Issues in Implementing Regression Calibration Analyses

on behalf of the MeasurementError and Misclassification Topic Group (TG4) of the STRATOS Initiative

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

Regression calibration is a popular approach for correcting biases in estimated regression parameters when exposure variables are measured with error. This approach involves building a calibration equation to estimate the value of the unknown true exposure given the error-prone measurement and other covariates. The estimated, or calibrated, exposure is then substituted for the unknown true exposure in the health outcome regression model. When used properly, regression calibration can greatly reduce the bias induced by exposure measurement error. Here, we first provide an overview of the statistical framework for regression calibration, specifically discussing how a special type of error, called Berkson error, arises in the estimated exposure. We then present practical issues to consider when applying regression calibration, including: 1) how to develop the calibration equation and which covariates to include; 2) valid ways to calculate standard errors of estimated regression coefficients; and 3) problems arising if one of the covariates in the calibration model is a mediator of the relationship between the exposure and outcome. Throughout, we provide illustrative examples using data from the Hispanic Community Health Study/Study of Latinos (United States, 2008–2011) and simulations. We conclude with recommendations for how to perform regression calibration.

Original languageEnglish
Pages (from-to)1406-1414
Number of pages9
JournalAmerican Journal of Epidemiology
Volume192
Issue number8
DOIs
StatePublished - 4 Aug 2023
Externally publishedYes

Bibliographical note

Publisher Copyright:
© 2023 Oxford University Press. All rights reserved.

Funding

This work was supported in part by the National Institutes of Health (grant R01-AI131771 (P.A.S., L.A.B.)) and by the National Heart, Lung, and Blood Institute (contract 75N92019D00010 (D.S.A.)). The Hispanic Community Health Study/Study of Latinos was carried out as a collaborative study supported by contracts from the National Heart, Lung, and Blood Institute to the University of North Carolina (N01-HC65233), University of Miami (N01-HC65234), Albert Einstein College of Medicine (N01-HC65235), Northwestern University (N01-HC65236), and San Diego State University (N01-HC65237). This work was conducted on behalf of the STRATOS Measurement Error and Misclassification Topic Group (Topic Group 4). Membership of Topic Group 4 can be found at https://www.stratos-initiative.org/en/group_4 . This work was supported in part by the National Institutes of Health (grant R01-AI131771 (P.A.S., L.A.B.)) and by the National Heart, Lung, and Blood Institute (contract 75N92019D00010 (D.S.A.)). The Hispanic Community Health Study/Study of Latinos was carried out as a collaborative study supported by contracts from the National Heart, Lung, and Blood Institute to the University of North Carolina (N01-HC65233), University of Miami (N01-HC65234), Albert Einstein College of Medicine (N01-HC65235), Northwestern University (N01-HC65236), and San Diego State University (N01-HC65237). This work was conducted on behalf of the STRATOS Measurement Error and Misclassification Topic Group (Topic Group 4). Membership of Topic Group 4 can be found at https://www.stratos-initiative.org/en/ group_4.

FundersFunder number
National Institutes of HealthR01-AI131771
National Heart, Lung, and Blood Institute75N92019D00010
University of MiamiN01-HC65234
Northwestern UniversityN01-HC65236
San Diego State UniversityN01-HC65237
Albert Einstein College of Medicine, Yeshiva UniversityN01-HC65235
University of North Carolina WilmingtonN01-HC65233

    Keywords

    • Berkson error
    • STRATOS initiative
    • bias (epidemiology)
    • calibration equation
    • measurement error
    • nutritional epidemiology
    • regression calibration
    • validation studies

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