Cargando…
Using symptom-based case predictions to identify host genetic factors that contribute to COVID-19 susceptibility
Epidemiological and genetic studies on COVID-19 are currently hindered by inconsistent and limited testing policies to confirm SARS-CoV-2 infection. Recently, it was shown that it is possible to predict COVID-19 cases using cross-sectional self-reported disease-related symptoms. Here, we demonstrate...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Public Library of Science
2021
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8357137/ https://www.ncbi.nlm.nih.gov/pubmed/34379666 http://dx.doi.org/10.1371/journal.pone.0255402 |
_version_ | 1783737081244155904 |
---|---|
author | van Blokland, Irene V. Lanting, Pauline Ori, Anil P. S. Vonk, Judith M. Warmerdam, Robert C. A. Herkert, Johanna C. Boulogne, Floranne Claringbould, Annique Lopera-Maya, Esteban A. Bartels, Meike Hottenga, Jouke-Jan Ganna, Andrea Karjalainen, Juha Hayward, Caroline Fawns-Ritchie, Chloe Campbell, Archie Porteous, David Cirulli, Elizabeth T. Schiabor Barrett, Kelly M. Riffle, Stephen Bolze, Alexandre White, Simon Tanudjaja, Francisco Wang, Xueqing Ramirez, Jimmy M. Lim, Yan Wei Lu, James T. Washington, Nicole L. de Geus, Eco J. C. Deelen, Patrick Boezen, H. Marike Franke, Lude H. |
author_facet | van Blokland, Irene V. Lanting, Pauline Ori, Anil P. S. Vonk, Judith M. Warmerdam, Robert C. A. Herkert, Johanna C. Boulogne, Floranne Claringbould, Annique Lopera-Maya, Esteban A. Bartels, Meike Hottenga, Jouke-Jan Ganna, Andrea Karjalainen, Juha Hayward, Caroline Fawns-Ritchie, Chloe Campbell, Archie Porteous, David Cirulli, Elizabeth T. Schiabor Barrett, Kelly M. Riffle, Stephen Bolze, Alexandre White, Simon Tanudjaja, Francisco Wang, Xueqing Ramirez, Jimmy M. Lim, Yan Wei Lu, James T. Washington, Nicole L. de Geus, Eco J. C. Deelen, Patrick Boezen, H. Marike Franke, Lude H. |
author_sort | van Blokland, Irene V. |
collection | PubMed |
description | Epidemiological and genetic studies on COVID-19 are currently hindered by inconsistent and limited testing policies to confirm SARS-CoV-2 infection. Recently, it was shown that it is possible to predict COVID-19 cases using cross-sectional self-reported disease-related symptoms. Here, we demonstrate that this COVID-19 prediction model has reasonable and consistent performance across multiple independent cohorts and that our attempt to improve upon this model did not result in improved predictions. Using the existing COVID-19 prediction model, we then conducted a GWAS on the predicted phenotype using a total of 1,865 predicted cases and 29,174 controls. While we did not find any common, large-effect variants that reached genome-wide significance, we do observe suggestive genetic associations at two SNPs (rs11844522, p = 1.9x10-7; rs5798227, p = 2.2x10-7). Explorative analyses furthermore suggest that genetic variants associated with other viral infectious diseases do not overlap with COVID-19 susceptibility and that severity of COVID-19 may have a different genetic architecture compared to COVID-19 susceptibility. This study represents a first effort that uses a symptom-based predicted phenotype as a proxy for COVID-19 in our pursuit of understanding the genetic susceptibility of the disease. We conclude that the inclusion of symptom-based predicted cases could be a useful strategy in a scenario of limited testing, either during the current COVID-19 pandemic or any future viral outbreak. |
format | Online Article Text |
id | pubmed-8357137 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | Public Library of Science |
record_format | MEDLINE/PubMed |
spelling | pubmed-83571372021-08-12 Using symptom-based case predictions to identify host genetic factors that contribute to COVID-19 susceptibility van Blokland, Irene V. Lanting, Pauline Ori, Anil P. S. Vonk, Judith M. Warmerdam, Robert C. A. Herkert, Johanna C. Boulogne, Floranne Claringbould, Annique Lopera-Maya, Esteban A. Bartels, Meike Hottenga, Jouke-Jan Ganna, Andrea Karjalainen, Juha Hayward, Caroline Fawns-Ritchie, Chloe Campbell, Archie Porteous, David Cirulli, Elizabeth T. Schiabor Barrett, Kelly M. Riffle, Stephen Bolze, Alexandre White, Simon Tanudjaja, Francisco Wang, Xueqing Ramirez, Jimmy M. Lim, Yan Wei Lu, James T. Washington, Nicole L. de Geus, Eco J. C. Deelen, Patrick Boezen, H. Marike Franke, Lude H. PLoS One Research Article Epidemiological and genetic studies on COVID-19 are currently hindered by inconsistent and limited testing policies to confirm SARS-CoV-2 infection. Recently, it was shown that it is possible to predict COVID-19 cases using cross-sectional self-reported disease-related symptoms. Here, we demonstrate that this COVID-19 prediction model has reasonable and consistent performance across multiple independent cohorts and that our attempt to improve upon this model did not result in improved predictions. Using the existing COVID-19 prediction model, we then conducted a GWAS on the predicted phenotype using a total of 1,865 predicted cases and 29,174 controls. While we did not find