Author:
Gourdeau Daniel,Potvin Olivier,Biem Jason Henry,Cloutier Florence,Abrougui Lyna,Archambault Patrick,Chartrand-Lefebvre Carl,Dieumegarde Louis,Gagné Christian,Gagnon Louis,Giguère Raphaelle,Hains Alexandre,Le Huy,Lemieux Simon,Lévesque Marie-Hélène,Nepveu Simon,Rosenbloom Lorne,Tang An,Yang Issac,Duchesne Nathalie,Duchesne Simon
Abstract
AbstractThe COVID-19 pandemic repeatedly overwhelms healthcare systems capacity and forced the development and implementation of triage guidelines in ICU for scarce resources (e.g. mechanical ventilation). These guidelines were often based on known risk factors for COVID-19. It is proposed that image data, specifically bedside computed X-ray (CXR), provide additional predictive information on mortality following mechanical ventilation that can be incorporated in the guidelines. Deep transfer learning was used to extract convolutional features from a systematically collected, multi-institutional dataset of COVID-19 ICU patients. A model predicting outcome of mechanical ventilation (remission or mortality) was trained on the extracted features and compared to a model based on known, aggregated risk factors. The model reached a 0.702 area under the curve (95% CI 0.707-0.694) at predicting mechanical ventilation outcome from pre-intubation CXRs, higher than the risk factor model. Combining imaging data and risk factors increased model performance to 0.743 AUC (95% CI 0.746-0.732). Additionally, a post-hoc analysis showed an increase performance on high-quality than low-quality CXRs, suggesting that using only high-quality images would result in an even stronger model.
Publisher
Springer Science and Business Media LLC
Cited by
6 articles.
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