In prediction model research, external validation is needed to examine an existing model's performance using data independent to that for model development. Current external validation studies often suffer from small sample sizes and consequently imprecise predictive performance estimates. To address this, we propose how to determine the minimum sample size needed for a new external validation study of a prediction model for a binary outcome. Our calculations aim to precisely estimate calibration (Observed/Expected and calibration slope), discrimination (C-statistic), and clinical utility (net benefit). For each measure, we propose closed-form and iterative solutions for calculating the minimum sample size required. These require specifying...
When designing a study to develop a new prediction model with binary or time-to-event outcomes, rese...
When designing a study to develop a new prediction model with binary or time‐to‐event outcomes, rese...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
In prediction model research, external validation is needed to examine an existing model's performan...
Clinical prediction models provide individualized outcome predictions to inform patient counseling a...
Risk-prediction models for health outcomes are used in practice as part of clinical decision-making,...
Clinical prediction models provide individualized outcome predictions to inform patient counseling a...
Previous articles in Statistics in Medicine describe how to calculate the sample size required for e...
Previous articles in Statistics in Medicine describe how to calculate the sample size required for e...
Introduction Sample size “rules-of-thumb” for external validation of clinical prediction models sugg...
INTRODUCTION: Sample size 'rules-of-thumb' for external validation of clinical prediction models sug...
After developing a prognostic model, it is essential to evaluate the performance of the model in sam...
INTRODUCTION: Sample size 'rules-of-thumb' for external validation of clinical prediction models sug...
In the medical literature, hundreds of prediction models are being developed to predict health outco...
In the medical literature, hundreds of prediction models are being developed to predict health outco...
When designing a study to develop a new prediction model with binary or time-to-event outcomes, rese...
When designing a study to develop a new prediction model with binary or time‐to‐event outcomes, rese...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
In prediction model research, external validation is needed to examine an existing model's performan...
Clinical prediction models provide individualized outcome predictions to inform patient counseling a...
Risk-prediction models for health outcomes are used in practice as part of clinical decision-making,...
Clinical prediction models provide individualized outcome predictions to inform patient counseling a...
Previous articles in Statistics in Medicine describe how to calculate the sample size required for e...
Previous articles in Statistics in Medicine describe how to calculate the sample size required for e...
Introduction Sample size “rules-of-thumb” for external validation of clinical prediction models sugg...
INTRODUCTION: Sample size 'rules-of-thumb' for external validation of clinical prediction models sug...
After developing a prognostic model, it is essential to evaluate the performance of the model in sam...
INTRODUCTION: Sample size 'rules-of-thumb' for external validation of clinical prediction models sug...
In the medical literature, hundreds of prediction models are being developed to predict health outco...
In the medical literature, hundreds of prediction models are being developed to predict health outco...
When designing a study to develop a new prediction model with binary or time-to-event outcomes, rese...
When designing a study to develop a new prediction model with binary or time‐to‐event outcomes, rese...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...