More than a year has passed since the report of the first case of coronavirus disease 2019 (COVID), and increasing deaths continue to occur. Minimizing the time required for resource allocation and clinical decision making, such as triage, choice of ventilation modes and admission to the intensive care unit is important. Machine learning techniques are acquiring an increasingly sought-after role in predicting the outcome of COVID patients. Particularly, the use of baseline machine learning techniques is rapidly developing in COVID mortality prediction, since a mortality prediction model could rapidly and effectively help clinical decision-making for COVID patients at imminent risk of death. Recent studies reviewed predictive models for SARS-CoV-2 diagnosis, severity, length of hospital stay, intensive care unit admission or mechanical ventilation modes outcomes; however, systematic reviews focused on prediction of COVID mortality outcome with machine learning methods are lacking in the literature. The present review looked into the studies that implemented machine learning, including deep learning, methods in COVID mortality prediction thus trying to present the existing published literature and to provide possible explanations of the best results that the studies obtained. The study also discussed challenging aspects of current studies, providing suggestions for future developments.

COVID mortality prediction with machine learning methods. A systematic review and critical appraisal / Bottino, F.; Tagliente, E.; Pasquini, L.; Di Napoli, A.; Lucignani, M.; Figa-talamanca, L.; Napolitano, A.. - In: JOURNAL OF PERSONALIZED MEDICINE. - ISSN 2075-4426. - 11:9(2021), pp. 1-21. [10.3390/jpm11090893]

COVID mortality prediction with machine learning methods. A systematic review and critical appraisal

Bottino F.
;
Pasquini L.;Di Napoli A.;
2021

Abstract

More than a year has passed since the report of the first case of coronavirus disease 2019 (COVID), and increasing deaths continue to occur. Minimizing the time required for resource allocation and clinical decision making, such as triage, choice of ventilation modes and admission to the intensive care unit is important. Machine learning techniques are acquiring an increasingly sought-after role in predicting the outcome of COVID patients. Particularly, the use of baseline machine learning techniques is rapidly developing in COVID mortality prediction, since a mortality prediction model could rapidly and effectively help clinical decision-making for COVID patients at imminent risk of death. Recent studies reviewed predictive models for SARS-CoV-2 diagnosis, severity, length of hospital stay, intensive care unit admission or mechanical ventilation modes outcomes; however, systematic reviews focused on prediction of COVID mortality outcome with machine learning methods are lacking in the literature. The present review looked into the studies that implemented machine learning, including deep learning, methods in COVID mortality prediction thus trying to present the existing published literature and to provide possible explanations of the best results that the studies obtained. The study also discussed challenging aspects of current studies, providing suggestions for future developments.
2021
computer tomography (ct); covid; deep learning; imaging; machine learning; mortality; prediction
01 Pubblicazione su rivista::01g Articolo di rassegna (Review)
COVID mortality prediction with machine learning methods. A systematic review and critical appraisal / Bottino, F.; Tagliente, E.; Pasquini, L.; Di Napoli, A.; Lucignani, M.; Figa-talamanca, L.; Napolitano, A.. - In: JOURNAL OF PERSONALIZED MEDICINE. - ISSN 2075-4426. - 11:9(2021), pp. 1-21. [10.3390/jpm11090893]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1575529
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