4.7 Article

Development and validation of a simplified nomogram predicting individual critical illness of risk in COVID-19: A retrospective study

Journal

JOURNAL OF MEDICAL VIROLOGY
Volume 93, Issue 4, Pages 1999-2009

Publisher

WILEY
DOI: 10.1002/jmv.26551

Keywords

coronavirus; COVID-19; critical; nomogram; prediction model

Categories

Funding

  1. National Natural Science Foundation of P.R. China [81800609]
  2. Second batch of COVID-19 prevention and control projects in Xinxiang [20GG008]
  3. HUST COVID-19 Rapid Response Call [2020kfyXGYJ015]

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This study aims to identify predictors of critical cases among COVID-19 patients and develop a simple-to-use nomogram for clinical utility. The study found that age, comorbid diseases, neutrophil-to-lymphocyte ratio, d-dimer, C-reactive protein, and platelet count were independent predictors of progression to critical cases in COVID-19 patients. The nomogram demonstrated good discrimination and calibration, and external validations supported its clinical relevance.
This study aims to screen useful predictors of critical cases among coronavirus disease 2019 (COVID-19) patients and to develop a simple-to-use nomogram for clinical utility. A retrospective study was conducted that consisted of a primary cohort with 315 COVID-19 patients and two validation cohorts with 69 and 123 patients, respectively. Logistic regression analyses were used to identify the independent risks of progression to critical. An individualized prediction model was developed, and calibration, decision curve, and clinical impact curves were used to assess the performance of the model. External validations for the predictive nomogram were also provided. The variables of age, comorbid diseases, neutrophil-to-lymphocyte ratio,d-dimer, C-reactive protein, and platelet count were estimated to be independent predictors of progression to critical, which were incorporated to establish a model of the nomogram. It demonstrated good discrimination (with a C-index of 0.923) and calibration. Good discrimination (C-index, 0.882 and 0.906) and calibration were also noted on applying the nomogram in two validation cohorts. The clinical relevance of the nomogram was justified by the decision curve and clinical impact curve analysis. This study presents an individualized prediction nomogram incorporating six clinical characteristics, which can be conveniently applied to assess an individual's risk of progressing to critical COVID-19.

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