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COVID-19 Phenotypes and Comorbidity: A Data-Driven, Pattern Recognition Approach Using National Representative Data from the United States

The aim of our study was to determine COVID-19 syndromic phenotypes in a data-driven manner using the survey results based on survey results from Carnegie Mellon University’s Delphi Group. Monthly survey results (>1 million responders per month; 320,326 responders with a certain COVID-19 test sta...

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Autores principales: Vavougios, George D., Stavrou, Vasileios T., Konstantatos, Christoforos, Sinigalias, Pavlos-Christoforos, Zarogiannis, Sotirios G., Kolomvatsos, Konstantinos, Stamoulis, George, Gourgoulianis, Konstantinos I.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9029400/
https://www.ncbi.nlm.nih.gov/pubmed/35457497
http://dx.doi.org/10.3390/ijerph19084630
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author Vavougios, George D.
Stavrou, Vasileios T.
Konstantatos, Christoforos
Sinigalias, Pavlos-Christoforos
Zarogiannis, Sotirios G.
Kolomvatsos, Konstantinos
Stamoulis, George
Gourgoulianis, Konstantinos I.
author_facet Vavougios, George D.
Stavrou, Vasileios T.
Konstantatos, Christoforos
Sinigalias, Pavlos-Christoforos
Zarogiannis, Sotirios G.
Kolomvatsos, Konstantinos
Stamoulis, George
Gourgoulianis, Konstantinos I.
author_sort Vavougios, George D.
collection PubMed
description The aim of our study was to determine COVID-19 syndromic phenotypes in a data-driven manner using the survey results based on survey results from Carnegie Mellon University’s Delphi Group. Monthly survey results (>1 million responders per month; 320,326 responders with a certain COVID-19 test status and disease duration <30 days were included in this study) were used sequentially in identifying and validating COVID-19 syndromic phenotypes. Logistic Regression-weighted multiple correspondence analysis (LRW-MCA) was used as a preprocessing procedure, in order to weigh and transform symptoms recorded by the survey to eigenspace coordinates, capturing a total variance of >75%. These scores, along with symptom duration, were subsequently used by the Two Step Clustering algorithm to produce symptom clusters. Post-hoc logistic regression models adjusting for age, gender, and comorbidities and confirmatory linear principal components analyses were used to further explore the data. Model creation, based on August’s 66,165 included responders, was subsequently validated in data from March–December 2020. Five validated COVID-19 syndromes were identified in August: 1. Afebrile (0%), Non-Coughing (0%), Oligosymptomatic (ANCOS); 2. Febrile (100%) Multisymptomatic (FMS); 3. Afebrile (0%) Coughing (100%) Oligosymptomatic (ACOS); 4. Oligosymptomatic with additional self-described symptoms (100%; OSDS); 5. Olfaction/Gustatory Impairment Predominant (100%; OGIP). Our findings indicate that the COVID-19 spectrum may be undetectable when applying current disease definitions focusing on respiratory symptoms alone.
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spelling pubmed-90294002022-04-23 COVID-19 Phenotypes and Comorbidity: A Data-Driven, Pattern Recognition Approach Using National Representative Data from the United States Vavougios, George D. Stavrou, Vasileios T. Konstantatos, Christoforos Sinigalias, Pavlos-Christoforos Zarogiannis, Sotirios G. Kolomvatsos, Konstantinos Stamoulis, George Gourgoulianis, Konstantinos I. Int J Environ Res Public Health Article The aim of our study was to determine COVID-19 syndromic phenotypes in a data-driven manner using the survey results based on survey results from Carnegie Mellon University’s Delphi Group. Monthly survey results (>1 million responders per month; 320,326 responders with a certain COVID-19 test status and disease duration <30 days were included in this study) were used sequentially in identifying and validating COVID-19 syndromic phenotypes. Logistic Regression-weighted multiple correspondence analysis (LRW-MCA) was used as a preprocessing procedure, in order to weigh and transform symptoms recorded by the survey to eigenspace coordinates, capturing a total variance of >75%. These scores, along with symptom duration, were subsequently used by the Two Step Clustering algorithm to produce symptom clusters. Post-hoc logistic regression models adjusting for age, gender, and comorbidities and confirmatory linear principal components analyses were used to further explore the data. Model creation, based on August’s 66,165 included responders, was subsequently validated in data from March–December 2020. Five validated COVID-19 syndromes were identified in August: 1. Afebrile (0%), Non-Coughing (0%), Oligosymptomatic (ANCOS); 2. Febrile (100%) Multisymptomatic (FMS); 3. Afebrile (0%) Coughing (100%) Oligosymptomatic (ACOS); 4. Oligosymptomatic with additional self-described symptoms (100%; OSDS); 5. Olfaction/Gustatory Impairment Predominant (100%; OGIP). Our findings indicate that the COVID-19 spectrum may be undetectable when applying current disease definitions focusing on respiratory symptoms alone. MDPI 2022-04-12 /pmc/articles/PMC9029400/ /pubmed/35457497 http://dx.doi.org/10.3390/ijerph19084630 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Vavougios, George D.
Stavrou, Vasileios T.
Konstantatos, Christoforos
Sinigalias, Pavlos-Christoforos
Zarogiannis, Sotirios G.
Kolomvatsos, Konstantinos
Stamoulis, George
Gourgoulianis, Konstantinos I.
COVID-19 Phenotypes and Comorbidity: A Data-Driven, Pattern Recognition Approach Using National Representative Data from the United States
title COVID-19 Phenotypes and Comorbidity: A Data-Driven, Pattern Recognition Approach Using National Representative Data from the United States
title_full COVID-19 Phenotypes and Comorbidity: A Data-Driven, Pattern Recognition Approach Using National Representative Data from the United States
title_fullStr COVID-19 Phenotypes and Comorbidity: A Data-Driven, Pattern Recognition Approach Using National Representative Data from the United States
title_full_unstemmed COVID-19 Phenotypes and Comorbidity: A Data-Driven, Pattern Recognition Approach Using National Representative Data from the United States
title_short COVID-19 Phenotypes and Comorbidity: A Data-Driven, Pattern Recognition Approach Using National Representative Data from the United States
title_sort covid-19 phenotypes and comorbidity: a data-driven, pattern recognition approach using national representative data from the united states
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9029400/
https://www.ncbi.nlm.nih.gov/pubmed/35457497
http://dx.doi.org/10.3390/ijerph19084630
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