Objective Measurement error in predictor variables may threaten the validity of clinical prediction models. We sought to evaluate the possible extent of the problem. A secondary objective was to examine whether predictors are measured at the intended moment of model use. Methods A systematic search of Medline was used to identify a sample of articles reporting the development of a clinical prediction model published in 2015. After screening according to a predefined inclusion criteria, information on predictors, strategies to control for measurement error, and intended moment of model use were extracted. Susceptibility to measurement error for each predictor was classified into low and high risks. Results Thirty-three studies were reviewed,...
In this article we focus on comparing measurement error correction methods for rate-of-change exposu...
Prediction models aim to use available data to predict a health state or outcome that has not yet be...
BackgroundGuidelines recommend that clinicians use clinical prediction models to estimate future ris...
Objective Measurement error in predictor variables may threaten the validity of clinical prediction...
It is widely acknowledged that the predictive performance of clinical prediction models should be st...
Risk prediction models, developed to estimate the probability of an individual developing a particul...
<p>Prediction models play an increasingly important role in clinical and shared decision making. In ...
Objectives: The aim of this study was to quantify the impact of predictor measurement heterogeneity ...
<p>Mismeasured time-to-event data used as a predictor in risk prediction models will lead to inaccur...
Measurement error in time to event data used as a predictor will lead to inaccurate predictions. Thi...
BACKGROUND AND OBJECTIVE: Diagnostic and prognostic prediction models often perform poorly when exte...
Background: The assessment of calibration performance of risk prediction models based on regression ...
To evaluate limitations of common statistical modeling approaches in deriving clinical prediction mo...
Prediction models aim to use available data to predict a health state or outcome that has not yet be...
Background: The assessment of calibration performance of risk prediction models based on regression ...
In this article we focus on comparing measurement error correction methods for rate-of-change exposu...
Prediction models aim to use available data to predict a health state or outcome that has not yet be...
BackgroundGuidelines recommend that clinicians use clinical prediction models to estimate future ris...
Objective Measurement error in predictor variables may threaten the validity of clinical prediction...
It is widely acknowledged that the predictive performance of clinical prediction models should be st...
Risk prediction models, developed to estimate the probability of an individual developing a particul...
<p>Prediction models play an increasingly important role in clinical and shared decision making. In ...
Objectives: The aim of this study was to quantify the impact of predictor measurement heterogeneity ...
<p>Mismeasured time-to-event data used as a predictor in risk prediction models will lead to inaccur...
Measurement error in time to event data used as a predictor will lead to inaccurate predictions. Thi...
BACKGROUND AND OBJECTIVE: Diagnostic and prognostic prediction models often perform poorly when exte...
Background: The assessment of calibration performance of risk prediction models based on regression ...
To evaluate limitations of common statistical modeling approaches in deriving clinical prediction mo...
Prediction models aim to use available data to predict a health state or outcome that has not yet be...
Background: The assessment of calibration performance of risk prediction models based on regression ...
In this article we focus on comparing measurement error correction methods for rate-of-change exposu...
Prediction models aim to use available data to predict a health state or outcome that has not yet be...
BackgroundGuidelines recommend that clinicians use clinical prediction models to estimate future ris...