AI Article Synopsis

  • - The study aimed to analyze the acute phase of COVID-19 in hospitalized patients and create a prognostic scale for assessing their risk of death.
  • - It involved 9,364 patients from 26 medical centers across seven countries, using a machine learning model called "Random Forest" to identify key factors related to in-hospital mortality.
  • - The resulting ACTIV scale, developed from 11 significant variables, showed a strong predictive ability with 89.2% accuracy, aiding clinicians in evaluating the prognosis of COVID-19 patients.

Article Abstract

Unlabelled: The of this study is to investigate the course of the acute period of COVID-19 and devise a prognostic scale for patients hospitalized.

Materials And Methods: The ACTIV registry encompassed both male and female patients aged 18 years and above, who were diagnosed with COVID-19 and subsequently hospitalized. Between June 2020 and March 2021, a total of 9364 patients were enrolled across 26 medical centers in seven countries. Data collected during the patients' hospital stay were subjected to multivariate analysis within the R computational environment. A predictive mathematical model, utilizing the "Random Forest" machine learning algorithm, was established to assess the risk of reaching the endpoint (defined as in-hospital death from any cause). This model was constructed using a training subsample (70% of patients), and subsequently tested using a control subsample (30% of patients).

Results: Out of the 9364 hospitalized COVID-19 patients, 545 (5.8%) died. Multivariate analysis resulted in the selection of eleven variables for the final model: minimum oxygen saturation, glomerular filtration rate, age, hemoglobin level, lymphocyte percentage, white blood cell count, platelet count, aspartate aminotransferase, glucose, heart rate, and respiratory rate. Receiver operating characteristic analysis yielded an area under the curve of 89.2%, a sensitivity of 86.2%, and a specificity of 76.0%. Utilizing the final model, a predictive equation and nomogram (termed the ACTIV scale) were devised for estimating in-hospital mortality amongst COVID-19 patients.

Conclusion: The ACTIV scale provides a valuable tool for practicing clinicians to predict the risk of in-hospital death in patients hospitalized with COVID-19.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11002283PMC
http://dx.doi.org/10.1016/j.heliyon.2024.e28892DOI Listing

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