Clinical studies where patients are routinely screened for many genomic features are becoming more routine. In principle, this holds the promise of being able to find genomic signatures for a particular disease. In particular, cancer survival is thought to be closely linked to the genomic constitution of the tumor. Discovering such signatures will be useful in the diagnosis of the patient, may be used for treatment decisions and, perhaps, even the development of new treatments. However, genomic data are typically noisy and high-dimensional, not rarely outstripping the number of patients included in the study. Regularized survival models have been proposed to deal with such scenarios. These methods typically induce sparsity by means of a coi...
This document is organized around three chapters.that summarize my research activity since 2008, tha...
The purpose of this study is to highlight the application of sparse logistic regression models in de...
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...
Cancer survival is thought to closed linked to the genimic constitution of the tumour. Discovering s...
In recent years, clinical studies, where patients are routinely screened for many genomic features, ...
Sparse regression models are an actively burgeoning area of statistical learning research. A subset ...
Copy number alterations (CNA) are structural variation in the genome, in which some regions exhibit ...
High-dimensional sparse modeling with censored survival data is of great practical importance, as ex...
Many clinical and epidemiological studies rely on survival modelling to detect clinically relevant f...
Sparsity is an essential feature of many contemporary data problems. Remote sensing, various forms o...
Accurate survival prediction is critical in the management of cancer patients’ care and well-being....
High-dimensional regression has become an increasingly important topic for many research fields. For...
This document is organized around three chapters.that summarize my research activity since 2008, tha...
International audienceAbstractBackgroundModeling survival oncological data has become a major challe...
This document is organized around three chapters.that summarize my research activity since 2008, tha...
The purpose of this study is to highlight the application of sparse logistic regression models in de...
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...
Cancer survival is thought to closed linked to the genimic constitution of the tumour. Discovering s...
In recent years, clinical studies, where patients are routinely screened for many genomic features, ...
Sparse regression models are an actively burgeoning area of statistical learning research. A subset ...
Copy number alterations (CNA) are structural variation in the genome, in which some regions exhibit ...
High-dimensional sparse modeling with censored survival data is of great practical importance, as ex...
Many clinical and epidemiological studies rely on survival modelling to detect clinically relevant f...
Sparsity is an essential feature of many contemporary data problems. Remote sensing, various forms o...
Accurate survival prediction is critical in the management of cancer patients’ care and well-being....
High-dimensional regression has become an increasingly important topic for many research fields. For...
This document is organized around three chapters.that summarize my research activity since 2008, tha...
International audienceAbstractBackgroundModeling survival oncological data has become a major challe...
This document is organized around three chapters.that summarize my research activity since 2008, tha...
The purpose of this study is to highlight the application of sparse logistic regression models in de...
Sparse regression models are an actively burgeoning area of statistical learning research. A subset ...