National audienceOver the last decades, molecular signatures have become increasingly important in oncology and are opening up a new area of personalized medicine. Nevertheless, biological relevance and statistical tools necessary for the development of these signatures have been called into question in the literature. Here, we investigate six typical selection methods for high-dimensional settings and survival endpoints, including LASSO and some of its extensions, component-wise boosting, and random survival forests (RSF). A resampling algorithm based on data splitting was used on nine high-dimensional simulated datasets to assess selection stability on training sets and the intersection between selection methods. Prognostic performances w...
Building a risk prediction model for a specific subgroup of patients based on high-dimensional molec...
International audienceAbstractBackgroundFor clinical genomic studies with high-dimensional datasets,...
Cancer is a major public health problem with high mortality and mobility. In the past few decades, d...
National audienceOver the last decades, molecular signatures have become increasingly important in o...
In the era of personalized medicine, it's primordial to identify gene signatures for each event type...
Abstract Background Building prognostic models of clinical outcomes is an increasingly important res...
Identifying relevant signatures for clinical patient outcome is a fundamental task in high-throughpu...
<div><p>Identifying relevant signatures for clinical patient outcome is a fundamental task in high-t...
Thesis (Ph.D.)--University of Rochester. School of Medicine and Dentistry. Dept. of Biostatistics an...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
The instability in the selection of models is a major concern with data sets containing a large numb...
International audienceWith the increased availability of survival datasets, that comprise both molec...
Covariate selection is a fundamental step when building sparse prediction models in order to avoid o...
Building a risk prediction model for a specific subgroup of patients based on high-dimensional molec...
International audienceAbstractBackgroundFor clinical genomic studies with high-dimensional datasets,...
Cancer is a major public health problem with high mortality and mobility. In the past few decades, d...
National audienceOver the last decades, molecular signatures have become increasingly important in o...
In the era of personalized medicine, it's primordial to identify gene signatures for each event type...
Abstract Background Building prognostic models of clinical outcomes is an increasingly important res...
Identifying relevant signatures for clinical patient outcome is a fundamental task in high-throughpu...
<div><p>Identifying relevant signatures for clinical patient outcome is a fundamental task in high-t...
Thesis (Ph.D.)--University of Rochester. School of Medicine and Dentistry. Dept. of Biostatistics an...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
The instability in the selection of models is a major concern with data sets containing a large numb...
International audienceWith the increased availability of survival datasets, that comprise both molec...
Covariate selection is a fundamental step when building sparse prediction models in order to avoid o...
Building a risk prediction model for a specific subgroup of patients based on high-dimensional molec...
International audienceAbstractBackgroundFor clinical genomic studies with high-dimensional datasets,...
Cancer is a major public health problem with high mortality and mobility. In the past few decades, d...