We have developed the R package c060 with the aim of improving R software func- tionality for high-dimensional risk prediction modeling, e.g., for prognostic modeling of survival data using high-throughput genomic data. Penalized regression models provide a statistically appealing way of building risk prediction models from high-dimensional data. The popular CRAN package glmnet implements an efficient algorithm for fitting penalized Cox and generalized linear models. However, in practical applications the data analysis will typically not stop at the point where the model has been fitted. One is for example often interested in the stability of selected features and in assessing the prediction performance of a model and we provide functions t...
Clinical studies where patients are routinely screened for many genomic features are becoming more r...
For survival data with a large number of explanatory variables, lasso penalized Cox regression is a ...
In all sorts of regression problems it has become more and more important to deal with high dimensio...
We have developed the R package c060 with the aim of improving R software func- tionality for high-d...
This article presents a novel algorithm that efficiently computes L-1 penalized (lasso) estimates of...
This article presents a novel algorithm that efficiently computes L(1) penalized (lasso) estimates o...
Abstract Background Regularized generalized linear models (GLMs) are popular regression methods in b...
International audienceBackground: Prediction of patient survival from tumor molecular ‘-omics’ data ...
Sparse regression models are an actively burgeoning area of statistical learning research. A subset ...
An important application of microarray technology is to relate gene expression profiles to various c...
International audienceBACKGROUND: The standard lasso penalty and its extensions are commonly used to...
For survival data with a large number of explanatory variables,lasso penalized Cox regression is a p...
We introduce a pathwise algorithm for the Cox proportional hazards model, regularized by convex comb...
Abstract Background Thanks to the advances in genomics and targeted treatments, more and more predic...
Sparse regression models are an actively burgeoning area of statistical learning research. A subset ...
Clinical studies where patients are routinely screened for many genomic features are becoming more r...
For survival data with a large number of explanatory variables, lasso penalized Cox regression is a ...
In all sorts of regression problems it has become more and more important to deal with high dimensio...
We have developed the R package c060 with the aim of improving R software func- tionality for high-d...
This article presents a novel algorithm that efficiently computes L-1 penalized (lasso) estimates of...
This article presents a novel algorithm that efficiently computes L(1) penalized (lasso) estimates o...
Abstract Background Regularized generalized linear models (GLMs) are popular regression methods in b...
International audienceBackground: Prediction of patient survival from tumor molecular ‘-omics’ data ...
Sparse regression models are an actively burgeoning area of statistical learning research. A subset ...
An important application of microarray technology is to relate gene expression profiles to various c...
International audienceBACKGROUND: The standard lasso penalty and its extensions are commonly used to...
For survival data with a large number of explanatory variables,lasso penalized Cox regression is a p...
We introduce a pathwise algorithm for the Cox proportional hazards model, regularized by convex comb...
Abstract Background Thanks to the advances in genomics and targeted treatments, more and more predic...
Sparse regression models are an actively burgeoning area of statistical learning research. A subset ...
Clinical studies where patients are routinely screened for many genomic features are becoming more r...
For survival data with a large number of explanatory variables, lasso penalized Cox regression is a ...
In all sorts of regression problems it has become more and more important to deal with high dimensio...