textabstractVarious performance measures related to calibration and discrimination are available for the assessment of risk models. When the validity of a risk model is assessed in a new population, estimates of the model's performance can be influenced in several ways. The regression coefficients can be incorrect, which indeed results in an invalid model. However, the distribution of patient characteristics (case mix) may also influence the performance of the model. Here the authors consider a number of typical situations that can be encountered in external validation studies. Theoretical relations between differences in development and validation samples and performance measures are studied by simulation. Benchmark values for the performa...
We describe a flexible family of tests for evaluating the goodness of fit (calibration) of a pre-spe...
Abstract Background When developing a prediction model for survival data it is essential to validate...
Abstract Background Prognostic models often show poor performance when applied to independent valida...
Various performance measures related to calibration and discrimination are available for the assessm...
Background and objectives: Prognostic models are, among other things, used to provide risk predictio...
Objectives It is widely acknowledged that the performance of diagnostic and prognostic prediction mo...
AbstractObjectivesIt is widely acknowledged that the performance of diagnostic and prognostic predic...
Risk prediction models, developed to estimate the probability of an individual developing a particul...
Risk-prediction models for health outcomes are used in practice as part of clinical decision-making,...
Introduction Sample size “rules-of-thumb” for external validation of clinical prediction models sugg...
OBJECTIVE: To investigate the behavior of predictive performance measures that are commonly used in ...
INTRODUCTION:External validation studies are essential to study the generalizability of prediction m...
textabstractIntroduction External validation studies are essential to study the generalizability of ...
Objective: Calibrated risk models are vital for valid decision support. We define four levels of cal...
Background: Prognostic models often show poor performance when applied to independent validation dat...
We describe a flexible family of tests for evaluating the goodness of fit (calibration) of a pre-spe...
Abstract Background When developing a prediction model for survival data it is essential to validate...
Abstract Background Prognostic models often show poor performance when applied to independent valida...
Various performance measures related to calibration and discrimination are available for the assessm...
Background and objectives: Prognostic models are, among other things, used to provide risk predictio...
Objectives It is widely acknowledged that the performance of diagnostic and prognostic prediction mo...
AbstractObjectivesIt is widely acknowledged that the performance of diagnostic and prognostic predic...
Risk prediction models, developed to estimate the probability of an individual developing a particul...
Risk-prediction models for health outcomes are used in practice as part of clinical decision-making,...
Introduction Sample size “rules-of-thumb” for external validation of clinical prediction models sugg...
OBJECTIVE: To investigate the behavior of predictive performance measures that are commonly used in ...
INTRODUCTION:External validation studies are essential to study the generalizability of prediction m...
textabstractIntroduction External validation studies are essential to study the generalizability of ...
Objective: Calibrated risk models are vital for valid decision support. We define four levels of cal...
Background: Prognostic models often show poor performance when applied to independent validation dat...
We describe a flexible family of tests for evaluating the goodness of fit (calibration) of a pre-spe...
Abstract Background When developing a prediction model for survival data it is essential to validate...
Abstract Background Prognostic models often show poor performance when applied to independent valida...