Predicting COVID-19-Induced Lung Damage Based on Machine Learning Methods

In this paper, we consider the course of the coronavirus disease (COVID-19) in human patients. We investigate anamnesis, examination, and clinical analysis data, as well as other features that can affect the severity and mortality of COVID-19. Based on these features, we develop a set of machine lea...

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Bibliographic Details
Published inProgramming and computer software Vol. 48; no. 4; pp. 243 - 255
Main Authors Vasilev, I. A., Petrovskiy, M. I., Mashechkin, I. V., Pankratyeva, L. L.
Format Journal Article
LanguageEnglish
Published Moscow Pleiades Publishing 01.08.2022
Springer Nature B.V
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Summary:In this paper, we consider the course of the coronavirus disease (COVID-19) in human patients. We investigate anamnesis, examination, and clinical analysis data, as well as other features that can affect the severity and mortality of COVID-19. Based on these features, we develop a set of machine learning and statistical models that can predict the severity of the coronavirus disease and its outcome for inpatients and outpatients. The main contribution of this work is the development of the CT Calculator service, which is integrated in the Moscow city medical information system. This service allows one to assesses the degree of changes in the lung tissue of COVID-19 patients in an express mode without computed tomography (CT) scan, as well as predict the degree of lung damage. The developed machine learning models make it possible to determine the degree of risk for mild and severe forms of the coronavirus disease depending on various factors.
ISSN:0361-7688
1608-3261
DOI:10.1134/S0361768822040065