© 2018, Institute of Mathematical Statistics. All rights reserved. Epidemiologists often categorize a continuous risk predictor, even when the true risk model is not a categorical one. Nonetheless, such categorization is thought to be more robust and interpretable, and thus their goal is to fit the categorical model and interpret the categorical parameters. We address the question: with measurement error and categorization, how can we do what epidemiologists want, namely to estimate the parameters of the categorical model that would have been estimated if the true predictor was observed? We develop a general methodology for such an analysis, and illustrate it in linear and logistic regression. Simulation studies are presented and the method...
The Cox proportionalhazards model is the most widely used su rvival prediction model for analysing ...
In biomedical, social, behavioral, and environmental studies, the data are frequently collected from...
Background One aspect to consider when reporting results of observational studies in epidemiology is...
Epidemiologists often categorize a continuous risk predictor, even when the true risk model is not a...
We propose novel methods to tackle two problems: the misspecified model with measurement error and h...
When developing prediction models for application in clinical practice, health practitioners usuall...
To investigate the association between a continuous exposure and an outcome it is common to categori...
A measurement error model is a regression model with (substantial) measurement errors in the variabl...
Continuous predictors are routinely encountered when developing a prognostic model. Investigators, w...
Abstract: The loss of signal associated with categorizing a continuous variable is well known, and p...
Recent advances in information technologies are generating a growth in the amount of available biome...
Background: In epidemiological studies explanatory variables are frequently subject...
The first part of this dissertation focuses on methods to adjust for measurement error in risk predi...
13 P.Background: In medical practice many, essentially continuous, clinical parameters tend to be ca...
Measurement error is common in epidemiologic studies and can lead to biased statistical inference. I...
The Cox proportionalhazards model is the most widely used su rvival prediction model for analysing ...
In biomedical, social, behavioral, and environmental studies, the data are frequently collected from...
Background One aspect to consider when reporting results of observational studies in epidemiology is...
Epidemiologists often categorize a continuous risk predictor, even when the true risk model is not a...
We propose novel methods to tackle two problems: the misspecified model with measurement error and h...
When developing prediction models for application in clinical practice, health practitioners usuall...
To investigate the association between a continuous exposure and an outcome it is common to categori...
A measurement error model is a regression model with (substantial) measurement errors in the variabl...
Continuous predictors are routinely encountered when developing a prognostic model. Investigators, w...
Abstract: The loss of signal associated with categorizing a continuous variable is well known, and p...
Recent advances in information technologies are generating a growth in the amount of available biome...
Background: In epidemiological studies explanatory variables are frequently subject...
The first part of this dissertation focuses on methods to adjust for measurement error in risk predi...
13 P.Background: In medical practice many, essentially continuous, clinical parameters tend to be ca...
Measurement error is common in epidemiologic studies and can lead to biased statistical inference. I...
The Cox proportionalhazards model is the most widely used su rvival prediction model for analysing ...
In biomedical, social, behavioral, and environmental studies, the data are frequently collected from...
Background One aspect to consider when reporting results of observational studies in epidemiology is...