Measurement error in the covariate of main interest (e.g. the exposure variable, or the risk factor) is common in epidemiologic and health studies. It can effect the relative risk estimator or other types of coefficients derived from the fitted regression model. In order to perform a measurement error analysis, one needs information about the error structure. Two sources of validation data are an internal subset of the main data, and external or independent study. For the both sources, the true covariate is measured (that is, without error), or alternatively, its surrogate, which is error-prone covariate, is measured several times (repeated measures). This paper compares the precision in estimation via the different validation sources in th...
Abstract: We consider the estimation in Cox proportion hazard model for censored sur-vival data when...
In causal inference, interest often lies in estimating the joint effect of treatment on outcome at d...
Error in measurement is inevitable in epidemiological study. According to the classical regression m...
We develop a new method for covariate error correction in the Cox survival regression model, given a...
For instance nutritional data are often subject to severe measurement error, and an adequate adjust...
Measurement error affecting the independent variables in regression models is a common problem in ma...
Prentice (1982) proposed a regression calibration estimator in Cox regression when covariate variabl...
Measurement error affecting the independent variables in regression models is a common problem in ma...
Frequently, covariates used in a logistic regression are measured with error. The authors previously...
We develop a new method for covariate error correction in the Cox survival regression model, given a...
Dietary questionnaires are prone to measurement error, which bias the perceived association between ...
There has been increasing acknowledgment of the importance of measurement error in epidemiology and ...
Bayesian approaches for handling covariate measurement error are well established and yet arguably a...
<p>Dietary questionnaires are prone to measurement error, which bias the perceived association betwe...
BACKGROUND: In epidemiological studies, estimation of disease exposure associations will be biased i...
Abstract: We consider the estimation in Cox proportion hazard model for censored sur-vival data when...
In causal inference, interest often lies in estimating the joint effect of treatment on outcome at d...
Error in measurement is inevitable in epidemiological study. According to the classical regression m...
We develop a new method for covariate error correction in the Cox survival regression model, given a...
For instance nutritional data are often subject to severe measurement error, and an adequate adjust...
Measurement error affecting the independent variables in regression models is a common problem in ma...
Prentice (1982) proposed a regression calibration estimator in Cox regression when covariate variabl...
Measurement error affecting the independent variables in regression models is a common problem in ma...
Frequently, covariates used in a logistic regression are measured with error. The authors previously...
We develop a new method for covariate error correction in the Cox survival regression model, given a...
Dietary questionnaires are prone to measurement error, which bias the perceived association between ...
There has been increasing acknowledgment of the importance of measurement error in epidemiology and ...
Bayesian approaches for handling covariate measurement error are well established and yet arguably a...
<p>Dietary questionnaires are prone to measurement error, which bias the perceived association betwe...
BACKGROUND: In epidemiological studies, estimation of disease exposure associations will be biased i...
Abstract: We consider the estimation in Cox proportion hazard model for censored sur-vival data when...
In causal inference, interest often lies in estimating the joint effect of treatment on outcome at d...
Error in measurement is inevitable in epidemiological study. According to the classical regression m...