Brazilian Journal of Infectious Diseases (Jul 2020)

A predictive score for COVID-19 diagnosis using clinical, laboratory and chest image data

  • Tarsila Vieceli,
  • Cilomar Martins de Oliveira Filho,
  • Mariana Berger,
  • Marina Petersen Saadi,
  • Pedro Antonio Salvador,
  • Leonardo Bressan Anizelli,
  • Pedro Castilhos de Freitas Crivelaro,
  • Mauricio Butzke,
  • Roberta de Souza Zappelini,
  • Beatriz Graeff dos Santos Seligman,
  • Renato Seligman

Journal volume & issue
Vol. 24, no. 4
pp. 343 – 348

Abstract

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Objectives: Differential diagnosis of COVID-19 includes a broad range of conditions. Prioritizing containment efforts, protective personal equipment and testing can be challenging. Our aim was to develop a tool to identify patients with higher probability of COVID-19 diagnosis at admission. Methods: This cross-sectional study analyzed data from 100 patients admitted with suspected COVID-19. Predictive models of COVID-19 diagnosis were performed based on radiology, clinical and laboratory findings; bootstrapping was performed in order to account for overfitting. Results: A total of 29% of patients tested positive for SARS-CoV-2. Variables associated with COVID-19 diagnosis in multivariate analysis were leukocyte count ≤7.7 × 103 mm–3, LDH >273 U/L, and chest radiographic abnormality. A predictive score was built for COVID-19 diagnosis, with an area under ROC curve of 0.847 (95% CI 0.77–0.92), 96% sensitivity and 73.5% specificity. After bootstrapping, the corrected AUC for this model was 0.827 (95% CI 0.75–0.90). Conclusions: Considering unavailability of RT-PCR at some centers, as well as its questionable early sensitivity, other tools might be used in order to identify patients who should be prioritized for testing, re-testing and admission to isolated wards. We propose a predictive score that can be easily applied in clinical practice. This score is yet to be validated in larger populations.

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