any common, large-effect variants that reached genome-wide significance, we do observe suggestive genetic associations at two SNPs (rs11844522, p = 1.9x10-7; rs5798227, p = 2.2x10-7). Explorative analyses furthermore suggest that genetic variants associated with other viral infectious diseases do not overlap with COVID-19 susceptibility and that severity of COVID-19 may have a different genetic architecture compared to COVID-19 susceptibility. This study represents a first effort that uses a symptom-based predicted phenotype as a proxy for COVID-19 in our pursuit of understanding the genetic susceptibility of the disease. We conclude that the inclusion of symptom-based predicted cases could be a useful strategy in a scenario of limited testing, either during the current COVID-19 pandemic or any future viral outbreak. Public Library of Science 2021-08-11 /pmc/articles/PMC8357137/ /pubmed/34379666 http://dx.doi.org/10.1371/journal.pone.0255402 Text en © 2021 van Blokland et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. |
spellingShingle | Research Article van Blokland, Irene V. Lanting, Pauline Ori, Anil P. S. Vonk, Judith M. Warmerdam, Robert C. A. Herkert, Johanna C. Boulogne, Floranne Claringbould, Annique Lopera-Maya, Esteban A. Bartels, Meike Hottenga, Jouke-Jan Ganna, Andrea Karjalainen, Juha Hayward, Caroline Fawns-Ritchie, Chloe Campbell, Archie Porteous, David Cirulli, Elizabeth T. Schiabor Barrett, Kelly M. Riffle, Stephen Bolze, Alexandre White, Simon Tanudjaja, Francisco Wang, Xueqing Ramirez, Jimmy M. Lim, Yan Wei Lu, James T. Washington, Nicole L. de Geus, Eco J. C. Deelen, Patrick Boezen, H. Marike Franke, Lude H. Using symptom-based case predictions to identify host genetic factors that contribute to COVID-19 susceptibility |
title | Using symptom-based case predictions to identify host genetic factors that contribute to COVID-19 susceptibility |
title_full | Using symptom-based case predictions to identify host genetic factors that contribute to COVID-19 susceptibility |
title_fullStr | Using symptom-based case predictions to identify host genetic factors that contribute to COVID-19 susceptibility |
title_full_unstemmed | Using symptom-based case predictions to identify host genetic factors that contribute to COVID-19 susceptibility |
title_short | Using symptom-based case predictions to identify host genetic factors that contribute to COVID-19 susceptibility |
title_sort | using symptom-based case predictions to identify host genetic factors that contribute to covid-19 susceptibility |
topic | Research Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8357137/ https://www.ncbi.nlm.nih.gov/pubmed/34379666 http://dx.doi.org/10.1371/journal.pone.0255402 |
work_keys_str_mv | AT vanbloklandirenev usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT lantingpauline usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT orianilps usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT vonkjudithm usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT warmerdamrobertca usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT herkertjohannac usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT boulognefloranne usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT claringbouldannique usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT loperamayaestebana usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT bartelsmeike usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT hottengajoukejan usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT gannaandrea usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT karjalainenjuha usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT haywardcaroline usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT fawnsritchiechloe usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT campbellarchie usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT porteousdavid usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT cirullielizabetht usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT schiaborbarrettkellym usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT rifflestephen usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT bolzealexandre usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT whitesimon usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT tanudjajafrancisco usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT wangxueqing usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT ramirezjimmym usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT limyanwei usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT lujamest usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT washingtonnicolel usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT degeusecojc usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT deelenpatrick usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT boezenhmarike usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility AT frankeludeh usingsymptombasedcasepredictionstoidentifyhostgeneticfactorsthatcontributetocovid19susceptibility |