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Simple predictive models identify patients with COVID-19 pneumonia and poor prognosis

Author

Listed:
  • Mar Riveiro-Barciela
  • Moisés Labrador-Horrillo
  • Laura Camps-Relats
  • Didac González-Sans
  • Meritxell Ventura-Cots
  • María Terrones-Peinador
  • Andrea Nuñez-Conde
  • Mónica Martínez-Gallo
  • Manuel Hernández
  • Andrés Antón
  • Antonio González
  • Ricardo Pujol-Borrell
  • Fernando Martínez-Valle

Abstract

Background and aims: Identification of SARS-CoV-2-infected patients at high-risk of poor prognosis is crucial. We aimed to establish predictive models for COVID-19 pneumonia severity in hospitalized patients. Methods: Retrospective study of 430 patients admitted in Vall d’Hebron Hospital (Barcelona) between 03-12-2020 and 04-28-2020 due to COVID-19 pneumonia. Two models to identify the patients who required high-flow-oxygen-support were generated, one using baseline data and another with also follow-up analytical results. Calibration was performed by a 1000-bootstrap replication model. Results: 249 were male, mean age 57.9 years. Overall, 135 (31.4%) required high-flow-oxygen-support. The baseline predictive model showed a ROC of 0.800 based on: SpO2/FiO2 (adjusted Hazard Ratio-aHR = 8), chest x-ray (aHR = 4), prior immunosuppressive therapy (aHR = 4), obesity (aHR = 2), IL-6 (aHR = 2), platelets (aHR = 0.5). The cut-off of 11 presented a specificity of 94.8%. The second model included changes on the analytical parameters: ferritin (aHR = 7.5 if ≥200ng/mL) and IL-6 (aHR = 18 if ≥64pg/mL) plus chest x-ray (aHR = 2) showing a ROC of 0.877. The cut-off of 12 exhibited a negative predictive value of 92%. Conclusions: SpO2/FiO2 and chest x-ray on admission or changes on inflammatory parameters as IL-6 and ferritin allow us early identification of COVID-19 patients at risk of high-flow-oxygen-support that may benefit from a more intensive disease management.

Suggested Citation

  • Mar Riveiro-Barciela & Moisés Labrador-Horrillo & Laura Camps-Relats & Didac González-Sans & Meritxell Ventura-Cots & María Terrones-Peinador & Andrea Nuñez-Conde & Mónica Martínez-Gallo & Manuel Hern, 2020. "Simple predictive models identify patients with COVID-19 pneumonia and poor prognosis," PLOS ONE, Public Library of Science, vol. 15(12), pages 1-14, December.
  • Handle: RePEc:plo:pone00:0244627
    DOI: 10.1371/journal.pone.0244627
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