Cargando…

Using machine learning to predict COVID-19 infection and severity risk among 4510 aged adults: a UK Biobank cohort study

Many risk factors have emerged for novel 2019 coronavirus disease (COVID-19). It is relatively unknown how these factors collectively predict COVID-19 infection risk, as well as risk for a severe infection (i.e., hospitalization). Among aged adults (69.3 ± 8.6 years) in UK Biobank, COVID-19 data was...

Descripción completa

Detalles Bibliográficos
Autores principales: Willette, Auriel A., Willette, Sara A., Wang, Qian, Pappas, Colleen, Klinedinst, Brandon S., Le, Scott, Larsen, Brittany, Pollpeter, Amy, Li, Tianqi, Mochel, Jonathan P., Allenspach, Karin, Brenner, Nicole, Waterboer, Tim
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9092926/
https://www.ncbi.nlm.nih.gov/pubmed/35545624
http://dx.doi.org/10.1038/s41598-022-07307-z
_version_ 1784705229912014848
author Willette, Auriel A.
Willette, Sara A.
Wang, Qian
Pappas, Colleen
Klinedinst, Brandon S.
Le, Scott
Larsen, Brittany
Pollpeter, Amy
Li, Tianqi
Mochel, Jonathan P.
Allenspach, Karin
Brenner, Nicole
Waterboer, Tim
author_facet Willette, Auriel A.
Willette, Sara A.
Wang, Qian
Pappas, Colleen
Klinedinst, Brandon S.
Le, Scott
Larsen, Brittany
Pollpeter, Amy
Li, Tianqi
Mochel, Jonathan P.
Allenspach, Karin
Brenner, Nicole
Waterboer, Tim
author_sort Willette, Auriel A.
collection PubMed
description Many risk factors have emerged for novel 2019 coronavirus disease (COVID-19). It is relatively unknown how these factors collectively predict COVID-19 infection risk, as well as risk for a severe infection (i.e., hospitalization). Among aged adults (69.3 ± 8.6 years) in UK Biobank, COVID-19 data was downloaded for 4510 participants with 7539 test cases. We downloaded baseline data from 10 to 14 years ago, including demographics, biochemistry, body mass, and other factors, as well as antibody titers for 20 common to rare infectious diseases in a subset of 80 participants with 124 test cases. Permutation-based linear discriminant analysis was used to predict COVID-19 risk and hospitalization risk. Probability and threshold metrics included receiver operating characteristic curves to derive area under the curve (AUC), specificity, sensitivity, and quadratic mean. Model predictions using the full cohort were marginal. The “best-fit” model for predicting COVID-19 risk was found in the subset of participants with antibody titers, which achieved excellent discrimination (AUC 0.969, 95% CI 0.934–1.000). Factors included age, immune markers, lipids, and serology titers to common pathogens like human cytomegalovirus. The hospitalization “best-fit” model was more modest (AUC 0.803, 95% CI 0.663–0.943) and included only serology titers, again in the subset group. Accurate risk profiles can be created using standard self-report and biomedical data collected in public health and medical settings. It is also worthwhile to further investigate if prior host immunity predicts current host immunity to COVID-19.
format Online
Article
Text
id pubmed-9092926
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Nature Publishing Group UK
record_format MEDLINE/PubMed
spelling pubmed-90929262022-05-12 Using machine learning to predict COVID-19 infection and severity risk among 4510 aged adults: a UK Biobank cohort study Willette, Auriel A. Willette, Sara A. Wang, Qian Pappas, Colleen Klinedinst, Brandon S. Le, Scott Larsen, Brittany Pollpeter, Amy Li, Tianqi Mochel, Jonathan P. Allenspach, Karin Brenner, Nicole Waterboer, Tim Sci Rep Article Many risk factors have emerged for novel 2019 coronavirus disease (COVID-19). It is relatively unknown how these factors collectively predict COVID-19 infection risk, as well as risk for a severe infection (i.e., hospitalization). Among aged adults (69.3 ± 8.6 years) in UK Biobank, COVID-19 data was downloaded for 4510 participants with 7539 test cases. We downloaded baseline data from 10 to 14 years ago, including demographics, biochemistry, body mass, and other factors, as well as antibody titers for 20 common to rare