International audienceData variability can be important in microarray data analysis. Thus, when clustering gene expression profiles, it could be judicious to make use of repeated data. In this paper, the problem of analyzing repeated data in the model-based cluster analysis context is considered. Linear mixed models are chosen to take into account data variability and mixture of these models are considered. This leads to a large range of possible models depending on the assumptions made on both the covariance structure of the observations and the mixture model. The maximum likelihood estimation of this family of models through the EM algorithm is presented. The problem of selecting a particular mixture of linear mixed models is considered u...
We illustrate the use of a mixture of multivariate Normal distributions for clustering genes on the...
We illustrate the use of a mixture of multivariate Normal distributions for clustering genes on the...
International audienceIn microarray experiments, accurate estimation of the gene variance is a key s...
Motivation: The clustering of gene profiles across some experimental conditions of interest contribu...
Motivation: The clustering of gene profiles across some experimental conditions of interest contribu...
Motivation: Identifying patterns of co-expression in microarray data by cluster analysis has been a ...
Microarray data clustering represents a basic exploratory tool to find groups of genes exhibiting si...
This research mainly focused on statistical tools and software for the analysis of microarray data. ...
Probabilistic mixture models provide a popular approach to cluster noisy gene expression data for ex...
Several statistical methods are nowadays available for the analysis of gene expression data recorded...
In microarray experiments, accurate estimation of the gene variance is a key step in the identificat...
Clustering is a common methodology for the analysis of array data, and many research laboratories ar...
International audienceIn microarray experiments, accurate estimation of the gene variance is a key s...
International audienceIn microarray experiments, accurate estimation of the gene variance is a key s...
This dissertation focuses on methodology specific to microarray data analyses that organize the data...
We illustrate the use of a mixture of multivariate Normal distributions for clustering genes on the...
We illustrate the use of a mixture of multivariate Normal distributions for clustering genes on the...
International audienceIn microarray experiments, accurate estimation of the gene variance is a key s...
Motivation: The clustering of gene profiles across some experimental conditions of interest contribu...
Motivation: The clustering of gene profiles across some experimental conditions of interest contribu...
Motivation: Identifying patterns of co-expression in microarray data by cluster analysis has been a ...
Microarray data clustering represents a basic exploratory tool to find groups of genes exhibiting si...
This research mainly focused on statistical tools and software for the analysis of microarray data. ...
Probabilistic mixture models provide a popular approach to cluster noisy gene expression data for ex...
Several statistical methods are nowadays available for the analysis of gene expression data recorded...
In microarray experiments, accurate estimation of the gene variance is a key step in the identificat...
Clustering is a common methodology for the analysis of array data, and many research laboratories ar...
International audienceIn microarray experiments, accurate estimation of the gene variance is a key s...
International audienceIn microarray experiments, accurate estimation of the gene variance is a key s...
This dissertation focuses on methodology specific to microarray data analyses that organize the data...
We illustrate the use of a mixture of multivariate Normal distributions for clustering genes on the...
We illustrate the use of a mixture of multivariate Normal distributions for clustering genes on the...
International audienceIn microarray experiments, accurate estimation of the gene variance is a key s...