2024
DOI: 10.22541/au.170665763.39770548/v1
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Predicting the severity of disease progression in COVID-19 at the individual and population level: A mathematical model

Narendra Chirmule,
Pradip Nair,
Bela Desai
et al.

Abstract: The impact of COVID-19 disease on health and economy has been global, and the magnitude of devastation is unparalleled in modern history. Any potential course of action to manage this complex disease requires the systematic and efficient analysis of data that can delineate the underlying pathogenesis. We have developed a mathematical model of disease progression to predict the clinical outcome, utilizing a set of causal factors known to contribute to COVID-19 pathology such as age, comorbidities, and certain v… Show more

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