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Predictive Modeling of Morbidity and Mortality in Patients Hospitalized With COVID-19 and its Clinical Implications: Algorithm Development and Interpretation.

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  • Additional Information
    • Source:
      Publisher: JMIR Publications Country of Publication: Canada NLM ID: 100959882 Publication Model: Electronic Cited Medium: Internet ISSN: 1438-8871 (Electronic) Linking ISSN: 14388871 NLM ISO Abbreviation: J Med Internet Res Subsets: MEDLINE
    • Publication Information:
      Publication: <2011- > : Toronto : JMIR Publications
      Original Publication: [Pittsburgh, PA? : s.n., 1999-
    • Subject Terms:
    • Abstract:
      Background: The COVID-19 pandemic began in early 2021 and placed significant strains on health care systems worldwide. There remains a compelling need to analyze factors that are predictive for patients at elevated risk of morbidity and mortality.
      Objective: The goal of this retrospective study of patients who tested positive with COVID-19 and were treated at NYU (New York University) Langone Health was to identify clinical markers predictive of disease severity in order to assist in clinical decision triage and to provide additional biological insights into disease progression.
      Methods: The clinical activity of 3740 patients at NYU Langone Hospital was obtained between January and August 2020; patient data were deidentified. Models were trained on clinical data during different parts of their hospital stay to predict three clinical outcomes: deceased, ventilated, or admitted to the intensive care unit (ICU).
      Results: The XGBoost (eXtreme Gradient Boosting) model that was trained on clinical data from the final 24 hours excelled at predicting mortality (area under the curve [AUC]=0.92; specificity=86%; and sensitivity=85%). Respiration rate was the most important feature, followed by SpO 2 (peripheral oxygen saturation) and being aged 75 years and over. Performance of this model to predict the deceased outcome extended 5 days prior, with AUC=0.81, specificity=70%, and sensitivity=75%. When only using clinical data from the first 24 hours, AUCs of 0.79, 0.80, and 0.77 were obtained for deceased, ventilated, or ICU-admitted outcomes, respectively. Although respiration rate and SpO 2 levels offered the highest feature importance, other canonical markers, including diabetic history, age, and temperature, offered minimal gain. When lab values were incorporated, prediction of mortality benefited the most from blood urea nitrogen and lactate dehydrogenase (LDH). Features that were predictive of morbidity included LDH, calcium, glucose, and C-reactive protein.
      Conclusions: Together, this work summarizes efforts to systematically examine the importance of a wide range of features across different endpoint outcomes and at different hospitalization time points.
      (©Joshua M Wang, Wenke Liu, Xiaoshan Chen, Michael P McRae, John T McDevitt, David Fenyö. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 09.07.2021.)
    • Comments:
      Update of: medRxiv. 2020 Dec 05;:. (PMID: 33300013)
    • References:
      Lancet Infect Dis. 2021 Feb;21(2):203-212. (PMID: 33091374)
      Medicine (Baltimore). 2019 Apr;98(16):e15275. (PMID: 31008971)
      Clin Infect Dis. 2017 Jul 15;65(2):183-190. (PMID: 28407054)
      Front Cell Dev Biol. 2020 Jul 31;8:683. (PMID: 32850809)
      Crit Care Clin. 2001 Jan;17(1):107-24. (PMID: 11219223)
      Clin Biochem Rev. 2004 May;25(2):121-32. (PMID: 18458712)
      Crit Care. 2020 Jul 24;24(1):459. (PMID: 32709251)
      Clin Chim Acta. 1987 Oct 30;169(1):1-76. (PMID: 3315317)
      J Infect Public Health. 2020 Sep;13(9):1224-1228. (PMID: 32622796)
      Clin Chem Lab Med. 2020 May 27;58(9):e171-e173. (PMID: 32459190)
      J Card Fail. 2007 Jun;13(5):360-4. (PMID: 17602982)
      JAMA. 2020 Mar 17;323(11):1061-1069. (PMID: 32031570)
      Int J Med Sci. 2020 Sep 9;17(16):2468-2476. (PMID: 33029089)
      J Clin Virol. 2020 Jun;127:104370. (PMID: 32344321)
      Int J Antimicrob Agents. 2020 Aug;56(2):106051. (PMID: 32534186)
      J Med Internet Res. 2020 Aug 24;22(8):e22033. (PMID: 32750010)
      NPJ Digit Med. 2020 Oct 6;3:130. (PMID: 33083565)
      Lung. 2014 Feb;192(1):141-9. (PMID: 24221341)
      J Clin Med. 2020 Jun 01;9(6):. (PMID: 32492874)
      Clin Chem. 2019 Dec;65(12):1532-1542. (PMID: 31615771)
      Cardiol J. 2018;25(3):371-376. (PMID: 28653311)
      Clin Chem. 2019 Dec;65(12):1474-1476. (PMID: 31672860)
      Nutrition. 2011 Mar;27(3):276-81. (PMID: 20869205)
      Aging (Albany NY). 2020 Jun 25;12(12):11287-11295. (PMID: 32589164)
    • Grant Information:
      T32 GM136573 United States GM NIGMS NIH HHS; TL1 TR001447 United States TR NCATS NIH HHS; UL1 TR001445 United States TR NCATS NIH HHS
    • Contributed Indexing:
      Keywords: COVID-19; New York City; SARS-CoV-2; coronavirus; decision making; hospital; machine learning; marker; model; morbidity; mortality; outcome; prediction; predictive modeling; severity; symptom
    • Publication Date:
      Date Created: 20210603 Date Completed: 20210720 Latest Revision: 20221025
    • Publication Date:
      20240104
    • Accession Number:
      PMC8274681
    • Accession Number:
      10.2196/29514
    • Accession Number:
      34081611