [Ann Intensive Care] 2022 Oct 20; Vol. 12 (1), pp. 99. Date of Electronic Publication: 2022 Oct 20.
Publication Year :
2022

Abstract

Background: For mechanically ventilated critically ill COVID-19 patients, prone positioning has quickly become an important treatment strategy, however, prone positioning is labor intensive and comes with potential adverse effects. Therefore, identifying which critically ill intubated COVID-19 patients will benefit may help allocate labor resources.<br />Methods: From the multi-center Dutch Data Warehouse of COVID-19 ICU patients from 25 hospitals, we selected all 3619 episodes of prone positioning in 1142 invasively mechanically ventilated patients. We excluded episodes longer than 24 h. Berlin ARDS criteria were not formally documented. We used supervised machine learning algorithms Logistic Regression, Random Forest, Naive Bayes, K-Nearest Neighbors, Support Vector Machine and Extreme Gradient Boosting on readily available and clinically relevant features to predict success of prone positioning after 4 h (window of 1 to 7 h) based on various possible outcomes. These outcomes were defined as improvements of at least 10% in PaO <subscript>2</subscript> /FiO <subscript>2</subscript> ratio, ventilatory ratio, respiratory system compliance, or mechanical power. Separate models were created for each of these outcomes. Re-supination within 4 h after pronation was labeled as failure. We also developed models using a 20 mmHg improvement cut-off for PaO <subscript>2</subscript> /FiO <subscript>2</subscript> ratio and using a combined outcome parameter. For all models, we evaluated feature importance expressed as contribution to predictive performance based on their relative ranking.<br />Results: The median duration of prone episodes was 17 h (11-20, median and IQR, Nā€‰=ā€‰2632). Despite extensive modeling using a plethora of machine learning techniques and a large number of potentially clinically relevant features, discrimination between responders and non-responders remained poor with an area under the receiver operator characteristic curve of 0.62 for PaO <subscript>2</subscript> /FiO <subscript>2</subscript> ratio using Logistic Regression, Random Forest and XGBoost. Feature importance was inconsistent between models for different outcomes. Notably, not even being a previous responder to prone positioning, or PEEP-levels before prone positioning, provided any meaningful contribution to predicting a successful next proning episode.<br />Conclusions: In mechanically ventilated COVID-19 patients, predicting the success of prone positioning using clinically relevant and readily available parameters from electronic health records is currently not feasible. Given the current evidence base, a liberal approach to proning in all patients with severe COVID-19 ARDS is therefore justified and in particular regardless of previous results of proning.<br /> (© 2022. The Author(s).)

Details

Language :
English
ISSN :
2110-5820
Volume :
12
Issue :
1
Database :
MEDLINE
Journal :
Annals of intensive care
Publication Type :
Academic Journal
Accession number :
36264358
Full Text :
https://doi.org/10.1186/s13613-022-01070-0