It is agreed among biostatisticians that prediction models for binary outcomes should satisfy two essential criteria: First, a prediction model should have a high discriminatory power, implying that it is able to clearly separate cases from controls. Second, the model should be well calibrated, meaning that the predicted risks should closely agree with the relative frequencies observed in the data. The focus of this work is on the predictiveness curve, which has been proposed by Huang et al. (Biometrics 63, 2007) as a graphical tool to assess the aforementioned criteria. By conducting a detailed analysis of its properties, we review the role of the predictiveness curve in the performance assessment of biomedical prediction models. In part...
The predictive capacity of a marker in a population can be described using the population distributi...
New methodology has been proposed in recent years for evaluating the improvement in prediction perfo...
No single biomarker for cancer is considered adequately sensitive and specific for cancer screening....
It is agreed among biostatisticians that prediction models for binary outcomes should satisfy two es...
There are two popular statistical approaches to biomarker evaluation. One models the risk of disea...
Consider a continuous marker for predicting a binary outcome. For example, serum concentration of pr...
This chapter describes and critiques methods for evaluating the performance of markers to predict ri...
To assess the value of a continuous marker in predicting the risk of a disease, a graphical tool cal...
textabstractThe performance of prediction models can be assessed using a variety of methods and metr...
The performance of prediction models can be assessed using a variety of methods and metrics. Traditi...
Consider a set of baseline predictors X to predict a binary outcome D and let Y be a novel marker o...
The predictiveness curve shows the population distribution of risk endowed by a marker or risk predi...
The performance of a well calibrated risk model, Risk(Y)=P(D=1|Y), can be characterized by the popul...
International audienceFinding out biomarkers and building risk scores to predict the occurrence of s...
There are two popular statistical approaches to biomarker evaluation. One models the risk of disease...
The predictive capacity of a marker in a population can be described using the population distributi...
New methodology has been proposed in recent years for evaluating the improvement in prediction perfo...
No single biomarker for cancer is considered adequately sensitive and specific for cancer screening....
It is agreed among biostatisticians that prediction models for binary outcomes should satisfy two es...
There are two popular statistical approaches to biomarker evaluation. One models the risk of disea...
Consider a continuous marker for predicting a binary outcome. For example, serum concentration of pr...
This chapter describes and critiques methods for evaluating the performance of markers to predict ri...
To assess the value of a continuous marker in predicting the risk of a disease, a graphical tool cal...
textabstractThe performance of prediction models can be assessed using a variety of methods and metr...
The performance of prediction models can be assessed using a variety of methods and metrics. Traditi...
Consider a set of baseline predictors X to predict a binary outcome D and let Y be a novel marker o...
The predictiveness curve shows the population distribution of risk endowed by a marker or risk predi...
The performance of a well calibrated risk model, Risk(Y)=P(D=1|Y), can be characterized by the popul...
International audienceFinding out biomarkers and building risk scores to predict the occurrence of s...
There are two popular statistical approaches to biomarker evaluation. One models the risk of disease...
The predictive capacity of a marker in a population can be described using the population distributi...
New methodology has been proposed in recent years for evaluating the improvement in prediction perfo...
No single biomarker for cancer is considered adequately sensitive and specific for cancer screening....