When designing a study to develop a new prediction model with binary or time-to-event outcomes, researchers should ensure their sample size is adequate in terms of the number of participants (n) and outcome events (E) relative to the number of predictor parameters (p) considered for inclusion. We propose that the minimum values of n and E (and subsequently the minimum number of events per predictor parameter, EPP) should be calculated to meet the following three criteria: (i) small optimism in predictor effect estimates as defined by a global shrinkage factor of ≥ 0.9, (ii) small absolute difference of ≤ 0.05 in the model's apparent and adjusted Nagelkerke's R2 , and (iii) precise estimation of the overall risk in the population. Criteria (...
BACKGROUND: Prognostic studies of time-to-event data, where researchers aim to develop or validate m...
The choice of an adequate sample size for a Cox regression analysis is generally based on the rule o...
In prediction model research, external validation is needed to examine an existing model's performan...
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...
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...
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...
Objectives - The choice of an adequate sample size for a Cox regression analysis is generally based ...
AbstractObjectivesThe choice of an adequate sample size for a Cox regression analysis is generally b...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
In 2019 we published a pair of articles in Statistics in Medicine that describe how to calculate the...
Previous articles in Statistics in Medicine describe how to calculate the sample size required for e...
BACKGROUND: Prognostic studies of time-to-event data, where researchers aim to develop or validate m...
The choice of an adequate sample size for a Cox regression analysis is generally based on the rule o...
In prediction model research, external validation is needed to examine an existing model's performan...
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...
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...
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...
Objectives - The choice of an adequate sample size for a Cox regression analysis is generally based ...
AbstractObjectivesThe choice of an adequate sample size for a Cox regression analysis is generally b...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
In 2019 we published a pair of articles in Statistics in Medicine that describe how to calculate the...
Previous articles in Statistics in Medicine describe how to calculate the sample size required for e...
BACKGROUND: Prognostic studies of time-to-event data, where researchers aim to develop or validate m...
The choice of an adequate sample size for a Cox regression analysis is generally based on the rule o...
In prediction model research, external validation is needed to examine an existing model's performan...