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Methods for detecting probable COVID-19 cases from large-scale survey data also reveal probable sex differences in symptom profiles

BACKGROUND: Daily symptom reporting collected via web-based symptom survey tools holds the potential to improve disease monitoring. Such screening tools might be able to not only discriminate between states of acute illness and non-illness, but also make use of additional demographic information so...

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Autores principales: Klein, Amit, Puldon, Karena, Dilchert, Stephan, Hartogensis, Wendy, Chowdhary, Anoushka, Anglo, Claudine, Pandya, Leena S., Hecht, Frederick M., Mason, Ashley E., Smarr, Benjamin L.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9685297/
https://www.ncbi.nlm.nih.gov/pubmed/36438983
http://dx.doi.org/10.3389/fdata.2022.1043704
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author Klein, Amit
Puldon, Karena
Dilchert, Stephan
Hartogensis, Wendy
Chowdhary, Anoushka
Anglo, Claudine
Pandya, Leena S.
Hecht, Frederick M.
Mason, Ashley E.
Smarr, Benjamin L.
author_facet Klein, Amit
Puldon, Karena
Dilchert, Stephan
Hartogensis, Wendy
Chowdhary, Anoushka
Anglo, Claudine
Pandya, Leena S.
Hecht, Frederick M.
Mason, Ashley E.
Smarr, Benjamin L.
author_sort Klein, Amit
collection PubMed
description BACKGROUND: Daily symptom reporting collected via web-based symptom survey tools holds the potential to improve disease monitoring. Such screening tools might be able to not only discriminate between states of acute illness and non-illness, but also make use of additional demographic information so as to identify how illnesses may differ across groups, such as biological sex. These capabilities may play an important role in the context of future disease outbreaks. OBJECTIVE: Use data collected via a daily web-based symptom survey tool to develop a Bayesian model that could differentiate between COVID-19 and other illnesses and refine this model to identify illness profiles that differ by biological sex. METHODS: We used daily symptom profiles to plot symptom progressions for COVID-19, influenza (flu), and the common cold. We then built a Bayesian network to discriminate between these three illnesses based on daily symptom reports. We further separated out the COVID-19 cohort into self-reported female and male subgroups to observe any differences in symptoms relating to sex. We identified key symptoms that contributed to a COVID-19 prediction in both males and females using a logistic regression model. RESULTS: Although the Bayesian model performed only moderately well in identifying a COVID-19 diagnosis (71.6% true positive rate), the model showed promise in being able to differentiate between COVID-19, flu, and the common cold, as well as periods of acute illness vs. non-illness. Additionally, COVID-19 symptoms differed between the biological sexes; specifically, fever was a more important symptom in identifying subsequent COVID-19 infection among males than among females. CONCLUSION: Web-based symptom survey tools hold promise as tools to identify illness and may help with coordinated disease outbreak responses. Incorporating demographic factors such as biological sex into predictive models may elucidate important differences in symptom profiles that hold implications for disease detection.
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spelling pubmed-96852972022-11-25 Methods for detecting probable COVID-19 cases from large-scale survey data also reveal probable sex differences in symptom profiles Klein, Amit Puldon, Karena Dilchert, Stephan Hartogensis, Wendy Chowdhary, Anoushka Anglo, Claudine Pandya, Leena S. Hecht, Frederick M. Mason, Ashley E. Smarr, Benjamin L. Front Big Data Big Data BACKGROUND: Daily symptom reporting collected via web-based symptom survey tools holds the potential to improve disease monitoring. Such screening tools might be able to not only discriminate between states of acute illness and non-illness, but also make use of additional demographic information so as to identify how illnesses may differ across groups, such as biological sex. These capabilities may play an important role in the context of future disease outbreaks. OBJECTIVE: Use data collected via a daily web-based symptom survey tool to develop a Bayesian model that could differentiate between COVID-19 and other illnesses and refine this model to identify illness profiles that differ by biological sex. METHODS: We used daily symptom profiles to plot symptom progressions for COVID-19, influenza (flu), and the common cold. We then built a Bayesian network to discriminate between these three illnesses based on daily symptom reports. We further separated out the COVID-19 cohort into self-reported female and male subgroups to observe any differences in symptoms relating to sex. We identified key symptoms that contributed to a COVID-19 prediction in both males and females using a logistic regression model. RESULTS: Although the Bayesian model performed only moderately well in identifying a COVID-19 diagnosis (71.6% true positive rate), the model showed promise in being able to differentiate between COVID-19, flu, and the common cold, as well as periods of acute illness vs. non-illness. Additionally, COVID-19 symptoms differed between the biological sexes; specifically, fever was a more important symptom in identifying subsequent COVID-19 infection among males than among females. CONCLUSION: Web-based symptom survey tools hold promise as tools to identify illness and may help with coordinated disease outbreak responses. Incorporating demographic factors such as biological sex into predictive models may elucidate important differences in symptom profiles that hold implications for disease detection. Frontiers Media S.A. 2022-11-10 /pmc/articles/PMC9685297/ /pubmed/36438983 http://dx.doi.org/10.3389/fdata.2022.1043704 Text en Copyright © 2022 Klein, Puldon, Dilchert, Hartogensis, Chowdhary, Anglo, Pandya, Hecht, Mason and Smarr. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Big Data
Klein, Amit
Puldon, Karena
Dilchert, Stephan
Hartogensis, Wendy
Chowdhary, Anoushka
Anglo, Claudine
Pandya, Leena S.
Hecht, Frederick M.
Mason, Ashley E.
Smarr, Benjamin L.
Methods for detecting probable COVID-19 cases from large-scale survey data also reveal probable sex differences in symptom profiles
title Methods for detecting probable COVID-19 cases from large-scale survey data also reveal probable sex differences in symptom profiles
title_full Methods for detecting probable COVID-19 cases from large-scale survey data also reveal probable sex differences in symptom profiles
title_fullStr Methods for detecting probable COVID-19 cases from large-scale survey data also reveal probable sex differences in symptom profiles
title_full_unstemmed Methods for detecting probable COVID-19 cases from large-scale survey data also reveal probable sex differences in symptom profiles
title_short Methods for detecting probable COVID-19 cases from large-scale survey data also reveal probable sex differences in symptom profiles
title_sort methods for detecting probable covid-19 cases from large-scale survey data also reveal probable sex differences in symptom profiles
topic Big Data
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9685297/
https://www.ncbi.nlm.nih.gov/pubmed/36438983
http://dx.doi.org/10.3389/fdata.2022.1043704
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