Comparing machine learning algorithms for predicting ICU admission and mortality in COVID-19

As predicting the trajectory of COVID-19 is challenging, machine learning models could assist physicians in identifying high-risk individuals. This study compares the performance of 18 machine learning algorithms for predicting ICU admission and mortality among COVID-19 patients. Using COVID-19 pati...

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Veröffentlicht in:NPJ digital medicine 2021-05, Vol.4 (1), p.87-87, Article 87
Hauptverfasser: Subudhi, Sonu, Verma, Ashish, Patel, Ankit B., Hardin, C. Corey, Khandekar, Melin J., Lee, Hang, McEvoy, Dustin, Stylianopoulos, Triantafyllos, Munn, Lance L., Dutta, Sayon, Jain, Rakesh K.
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Sprache:eng
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Zusammenfassung:As predicting the trajectory of COVID-19 is challenging, machine learning models could assist physicians in identifying high-risk individuals. This study compares the performance of 18 machine learning algorithms for predicting ICU admission and mortality among COVID-19 patients. Using COVID-19 patient data from the Mass General Brigham (MGB) Healthcare database, we developed and internally validated models using patients presenting to the Emergency Department (ED) between March-April 2020 ( n  = 3597) and further validated them using temporally distinct individuals who presented to the ED between May-August 2020 ( n  = 1711). We show that ensemble-based models perform better than other model types at predicting both 5-day ICU admission and 28-day mortality from COVID-19. CRP, LDH, and O 2 saturation were important for ICU admission models whereas eGFR
ISSN:2398-6352
2398-6352
DOI:10.1038/s41746-021-00456-x