Risk-prediction models for health outcomes are used in practice as part of clinical decision-making, and it is essential that their performance be externally validated. An important aspect in the design of a validation study is choosing an adequate sample size. In this paper, we investigate the sample size requirements for validation studies with binary outcomes to estimate measures of predictive performance (C-statistic for discrimination and calibration slope and calibration in the large). We aim for sufficient precision in the estimated measures. In addition, we investigate the sample size to achieve sufficient power to detect a difference from a target value. Under normality assumptions on the distribution of the linear predictor, we ob...
It has been suggested that when developing risk prediction models using regression, the number of ev...
OBJECTIVE: To investigate the behavior of predictive performance measures that are commonly used in ...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
Risk-prediction models for health outcomes are used in practice as part of clinical decision-making,...
In prediction model research, external validation is needed to examine an existing model's performan...
In prediction model research, external validation is needed to examine an existing model's performan...
Previous articles in Statistics in Medicine describe how to calculate the sample size required for e...
Clinical prediction models provide individualised outcome predictions to inform patient counselling ...
Previous articles in Statistics in Medicine describe how to calculate the sample size required for e...
Clinical prediction models provide individualized outcome predictions to inform patient counseling a...
Introduction Sample size “rules-of-thumb” for external validation of clinical prediction models sugg...
After developing a prognostic model, it is essential to evaluate the performance of the model in sam...
<div><p>Background</p><p>A sample size containing at least 100 events and 100 non-events has been su...
A sample size containing at least 100 events and 100 non-events has been suggested to validate a pre...
INTRODUCTION: Sample size 'rules-of-thumb' for external validation of clinical prediction models sug...
It has been suggested that when developing risk prediction models using regression, the number of ev...
OBJECTIVE: To investigate the behavior of predictive performance measures that are commonly used in ...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
Risk-prediction models for health outcomes are used in practice as part of clinical decision-making,...
In prediction model research, external validation is needed to examine an existing model's performan...
In prediction model research, external validation is needed to examine an existing model's performan...
Previous articles in Statistics in Medicine describe how to calculate the sample size required for e...
Clinical prediction models provide individualised outcome predictions to inform patient counselling ...
Previous articles in Statistics in Medicine describe how to calculate the sample size required for e...
Clinical prediction models provide individualized outcome predictions to inform patient counseling a...
Introduction Sample size “rules-of-thumb” for external validation of clinical prediction models sugg...
After developing a prognostic model, it is essential to evaluate the performance of the model in sam...
<div><p>Background</p><p>A sample size containing at least 100 events and 100 non-events has been su...
A sample size containing at least 100 events and 100 non-events has been suggested to validate a pre...
INTRODUCTION: Sample size 'rules-of-thumb' for external validation of clinical prediction models sug...
It has been suggested that when developing risk prediction models using regression, the number of ev...
OBJECTIVE: To investigate the behavior of predictive performance measures that are commonly used in ...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...