BACKGROUND: In the context of systems biology, few sparse approaches have been proposed so far to integrate several data sets. It is however an important and fundamental issue that will be widely encountered in post genomic studies, when simultaneously analyzing transcriptomics, proteomics and metabolomics data using different platforms, so as to understand the mutual interactions between the different data sets. In this high dimensional setting, variable selection is crucial to give interpretable results. We focus on a sparse Partial Least Squares approach (sPLS) to handle two-block data sets, where the relationship between the two types of variables is known to be symmetric. Sparse PLS has been developed either for a regression or a canon...
Abstract Background We generalized penalized canonical correlation analysis for analyzing microarray...
(Background) High throughput data are complex and methods that reveal structure underlying the data ...
Integrative approaches that simultaneously model multi-omics data have gained increasing popularity ...
Abstract Background In the context of systems biology, few sparse approaches have been proposed so f...
Background: In the context of systems biology, few sparse approaches have been proposed so far to in...
International audienceIn the context of integration for systems biology, very few sparse approaches ...
Background: In the context of systems biology, few sparse approaches have been proposed so far to in...
International audienceRecent biotechnology advances allow for the collection of multiple types of om...
Recent biotechnology advances allow the collection of multiple types of omics data sets, such as tra...
Recent biotechnology advances allow for multiple types of omics data, such as transcriptomic, proteo...
Large scale genomic studies of the association of gene expression with multiple phenotypic or genot...
Large scale genomic studies of the association of gene expression with multiple phenotypic or genot...
Motivation: With the availability of many ‘omics ’ data, such as transcriptomics, proteomics or meta...
Motivation: With the availability of many ‘omics ’ data, such as transcriptomics, proteomics or meta...
International audienceRecent biotechnology advances allow for the collection of multiple types of om...
Abstract Background We generalized penalized canonical correlation analysis for analyzing microarray...
(Background) High throughput data are complex and methods that reveal structure underlying the data ...
Integrative approaches that simultaneously model multi-omics data have gained increasing popularity ...
Abstract Background In the context of systems biology, few sparse approaches have been proposed so f...
Background: In the context of systems biology, few sparse approaches have been proposed so far to in...
International audienceIn the context of integration for systems biology, very few sparse approaches ...
Background: In the context of systems biology, few sparse approaches have been proposed so far to in...
International audienceRecent biotechnology advances allow for the collection of multiple types of om...
Recent biotechnology advances allow the collection of multiple types of omics data sets, such as tra...
Recent biotechnology advances allow for multiple types of omics data, such as transcriptomic, proteo...
Large scale genomic studies of the association of gene expression with multiple phenotypic or genot...
Large scale genomic studies of the association of gene expression with multiple phenotypic or genot...
Motivation: With the availability of many ‘omics ’ data, such as transcriptomics, proteomics or meta...
Motivation: With the availability of many ‘omics ’ data, such as transcriptomics, proteomics or meta...
International audienceRecent biotechnology advances allow for the collection of multiple types of om...
Abstract Background We generalized penalized canonical correlation analysis for analyzing microarray...
(Background) High throughput data are complex and methods that reveal structure underlying the data ...
Integrative approaches that simultaneously model multi-omics data have gained increasing popularity ...