Within-person variability in measured values of multiple risk factors can bias their associations with disease. The multivariate regression calibration (RC) approach can correct for such measurement error and has been applied to studies in which true values or independent repeat measurements of the risk factors are observed on a subsample. We extend the multivariate RC techniques to a meta-analysis framework where multiple studies provide independent repeat measurements and information on disease outcome. We consider the cases where some or all studies have repeat measurements, and compare study-specific, averaged and empirical Bayes estimates of RC parameters. Additionally, we allow for binary covariates (e.g. smoking status) and for uncer...
<div><p>In epidemiologic studies, measurement error in dietary variables often attenuates associatio...
In this article we focus on comparing measurement error correction methods for rate-of-change exposu...
In this article we focus on comparing measurement error correction methods for rate-of-change exposu...
Within-person variability in measured values of multiple risk factors can bias their associations wi...
Within-person variability in measured values of multiple risk factors can bias their associations wi...
Within-person variability in measured values of multiple risk factors can bias their associations wi...
BACKGROUND: Meta-analysis of individual participant time-to-event data from multiple prospective epi...
Meta-analysis of individual participant time-to-event data from multiple prospective epidemiological...
One difficulty in performing meta-analyses of observational cohort studies is that the availability ...
One difficulty in performing meta-analyses of observational cohort studies is that the availability ...
Regression calibration is a technique that corrects biases in regression results in situations where...
Frequently, covariates used in a logistic regression are measured with error. The authors previously...
Using a continuous exposure variable that is measured with random error in a univariable linear regr...
In this article we focus on comparing measurement error correction methods for rate-of-change exposu...
In epidemiologic studies, measurement error in dietary variables often attenuates association betwee...
<div><p>In epidemiologic studies, measurement error in dietary variables often attenuates associatio...
In this article we focus on comparing measurement error correction methods for rate-of-change exposu...
In this article we focus on comparing measurement error correction methods for rate-of-change exposu...
Within-person variability in measured values of multiple risk factors can bias their associations wi...
Within-person variability in measured values of multiple risk factors can bias their associations wi...
Within-person variability in measured values of multiple risk factors can bias their associations wi...
BACKGROUND: Meta-analysis of individual participant time-to-event data from multiple prospective epi...
Meta-analysis of individual participant time-to-event data from multiple prospective epidemiological...
One difficulty in performing meta-analyses of observational cohort studies is that the availability ...
One difficulty in performing meta-analyses of observational cohort studies is that the availability ...
Regression calibration is a technique that corrects biases in regression results in situations where...
Frequently, covariates used in a logistic regression are measured with error. The authors previously...
Using a continuous exposure variable that is measured with random error in a univariable linear regr...
In this article we focus on comparing measurement error correction methods for rate-of-change exposu...
In epidemiologic studies, measurement error in dietary variables often attenuates association betwee...
<div><p>In epidemiologic studies, measurement error in dietary variables often attenuates associatio...
In this article we focus on comparing measurement error correction methods for rate-of-change exposu...
In this article we focus on comparing measurement error correction methods for rate-of-change exposu...