Abstract Background Self-reported height and weight are commonly collected at the population level; however, they can be subject to measurement error. The impact of this error on predicted risk, discrimination, and calibration of a model that uses body mass index (BMI) to predict risk of diabetes incidence is not known. The objective of this study is to use simulation to quantify and describe the effect of random and systematic error in self-reported height and weight on the performance of a model for predicting diabetes. Methods Two general categories of error were examined: random (nondirectional) error and systematic (directional) error on an algorithm relating BMI in kg/m2 to probability of developing diabetes. The cohort used to develo...
<p><sup>1</sup>All models include age and gender.</p><p><sup>2</sup>P value = 0.127 compared to mode...
The aim of this research was to determine the impact of test measurement variation on misclassificat...
BACKGROUND: Predictive models are increasingly used in guidelines and informed decision-making inter...
Abstract Background Self-reported height and weight a...
Risk prediction models, developed to estimate the probability of an individual developing a particul...
Objective: This study aimed to illustrate the use and value of measurement error models for reducin...
Background The basis for this study is the fact that instrument error increases the ...
BACKGROUND:It is often thought that random measurement error has a minor effect upon the results of ...
Control risk regression is a diffuse approach for meta-analysis about the effectiveness of a treatme...
Background: It is often thought that random measurement error has a minor effect upon the results of...
It is often thought that random measurement error has a minor effect upon the results of an epidemio...
With the increased use of data not originally recorded for research, such as routine care data (or '...
With the increased use of data not originally recorded for research, such as routine care data (or ‘...
We designed an experiment to explore the extent of measurement error in body mass index (BMI), when ...
BackgroundError in self-reported measures of obesity has been frequently described, but the effect o...
<p><sup>1</sup>All models include age and gender.</p><p><sup>2</sup>P value = 0.127 compared to mode...
The aim of this research was to determine the impact of test measurement variation on misclassificat...
BACKGROUND: Predictive models are increasingly used in guidelines and informed decision-making inter...
Abstract Background Self-reported height and weight a...
Risk prediction models, developed to estimate the probability of an individual developing a particul...
Objective: This study aimed to illustrate the use and value of measurement error models for reducin...
Background The basis for this study is the fact that instrument error increases the ...
BACKGROUND:It is often thought that random measurement error has a minor effect upon the results of ...
Control risk regression is a diffuse approach for meta-analysis about the effectiveness of a treatme...
Background: It is often thought that random measurement error has a minor effect upon the results of...
It is often thought that random measurement error has a minor effect upon the results of an epidemio...
With the increased use of data not originally recorded for research, such as routine care data (or '...
With the increased use of data not originally recorded for research, such as routine care data (or ‘...
We designed an experiment to explore the extent of measurement error in body mass index (BMI), when ...
BackgroundError in self-reported measures of obesity has been frequently described, but the effect o...
<p><sup>1</sup>All models include age and gender.</p><p><sup>2</sup>P value = 0.127 compared to mode...
The aim of this research was to determine the impact of test measurement variation on misclassificat...
BACKGROUND: Predictive models are increasingly used in guidelines and informed decision-making inter...