The positive and negative predictive value are standard measures used to quantify the predictive accuracy of binary biomarkers when the outcome being predicted is also binary. When the biomarkers are instead being used to predict a failure time outcome, there is no standard way of quantifying predictive accuracy. We propose a natural extension of the traditional predictive values to accommodate censored survival data. We discuss not only quantifying predictive accuracy using these extended predictive values, but also rigorously comparing the accuracy of two biomarkers in terms of their predictive values. Using a marginal regression framework, we describe how to estimate differences in predictive accuracy and how to test whether the observed...
Summary. We suggest a new measure of the proportion of the variation of possibly censored survival t...
The area under the receiver operating characteristic curve (AUC) is a popular threshold-free metric ...
International audienceOne aspect of an analysis of survival data based on the proportional hazards m...
The positive and negative predictive value are standard measures used to quantify the predictive acc...
In a prospective cohort study, information on clinical parameters, tests and molecular markers is of...
Multivariable regression models are powerful tools that are used frequently in studies of clinical o...
The area under the receiver operating characteristic curve is often used as a summary index of the d...
We propose a graphical measure, the generalized negative predictive function, to quantify the predic...
Background. Risk prediction models can be used as an aid when determining patient management. Becaus...
Survival time prediction is important in many applications, particularly for patients diagnosed with...
Summary. Competing risks arise naturally in time-to-event studies. In this article, we propose time-...
Evaluating the performance of models predicting a binary outcome can be done using a variety of meas...
International audienceObjectives: Predicting chronic disease evolution from a prognostic marker is a...
Predictive biomarkers are among the most direct steps towards converting precision medicine into a c...
Binary classification accuracy comparing each algorithm for predicting “high” risk of mortality in t...
Summary. We suggest a new measure of the proportion of the variation of possibly censored survival t...
The area under the receiver operating characteristic curve (AUC) is a popular threshold-free metric ...
International audienceOne aspect of an analysis of survival data based on the proportional hazards m...
The positive and negative predictive value are standard measures used to quantify the predictive acc...
In a prospective cohort study, information on clinical parameters, tests and molecular markers is of...
Multivariable regression models are powerful tools that are used frequently in studies of clinical o...
The area under the receiver operating characteristic curve is often used as a summary index of the d...
We propose a graphical measure, the generalized negative predictive function, to quantify the predic...
Background. Risk prediction models can be used as an aid when determining patient management. Becaus...
Survival time prediction is important in many applications, particularly for patients diagnosed with...
Summary. Competing risks arise naturally in time-to-event studies. In this article, we propose time-...
Evaluating the performance of models predicting a binary outcome can be done using a variety of meas...
International audienceObjectives: Predicting chronic disease evolution from a prognostic marker is a...
Predictive biomarkers are among the most direct steps towards converting precision medicine into a c...
Binary classification accuracy comparing each algorithm for predicting “high” risk of mortality in t...
Summary. We suggest a new measure of the proportion of the variation of possibly censored survival t...
The area under the receiver operating characteristic curve (AUC) is a popular threshold-free metric ...
International audienceOne aspect of an analysis of survival data based on the proportional hazards m...