Artificial intelligence for predicting mortality in hospitalized COVID-19 patients

Background The global demographic situation has been significantly impacted by the COVID-19 pandemic. The objective of this study was to develop a model that predicts the risk of COVID-associated mortality using clinical and laboratory data collected within 72 h of hospital admission. Materials and...

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Veröffentlicht in:Digital health 2024-01, Vol.10, p.20552076241287919
Hauptverfasser: Korsakov, Igor N., Karonova, Tatiana L., Mikhaylova, Arina A., Loboda, Alexander A., Chernikova, Alyona T., Mikheeva, Anna G., Sharypova, Marina V., Konradi, Alexandra O., Shlyakhto, Evgeny V.
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Sprache:eng
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Zusammenfassung:Background The global demographic situation has been significantly impacted by the COVID-19 pandemic. The objective of this study was to develop a model that predicts the risk of COVID-associated mortality using clinical and laboratory data collected within 72 h of hospital admission. Materials and methods A total of 3024 subjects with PCR-confirmed COVID-19 were admitted to Almazov National Research Medical Center between May 2020 and August 2021. Among them, 6.25% (n = 189) of patients had a fatal outcome. Five machine learning models and the Boruta-SHAP feature selection method were utilized to assess the risk of mortality during COVID-19 hospitalization. Results All methods demonstrated high efficacy, with ROC AUC (Receiver Operating Characteristic Area Under the Curve) values exceeding 80%. The selected Boruta-SHAP features, when incorporated into the random forest model, achieved an ROC AUC of 93.1% in the validation. Conclusion Throughout the study, close collaboration with healthcare professionals ensured that the developed tool met their practical needs. The success of our model validates the potential of machine learning techniques as decision support systems in clinical practice.
ISSN:2055-2076
2055-2076
DOI:10.1177/20552076241287919