Methods to Adjust for Confounding in Test-Negative Design COVID-19 Effectiveness Studies: Simulation Study

BackgroundReal-world COVID-19 vaccine effectiveness (VE) studies are investigating exposures of increasing complexity accounting for time since vaccination. These studies require methods that adjust for the confounding that arises when morbidities and demographics are associa...

Full description

Saved in:
Bibliographic Details
Main Authors: Elizabeth AK Rowley, Patrick K Mitchell, Duck-Hye Yang, Ned Lewis, Brian E Dixon, Gabriela Vazquez-Benitez, William F Fadel, Inih J Essien, Allison L Naleway, Edward Stenehjem, Toan C Ong, Manjusha Gaglani, Karthik Natarajan, Peter Embi, Ryan E Wiegand, Ruth Link-Gelles, Mark W Tenforde, Bruce Fireman
Format: Article
Language:English
Published: JMIR Publications 2025-01-01
Series:JMIR Formative Research
Online Access:https://formative.jmir.org/2025/1/e58981
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832584078602272768
author Elizabeth AK Rowley
Patrick K Mitchell
Duck-Hye Yang
Ned Lewis
Brian E Dixon
Gabriela Vazquez-Benitez
William F Fadel
Inih J Essien
Allison L Naleway
Edward Stenehjem
Toan C Ong
Manjusha Gaglani
Karthik Natarajan
Peter Embi
Ryan E Wiegand
Ruth Link-Gelles
Mark W Tenforde
Bruce Fireman
author_facet Elizabeth AK Rowley
Patrick K Mitchell
Duck-Hye Yang
Ned Lewis
Brian E Dixon
Gabriela Vazquez-Benitez
William F Fadel
Inih J Essien
Allison L Naleway
Edward Stenehjem
Toan C Ong
Manjusha Gaglani
Karthik Natarajan
Peter Embi
Ryan E Wiegand
Ruth Link-Gelles
Mark W Tenforde
Bruce Fireman
author_sort Elizabeth AK Rowley
collection DOAJ
description BackgroundReal-world COVID-19 vaccine effectiveness (VE) studies are investigating exposures of increasing complexity accounting for time since vaccination. These studies require methods that adjust for the confounding that arises when morbidities and demographics are associated with vaccination and the risk of outcome events. Methods based on propensity scores (PS) are well-suited to this when the exposure is dichotomous, but present challenges when the exposure is multinomial. ObjectiveThis simulation study aimed to investigate alternative methods to adjust for confounding in VE studies that have a test-negative design. MethodsAdjustment for a disease risk score (DRS) is compared with multivariable logistic regression. Both stratification on the DRS and direct covariate adjustment of the DRS are examined. Multivariable logistic regression with all the covariates and with a limited subset of key covariates is considered. The performance of VE estimators is evaluated across a multinomial vaccination exposure in simulated datasets. ResultsBias in VE estimates from multivariable models ranged from –5.3% to 6.1% across 4 levels of vaccination. Standard errors of VE estimates were unbiased, and 95% coverage probabilities were attained in most scenarios. The lowest coverage in the multivariable scenarios was 93.7% (95% CI 92.2%-95.2%) and occurred in the multivariable model with key covariates, while the highest coverage in the multivariable scenarios was 95.3% (95% CI 94.0%-96.6%) and occurred in the multivariable model with all covariates. Bias in VE estimates from DRS-adjusted models was low, ranging from –2.2% to 4.2%. However, the DRS-adjusted models underestimated the standard errors of VE estimates, with coverage sometimes below the 95% level. The lowest coverage in the DRS scenarios was 87.8% (95% CI 85.8%-89.8%) and occurred in the direct adjustment for the DRS model. The highest coverage in the DRS scenarios was 94.8% (95% CI 93.4%-96.2%) and occurred in the model that stratified on DRS. Although variation in the performance of VE estimates occurred across modeling strategies, variation in performance was also present across exposure groups. ConclusionsOverall, models using a DRS to adjust for confounding performed adequately but not as well as the multivariable models that adjusted for covariates individually.
format Article
id doaj-art-8ebae8d1856b4de58132a7b92afe85e1
institution Kabale University
issn 2561-326X
language English
publishDate 2025-01-01
publisher JMIR Publications
record_format Article
series JMIR Formative Research
spelling doaj-art-8ebae8d1856b4de58132a7b92afe85e12025-01-27T19:30:54ZengJMIR PublicationsJMIR Formative Research2561-326X2025-01-019e5898110.2196/58981Methods to Adjust for Confounding in Test-Negative Design COVID-19 Effectiveness Studies: Simulation StudyElizabeth AK Rowleyhttps://orcid.org/0000-0002-0593-1096Patrick K Mitchellhttps://orcid.org/0000-0001-6848-0846Duck-Hye Yanghttps://orcid.org/0009-0006-3493-1550Ned Lewishttps://orcid.org/0009-0003-1862-3062Brian E Dixonhttps://orcid.org/0000-0002-1121-0607Gabriela Vazquez-Benitezhttps://orcid.org/0000-0002-6226-3207William F Fadelhttps://orcid.org/0000-0002-0292-6734Inih J Essienhttps://orcid.org/0000-0003-0775-8255Allison L Nalewayhttps://orcid.org/0000-0001-5747-4643Edward Stenehjemhttps://orcid.org/0000-0001-6065-9964Toan C Onghttps://orcid.org/0000-0001-6787-1407Manjusha Gaglanihttps://orcid.org/0000-0002-3952-9230Karthik Natarajanhttps://orcid.org/0000-0002-9066-9431Peter