- 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;
- Di Giuseppe, Daniela;
- Hasseli, Rebecca;
- Richter, Jutta G;
- Pfeil, Alexander;
- Schmeiser, Tim;
- Isnardi, Carolina A;
- Torres, Alvaro A Reyes;
- Alle, Gelsomina;
- Saurit, Verónica;
- Zanetti, Anna;
- Carrara, Greta;
- Labreuche, Julien;
- Barnetche, Thomas;
- Herasse, Muriel;
- Plassart, Samira;
- Santos, Maria José;
- Rodrigues, Ana Maria;
- Robinson, Philip C;
- Machado, Pedro M;
- Sirotich, Emily;
- Liew, Jean W;
- Hausmann, Jonathan S;
- Sufka, Paul;
- Grainger, Rebecca;
- Bhana, Suleman;
- Costello, Wendy;
- Wallace, Zachary S;
- Yazdany, Jinoos;
- Registry, Global Rheumatology Alliance
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.