Previous articles in Statistics in Medicine describe how to calculate the sample size required for external validation of prediction models with continuous and binary outcomes. The minimum sample size criteria aim to ensure precise estimation of key measures of a model's predictive performance, including measures of calibration, discrimination, and net benefit. Here, we extend the sample size guidance to prediction models with a time-to-event (survival) outcome, to cover external validation in datasets containing censoring. A simulation-based framework is proposed, which calculates the sample size required to target a particular confidence interval width for the calibration slope measuring the agreement between predicted risks (from the mod...
When designing a study to develop a new prediction model with binary or time-to-event outcomes, rese...
In the medical literature, hundreds of prediction models are being developed to predict health outco...
BACKGROUND: Prognostic studies of time-to-event data, where researchers aim to develop or validate m...
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...
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...
In prediction model research, external validation is needed to examine an existing model's performan...
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 sug...
INTRODUCTION: Sample size 'rules-of-thumb' for external validation of clinical prediction models sug...
Clinical prediction models provide individualised outcome predictions to inform patient counselling ...
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...
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...
In the medical literature, hundreds of prediction models are being developed to predict health outco...
BACKGROUND: Prognostic studies of time-to-event data, where researchers aim to develop or validate m...
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...
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...
In prediction model research, external validation is needed to examine an existing model's performan...
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 sug...
INTRODUCTION: Sample size 'rules-of-thumb' for external validation of clinical prediction models sug...
Clinical prediction models provide individualised outcome predictions to inform patient counselling ...
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...
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...
In the medical literature, hundreds of prediction models are being developed to predict health outco...
BACKGROUND: Prognostic studies of time-to-event data, where researchers aim to develop or validate m...