Journal of Clinical Medicine (Sep 2020)

The PANDEMYC Score. An Easily Applicable and Interpretable Model for Predicting Mortality Associated With COVID-19

  • Juan Torres-Macho,
  • Pablo Ryan,
  • Jorge Valencia,
  • Mario Pérez-Butragueño,
  • Eva Jiménez,
  • Mario Fontán-Vela,
  • Elsa Izquierdo-García,
  • Inés Fernandez-Jimenez,
  • Elena Álvaro-Alonso,
  • Andrea Lazaro,
  • Marta Alvarado,
  • Helena Notario,
  • Salvador Resino,
  • Daniel Velez-Serrano,
  • Alejandro Meca

DOI
https://doi.org/10.3390/jcm9103066
Journal volume & issue
Vol. 9, no. 10
p. 3066

Abstract

Read online

This study aimed to build an easily applicable prognostic model based on routine clinical, radiological, and laboratory data available at admission, to predict mortality in coronavirus 19 disease (COVID-19) hospitalized patients. Methods: We retrospectively collected clinical information from 1968 patients admitted to a hospital. We built a predictive score based on a logistic regression model in which explicative variables were discretized using classification trees that facilitated the identification of the optimal sections in order to predict inpatient mortality in patients admitted with COVID-19. These sections were translated into a score indicating the probability of a patient’s death, thus making the results easy to interpret. Results. Median age was 67 years, 1104 patients (56.4%) were male, and 325 (16.5%) died during hospitalization. Our final model identified nine key features: age, oxygen saturation, smoking, serum creatinine, lymphocytes, hemoglobin, platelets, C-reactive protein, and sodium at admission. The discrimination of the model was excellent in the training, validation, and test samples (AUC: 0.865, 0.808, and 0.883, respectively). We constructed a prognostic scale to determine the probability of death associated with each score. Conclusions: We designed an easily applicable predictive model for early identification of patients at high risk of death due to COVID-19 during hospitalization.

Keywords