When the same data are used to fit a model and estimate its predictive performance, this estimate may be optimistic, and its correction is required. The aim of this work is to compare the behaviour of different methods proposed in the literature when correcting for the optimism of the estimated area under the receiver operating characteristic curve in logistic regression models. A simulation study (where the theoretical model is known) is conducted considering different number of covariates, sample size, prevalence and correlation among covariates. The results suggest the use of k-fold cross-validation with replication and bootstrap.Peer Reviewe
In this paper, we study the impact of parameter estimation on prediction densities using a bootstrap...
Within Stata there are two ways of getting average predicted values for different groups after an es...
In the development of diagnostic and prognostic prediction models, the outcome of interest often con...
When the same data are used to fit a model and estimate its predictive performance, this estimate ma...
Logistic regression is often used to find a linear combination of covariates which best discriminate...
textabstractWe conducted an extensive set of empirical analyses to examine the effect of the number ...
Logistic regression is a sophisticated statistical tool for data analysis in both control experiment...
Assessment of the quality of the logistic regression model is central to the conclusion. Application...
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...
<p>Areas Under the Receiver Operating Characteristic Curve (AUROC), and Precision Recall Curve (AUPR...
While it is imperative that attempts be made to assess the predictive accuracy of any prediction mod...
The author reminds the definition of coefficient determination and the idea of the largest credibili...
AbstractIn logistic case–control studies, Prentice and Pyke (Biometrika 66 (1979) 403–411) showed th...
Users of logistic regression models often need to describe the overall predictive strength, or effec...
In this paper, we study the impact of parameter estimation on prediction densities using a bootstrap...
Within Stata there are two ways of getting average predicted values for different groups after an es...
In the development of diagnostic and prognostic prediction models, the outcome of interest often con...
When the same data are used to fit a model and estimate its predictive performance, this estimate ma...
Logistic regression is often used to find a linear combination of covariates which best discriminate...
textabstractWe conducted an extensive set of empirical analyses to examine the effect of the number ...
Logistic regression is a sophisticated statistical tool for data analysis in both control experiment...
Assessment of the quality of the logistic regression model is central to the conclusion. Application...
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...
<p>Areas Under the Receiver Operating Characteristic Curve (AUROC), and Precision Recall Curve (AUPR...
While it is imperative that attempts be made to assess the predictive accuracy of any prediction mod...
The author reminds the definition of coefficient determination and the idea of the largest credibili...
AbstractIn logistic case–control studies, Prentice and Pyke (Biometrika 66 (1979) 403–411) showed th...
Users of logistic regression models often need to describe the overall predictive strength, or effec...
In this paper, we study the impact of parameter estimation on prediction densities using a bootstrap...
Within Stata there are two ways of getting average predicted values for different groups after an es...
In the development of diagnostic and prognostic prediction models, the outcome of interest often con...