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Published in: Internal and Emergency Medicine 8/2020

Open Access 01-11-2020 | COVID-19 | IM - ORIGINAL

Derivation and validation of the clinical prediction model for COVID-19

Authors: Fabrizio Foieni, Girolamo Sala, Jason Giuseppe Mognarelli, Giulia Suigo, Davide Zampini, Matteo Pistoia, Mariella Ciola, Tommaso Ciampani, Carolina Ultori, Paolo Ghiringhelli

Published in: Internal and Emergency Medicine | Issue 8/2020

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Abstract

The epidemic phase of Coronavirus disease 2019 (COVID-19) made the Worldwide health system struggle against a severe interstitial pneumonia requiring high-intensity care settings for respiratory failure. A rationalisation of resources and a specific treatment path were necessary. The study suggests a predictive model drawing on clinical data gathered by 119 consecutive patients with laboratory-confirmed COVID-19 admitted in Busto Arsizio hospital. We derived a score that identifies the risk of clinical evolution and in-hospital mortality clustering patients into four groups. The study outcomes have been compared across the derivation and validation samples. The prediction rule is based on eight simple patient characteristics that were independently associated with study outcomes. It is able to stratify COVID-19 patients into four severity classes, with in-hospital mortality rates of 0% in group 1, 6–12.5% in group 2, 7–20% in group 3 and 60–86% in group 4 across the derivation and validation sample. The prediction model derived in this study identifies COVID-19 patients with low risk of in-hospital mortality and ICU admission. The prediction model that the study presents identifies COVID-19 patients with low risk of in-hospital mortality and admission to ICU. Moreover, it establishes an intermediate portion of patients that should be treated accurately in order to avoid an unfavourable clinical evolution. A further validation of the model is important before its implementation as a decision-making tool to guide the initial management of patients.
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Metadata
Title
Derivation and validation of the clinical prediction model for COVID-19
Authors
Fabrizio Foieni
Girolamo Sala
Jason Giuseppe Mognarelli
Giulia Suigo
Davide Zampini
Matteo Pistoia
Mariella Ciola
Tommaso Ciampani
Carolina Ultori
Paolo Ghiringhelli
Publication date
01-11-2020
Publisher
Springer International Publishing
Keyword
COVID-19
Published in
Internal and Emergency Medicine / Issue 8/2020
Print ISSN: 1828-0447
Electronic ISSN: 1970-9366
DOI
https://doi.org/10.1007/s11739-020-02480-3

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