International audienceAlthough a large number of clustering algorithms have been proposed to identify groups of co-expressed genes from microarray data, the question of if and how such methods may be applied to RNA sequencing (RNA-seq) data remains unaddressed. In this work, we investigate the use of data transformations in conjunction with Gaussian mixture models for RNA-seq co-expression analyses, as well as a penalized model selection criterion to select both an appropriate transformation and number of clusters present in the data. This approach has the advantage of accounting for per-cluster correlation structures among samples, which can be strong in RNA-seq data. In addition, it provides a rigorous statistical framework for parameter ...
MOTIVATION: RNA-seq co-expression analysis is in its infancy and reasonable practices remain poorly ...
In co-expression analyses of gene expression data, it is often of interest to interpret clusters of ...
Cette thèse regroupe des contributions méthodologiques à l'analyse statistique des données issues de...
International audienceAlthough a large number of clustering algorithms have been proposed to identif...
<div><p>Quality control, global biases, normalization, and analysis methods for RNA-Seq data are qui...
International audienceIn recent years, gene expression studies have increasingly made use of high-th...
Co-expression analysis for expression profiles arising from high-throughput sequencing data. Feature...
Motivation: Clustering is a useful exploratory technique for the analysis of gene expression data. M...
RNA-sequencing (RNA-seq) technology is a high-throughput next-generation sequencing procedure. It al...
RNA-Seq is becoming the standard technology for large-scale gene expression level measurements, as i...
The next generation sequencing technology (RNA-seq) provides absolute quantifi-cation of gene expres...
Abstract Background RNA-seq is a tool for measuring gene expression and is commonly used to identify...
Several statistical methods are nowadays available for the analysis of gene expression data recorded...
Clustering and classification play an important role in identifying sub-types of complex diseases as...
This thesis gathers methodologicals contributions to the statistical analysis of next-generation hig...
MOTIVATION: RNA-seq co-expression analysis is in its infancy and reasonable practices remain poorly ...
In co-expression analyses of gene expression data, it is often of interest to interpret clusters of ...
Cette thèse regroupe des contributions méthodologiques à l'analyse statistique des données issues de...
International audienceAlthough a large number of clustering algorithms have been proposed to identif...
<div><p>Quality control, global biases, normalization, and analysis methods for RNA-Seq data are qui...
International audienceIn recent years, gene expression studies have increasingly made use of high-th...
Co-expression analysis for expression profiles arising from high-throughput sequencing data. Feature...
Motivation: Clustering is a useful exploratory technique for the analysis of gene expression data. M...
RNA-sequencing (RNA-seq) technology is a high-throughput next-generation sequencing procedure. It al...
RNA-Seq is becoming the standard technology for large-scale gene expression level measurements, as i...
The next generation sequencing technology (RNA-seq) provides absolute quantifi-cation of gene expres...
Abstract Background RNA-seq is a tool for measuring gene expression and is commonly used to identify...
Several statistical methods are nowadays available for the analysis of gene expression data recorded...
Clustering and classification play an important role in identifying sub-types of complex diseases as...
This thesis gathers methodologicals contributions to the statistical analysis of next-generation hig...
MOTIVATION: RNA-seq co-expression analysis is in its infancy and reasonable practices remain poorly ...
In co-expression analyses of gene expression data, it is often of interest to interpret clusters of ...
Cette thèse regroupe des contributions méthodologiques à l'analyse statistique des données issues de...