infectious diseases in a subset of 80 participants with 124 test cases. Permutation-based linear discriminant analysis was used to predict COVID-19 risk and hospitalization risk. Probability and threshold metrics included receiver operating characteristic curves to derive area under the curve (AUC), specificity, sensitivity, and quadratic mean. Model predictions using the full cohort were marginal. The “best-fit” model for predicting COVID-19 risk was found in the subset of participants with antibody titers, which achieved excellent discrimination (AUC 0.969, 95% CI 0.934–1.000). Factors included age, immune markers, lipids, and serology titers to common pathogens like human cytomegalovirus. The hospitalization “best-fit” model was more modest (AUC 0.803, 95% CI 0.663–0.943) and included only serology titers, again in the subset group. Accurate risk profiles can be created using standard self-report and biomedical data collected in public health and medical settings. It is also worthwhile to further investigate if prior host immunity predicts current host immunity to COVID-19. Nature Publishing Group UK 2022-05-11 /pmc/articles/PMC9092926/ /pubmed/35545624 http://dx.doi.org/10.1038/s41598-022-07307-z Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Willette, Auriel A.
Willette, Sara A.
Wang, Qian
Pappas, Colleen
Klinedinst, Brandon S.
Le, Scott
Larsen, Brittany
Pollpeter, Amy
Li, Tianqi
Mochel, Jonathan P.
Allenspach, Karin
Brenner, Nicole
Waterboer, Tim
Using machine learning to predict COVID-19 infection and severity risk among 4510 aged adults: a UK Biobank cohort study
title Using machine learning to predict COVID-19 infection and severity risk among 4510 aged adults: a UK Biobank cohort study
title_full Using machine learning to predict COVID-19 infection and severity risk among 4510 aged adults: a UK Biobank cohort study
title_fullStr Using machine learning to predict COVID-19 infection and severity risk among 4510 aged adults: a UK Biobank cohort study
title_full_unstemmed Using machine learning to predict COVID-19 infection and severity risk among 4510 aged adults: a UK Biobank cohort study
title_short Using machine learning to predict COVID-19 infection and severity risk among 4510 aged adults: a UK Biobank cohort study
title_sort using machine learning to predict covid-19 infection and severity risk among 4510 aged adults: a uk biobank cohort study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9092926/
https://www.ncbi.nlm.nih.gov/pubmed/35545624
http://dx.doi.org/10.1038/s41598-022-07307-z
work_keys_str_mv AT willetteauriela usingmachinelearningtopredictcovid19infectionandseverityriskamong4510agedadultsaukbiobankcohortstudy
AT willettesaraa usingmachinelearningtopredictcovid19infectionandseverityriskamong4510agedadultsaukbiobankcohortstudy
AT wangqian usingmachinelearningtopredictcovid19infectionandseverityriskamong4510agedadultsaukbiobankcohortstudy
AT pappascolleen usingmachinelearningtopredictcovid19infectionandseverityriskamong4510agedadultsaukbiobankcohortstudy
AT klinedinstbrandons usingmachinelearningtopredictcovid19infectionandseverityriskamong4510agedadultsaukbiobankcohortstudy
AT lescott usingmachinelearningtopredictcovid19infectionandseverityriskamong4510agedadultsaukbiobankcohortstudy
AT larsenbrittany usingmachinelearningtopredictcovid19infectionandseverityriskamong4510agedadultsaukbiobankcohortstudy
AT pollpeteramy usingmachinelearningtopredictcovid19infectionandseverityriskamong4510agedadultsaukbiobankcohortstudy
AT litianqi usingmachinelearningtopredictcovid19infectionandseverityriskamong4510agedadultsaukbiobankcohortstudy
AT mocheljonathanp usingmachinelearningtopredictcovid19infectionandseverityriskamong4510agedadultsaukbiobankcohortstudy
AT allenspachkarin usingmachinelearningtopredictcovid19infectionandseverityriskamong4510agedadultsaukbiobankcohortstudy
AT brennernicole usingmachinelearningtopredictcovid19infectionandseverityriskamong4510agedadultsaukbiobankcohortstudy
AT waterboertim usingmachinelearningtopredictcovid19infectionandseverityriskamong4510agedadultsaukbiobankcohortstudy