Symptom-Based Predictive Model of COVID-19 Disease in Children

Author
Date
2022-12-30Permanent link
https://hdl.handle.net/11351/7738DOI
10.3390/v14010063
ISSN
1999-4915
PMID
35062267
Abstract
Background: Testing for severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) infection is neither always accessible nor easy to perform in children. We aimed to propose a machine learning model to assess the need for a SARS-CoV-2 test in children (<16 years old), depending on their clinical symptoms. Methods: Epidemiological and clinical data were obtained from the REDCap® registry. Overall, 4434 SARS-CoV-2 tests were performed in symptomatic children between 1 November 2020 and 31 March 2021, 784 were positive (17.68%). We pre-processed the data to be suitable for a machine learning (ML) algorithm, balancing the positive-negative rate and preparing subsets of data by age. We trained several models and chose those with the best performance for each subset. Results: The use of ML demonstrated an AUROC of 0.65 to predict a COVID-19 diagnosis in children. The absence of high-grade fever was the major predictor of COVID-19 in younger children, whereas loss of taste or smell was the most determinant symptom in older children. Conclusions: Although the accuracy of the models was lower than expected, they can be used to provide a diagnosis when epidemiological data on the risk of exposure to COVID-19 is unknown.
Keywords
COVID-19; Microbiology; PaediatricsBibliographic citation
Antoñanzas JM, Perramon A, López C, Boneta M, Aguilera C, Capdevila R, et al. Symptom-Based Predictive Model of COVID-19 Disease in Children. Viruses. 2022 Dec 30;14(1):63.
Audience
Professionals
This item appears in following collections
- Col·lecció especial COVID-19 [945]
- HVH - Articles científics [4476]
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