Utilize este identificador para referenciar este registo: http://hdl.handle.net/10362/143544
Título: Development of a Prediction Model for COVID-19 Acute Respiratory Distress Syndrome in Patients With Rheumatic Diseases
Autor: Izadi, Zara
Gianfrancesco, Milena A.
Aguirre, Alfredo
Strangfeld, Anja
Mateus, Elsa F.
Hyrich, Kimme L.
Gossec, Laure
Carmona, Loreto
Lawson-Tovey, Saskia
Kearsley-Fleet, Lianne
Schaefer, Martin
Seet, Andrea M.
Schmajuk, Gabriela
Jacobsohn, Lindsay
Katz, Patricia
Rush, Stephanie
Al-Emadi, Samar
Sparks, Jeffrey A.
Hsu, Tiffany Y.T.
Patel, Naomi J.
Wise, Leanna
Gilbert, Emily
Duarte-García, Alí
Valenzuela-Almada, Maria O.
Ugarte-Gil, Manuel F.
Ribeiro, Sandra Lúcia Euzébio
de Oliveira Marinho, Adriana
de Azevedo Valadares, Lilian David
Giuseppe, Daniela Di
Hasseli, Rebecca
Richter, Jutta G.
Pfeil, Alexander
Schmeiser, Tim
Isnardi, Carolina A.
Reyes Torres, Alvaro A.
Alle, Gelsomina
Saurit, Verónica
Zanetti, Anna
Carrara, Greta
Labreuche, Julien
Barnetche, Thomas
Herasse, Muriel
Plassart, Samira
Santos, Maria José
Maria Rodrigues, Ana
Robinson, Philip C.
Machado, Pedro M.
Sirotich, Emily
Liew, Jean W.
Hausmann, Jonathan S.
Palavras-chave: Rheumatology
Data: Out-2022
Resumo: Objective: Some patients with rheumatic diseases might be at higher risk for coronavirus disease 2019 (COVID-19) acute respiratory distress syndrome (ARDS). We aimed to develop a prediction model for COVID-19 ARDS in this population and to create a simple risk score calculator for use in clinical settings. Methods: Data were derived from the COVID-19 Global Rheumatology Alliance Registry from March 24, 2020, to May 12, 2021. Seven machine learning classifiers were trained on ARDS outcomes using 83 variables obtained at COVID-19 diagnosis. Predictive performance was assessed in a US test set and was validated in patients from four countries with independent registries using area under the curve (AUC), accuracy, sensitivity, and specificity. A simple risk score calculator was developed using a regression model incorporating the most influential predictors from the best performing classifier. Results: The study included 8633 patients from 74 countries, of whom 523 (6%) had ARDS. Gradient boosting had the highest mean AUC (0.78; 95% confidence interval [CI]: 0.67-0.88) and was considered the top performing classifier. Ten predictors were identified as key risk factors and were included in a regression model. The regression model that predicted ARDS with 71% (95% CI: 61%-83%) sensitivity in the test set, and with sensitivities ranging from 61% to 80% in countries with independent registries, was used to develop the risk score calculator. Conclusion: We were able to predict ARDS with good sensitivity using information readily available at COVID-19 diagnosis. The proposed risk score calculator has the potential to guide risk stratification for treatments, such as monoclonal antibodies, that have potential to reduce COVID-19 disease progression.
Descrição: Funding Information: We acknowledge financial support from the ACR and EULAR. The ACR and EULAR were not involved in the design and conduct of the study; collection, management, analysis, and interpretation of the data; preparation, review, or approval of the manuscript; and decision to submit the manuscript for publication. Publisher Copyright: © 2022 The Authors. ACR Open Rheumatology published by Wiley Periodicals LLC on behalf of American College of Rheumatology.
Peer review: yes
URI: http://hdl.handle.net/10362/143544
DOI: https://doi.org/10.1002/acr2.11481
ISSN: 2578-5745
Aparece nas colecções:NMS: CEDOC - Artigos em revista internacional com arbitragem científica



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