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Development and validation of a clinical score to estimate progression to severe or critical state in Covid-19 pneumonia hospitalized patients

Authors :
Manuel Taboada-Muñiz
María Jesús Domínguez-Santalla
Luis Valdés
Francisco Gude
Felipe Calle-Velles
María Luisa Pérez del Molino
Cristóbal Galbán-Rodríguez
Romina Abelleira-Paris
Carmen Beceiro-Abad
Lucía Ferreiro
Cristina Pou
Antonio Pose
Óscar Lado-Baleato
José Ramón González-Juanatey
Hadrián Pernas-Pardavila
Pablo Manuel Varela-García
María Pazo-Núñez
Juan Suárez-Antelo
Arturo Gonzalez-Quintela
Adriana Lama
Ana Iglesias Casal
Sonia Molinos-Castro
María E. Toubes
Plácido Mayán-Conesa
Vanessa Riveiro
Néstor Agra-Vázquez
Martín Vidal-Vázquez
Emilio Páez-Guillán
Tamara Lourido
Nuria Rodríguez-Núñez
Julián Álvarez-Escudero
Carlos Rábade
Ana T. Marques-Afonso
Jorge Ricoy
Carmen Martínez-Rey
Source :
RUNA. Repositorio da Consellería de Sanidade e Sergas, Servizo Galego de Saúde (SERGAS), Scientific Reports, Vol 10, Iss 1, Pp 1-10 (2020), Scientific Reports
Publication Year :
2020

Abstract

The prognosis of a patient with Covid-19 pneumonia is uncertain. Our objective was to establish a predictive model of disease progression to facilitate early decision-making. A retrospective study was performed of patients admitted with Covid-19 pneumonia, classified as severe (admission to the intensive care unit, mechanic invasive ventilation, or death) or non-severe. A predictive model based on clinical, analytical, and radiological parameters was built. The probability of progression to severe disease was estimated by logistic regression analysis. Calibration and discrimination (receiver operating characteristics curves and AUC) were assessed to determine model performance. During the study period 1,152 patients presented with Covid-19 infection, of whom 229 (19.9%) were admitted for pneumonia. During hospitalization, 51 (22.3%) progressed to severe disease, of whom 26 required ICU care (11.4); 17 (7.4%) underwent invasive mechanical ventilation, and 32 (14%) died of any cause. Five predictors determined within 24 hours of admission were identified: Diabetes, Age, Lymphocyte count, SaO2, and pH (DALSH score). The prediction model showed a good clinical performance, including discrimination (AUC 0.87 CI 0.81, 0.92) and calibration (Brier score = 0.11). In total, 0%, 12%, and 50% of patients with severity risk scores ≤5%, 6-25%, and >25% exhibited disease progression, respectively. A simple risk score based on five factors predicts disease progression and facilitates early decision-making according to prognosis. Carlos III Health Institute, Spain, Ministry of Economy and Competitiveness (SPAIN) and the European Regional Development Fund (FEDER) Instituto de Salud Carlos III

Details

Database :
OpenAIRE
Journal :
RUNA. Repositorio da Consellería de Sanidade e Sergas, Servizo Galego de Saúde (SERGAS), Scientific Reports, Vol 10, Iss 1, Pp 1-10 (2020), Scientific Reports
Accession number :
edsair.doi.dedup.....149e9bcde75330a30806e5970e8ef411