International audienceAbstractBackgroundFor clinical genomic studies with high-dimensional datasets, tree-based ensemble methods offer a powerful solution for variable selection and prediction taking into account the complex interrelationships between explanatory variables. One of the key component of the tree-building process is the splitting criterion. For survival data, the classical splitting criterion is the Logrank statistic. However, the presence of a fraction of nonsusceptible patients in the studied population advocates for considering a criterion tailored to this peculiar situation.ResultsWe propose a bagging survival tree procedure for variable selection and prediction where the survival tree-building process relies on a splittin...
In clinical trials, it is important to understand and characterize disease and treatment response he...
Abstract Detection of prognostic factors associated with patients’ survival outcome helps gain insig...
This work addresses a type of survival prediction (or survival analysis) problem, where the goal is ...
International audienceAbstractBackgroundFor clinical genomic studies with high-dimensional datasets,...
Building a risk prediction model for a specific subgroup of patients based on high-dimensional molec...
The challenge of survival prediction is ubiquitous in medicine, but only a handful of methods are av...
National audienceOver the last decades, molecular signatures have become increasingly important in o...
One of the most popular uses for tree-based methods is in survival analysis for censored time data w...
Motivation: Patient outcome prediction using microarray technologies is an important application in ...
With the availability of massive amounts of data from electronic health records and registry databas...
Thesis (Ph.D.)--University of Rochester. School of Medicine and Dentistry. Dept. of Biostatistics an...
Motivation: Patient outcome prediction using microarray technolo-gies is an important application in...
The instability in the selection of models is a major concern with data sets containing a large numb...
Cancer is a disease process that emerges out of a series of genetic mutations that cause seemingly u...
In oncology studies, it is important to understand and characterize disease heterogeneity among pati...
In clinical trials, it is important to understand and characterize disease and treatment response he...
Abstract Detection of prognostic factors associated with patients’ survival outcome helps gain insig...
This work addresses a type of survival prediction (or survival analysis) problem, where the goal is ...
International audienceAbstractBackgroundFor clinical genomic studies with high-dimensional datasets,...
Building a risk prediction model for a specific subgroup of patients based on high-dimensional molec...
The challenge of survival prediction is ubiquitous in medicine, but only a handful of methods are av...
National audienceOver the last decades, molecular signatures have become increasingly important in o...
One of the most popular uses for tree-based methods is in survival analysis for censored time data w...
Motivation: Patient outcome prediction using microarray technologies is an important application in ...
With the availability of massive amounts of data from electronic health records and registry databas...
Thesis (Ph.D.)--University of Rochester. School of Medicine and Dentistry. Dept. of Biostatistics an...
Motivation: Patient outcome prediction using microarray technolo-gies is an important application in...
The instability in the selection of models is a major concern with data sets containing a large numb...
Cancer is a disease process that emerges out of a series of genetic mutations that cause seemingly u...
In oncology studies, it is important to understand and characterize disease heterogeneity among pati...
In clinical trials, it is important to understand and characterize disease and treatment response he...
Abstract Detection of prognostic factors associated with patients’ survival outcome helps gain insig...
This work addresses a type of survival prediction (or survival analysis) problem, where the goal is ...