Embihttps://orcid.org/0000-0002-7733-0847Ryan E Wiegandhttps://orcid.org/0000-0002-9486-1850Ruth Link-Gelleshttps://orcid.org/0000-0002-9617-806XMark W Tenfordehttps://orcid.org/0000-0002-8702-8393Bruce Firemanhttps://orcid.org/0000-0003-1652-985X BackgroundReal-world COVID-19 vaccine effectiveness (VE) studies are investigating exposures of increasing complexity accounting for time since vaccination. These studies require methods that adjust for the confounding that arises when morbidities and demographics are associated with vaccination and the risk of outcome events. Methods based on propensity scores (PS) are well-suited to this when the exposure is dichotomous, but present challenges when the exposure is multinomial. ObjectiveThis simulation study aimed to investigate alternative methods to adjust for confounding in VE studies that have a test-negative design. MethodsAdjustment for a disease risk score (DRS) is compared with multivariable logistic regression. Both stratification on the DRS and direct covariate adjustment of the DRS are examined. Multivariable logistic regression with all the covariates and with a limited subset of key covariates is considered. The performance of VE estimators is evaluated across a multinomial vaccination exposure in simulated datasets. ResultsBias in VE estimates from multivariable models ranged from –5.3% to 6.1% across 4 levels of vaccination. Standard errors of VE estimates were unbiased, and 95% coverage probabilities were attained in most scenarios. The lowest coverage in the multivariable scenarios was 93.7% (95% CI 92.2%-95.2%) and occurred in the multivariable model with key covariates, while the highest coverage in the multivariable scenarios was 95.3% (95% CI 94.0%-96.6%) and occurred in the multivariable model with all covariates. Bias in VE estimates from DRS-adjusted models was low, ranging from –2.2% to 4.2%. However, the DRS-adjusted models underestimated the standard errors of VE estimates, with coverage sometimes below the 95% level. The lowest coverage in the DRS scenarios was 87.8% (95% CI 85.8%-89.8%) and occurred in the direct adjustment for the DRS model. The highest coverage in the DRS scenarios was 94.8% (95% CI 93.4%-96.2%) and occurred in the model that stratified on DRS. Although variation in the performance of VE estimates occurred across modeling strategies, variation in performance was also present across exposure groups. ConclusionsOverall, models using a DRS to adjust for confounding performed adequately but not as well as the multivariable models that adjusted for covariates individually.https://formative.jmir.org/2025/1/e58981
spellingShingle Elizabeth AK Rowley
Patrick K Mitchell
Duck-Hye Yang
Ned Lewis
Brian E Dixon
Gabriela Vazquez-Benitez
William F Fadel
Inih J Essien
Allison L Naleway
Edward Stenehjem
Toan C Ong
Manjusha Gaglani
Karthik Natarajan
Peter Embi
Ryan E Wiegand
Ruth Link-Gelles
Mark W Tenforde
Bruce Fireman
Methods to Adjust for Confounding in Test-Negative Design COVID-19 Effectiveness Studies: Simulation Study
JMIR Formative Research
title Methods to Adjust for Confounding in Test-Negative Design COVID-19 Effectiveness Studies: Simulation Study
title_full Methods to Adjust for Confounding in Test-Negative Design COVID-19 Effectiveness Studies: Simulation Study
title_fullStr Methods to Adjust for Confounding in Test-Negative Design COVID-19 Effectiveness Studies: Simulation Study
title_full_unstemmed Methods to Adjust for Confounding in Test-Negative Design COVID-19 Effectiveness Studies: Simulation Study
title_short Methods to Adjust for Confounding in Test-Negative Design COVID-19 Effectiveness Studies: Simulation Study
title_sort methods to adjust for confounding in test negative design covid 19 effectiveness studies simulation study
url https://formative.jmir.org/2025/1/e58981
work_keys_str_mv AT elizabethakrowley methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT patrickkmitchell methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT duckhyeyang methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT nedlewis methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT brianedixon methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT gabrielavazquezbenitez methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT williamffadel methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT inihjessien methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT allisonlnaleway methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT edwardstenehjem methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT toancong methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT manjushagaglani methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT karthiknatarajan methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT peterembi methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT ryanewiegand methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT ruthlinkgelles methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT markwtenforde methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy
AT brucefireman methodstoadjustforconfoundingintestnegativedesigncovid19effectivenessstudiessimulationstudy