BACKGROUND: Variable selection on high throughput biological data, such as gene expression or single nucleotide polymorphisms (SNPs), becomes inevitable to select relevant information and, therefore, to better characterize diseases or assess genetic structure. There are different ways to perform variable selection in large data sets. Statistical tests are commonly used to identify differentially expressed features for explanatory purposes, whereas Machine Learning wrapper approaches can be used for predictive purposes. In the case of multiple highly correlated variables, another option is to use multivariate exploratory approaches to give more insight into cell biology, biological pathways or complex traits. RESULTS: A simple extension of a...
International audienceMotivation: The high dimensionality of genomic data calls for the development ...
This work studies the theoretical rules of feature selection in linear discriminant analysis (LDA), ...
International audienceMotivation: The high dimensionality of genomic data calls for the development ...
Background: Variable selection on high throughput biological data, such as gene expression or single...
Background: Variable selection on high throughput biological data, such as gene expression or single...
Chantier qualité GAInternational audienceBackground: Variable selection on high throughput biologica...
Chantier qualité GAInternational audienceBackground: Variable selection on high throughput biologica...
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...
International audienceRecent biotechnology advances allow for the collection of multiple types of om...
MOTIVATION: Pathway and gene set based approaches for the analysis of gene expression profiling expe...
Recent biotechnology advances allow for multiple types of omics data, such as transcriptomic, proteo...
International audienceMotivation: The high dimensionality of genomic data calls for the development ...
International audienceMotivation: The high dimensionality of genomic data calls for the development ...
International audienceMotivation: The high dimensionality of genomic data calls for the development ...
International audienceMotivation: The high dimensionality of genomic data calls for the development ...
This work studies the theoretical rules of feature selection in linear discriminant analysis (LDA), ...
International audienceMotivation: The high dimensionality of genomic data calls for the development ...
Background: Variable selection on high throughput biological data, such as gene expression or single...
Background: Variable selection on high throughput biological data, such as gene expression or single...
Chantier qualité GAInternational audienceBackground: Variable selection on high throughput biologica...
Chantier qualité GAInternational audienceBackground: Variable selection on high throughput biologica...
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...
International audienceRecent biotechnology advances allow for the collection of multiple types of om...
MOTIVATION: Pathway and gene set based approaches for the analysis of gene expression profiling expe...
Recent biotechnology advances allow for multiple types of omics data, such as transcriptomic, proteo...
International audienceMotivation: The high dimensionality of genomic data calls for the development ...
International audienceMotivation: The high dimensionality of genomic data calls for the development ...
International audienceMotivation: The high dimensionality of genomic data calls for the development ...
International audienceMotivation: The high dimensionality of genomic data calls for the development ...
This work studies the theoretical rules of feature selection in linear discriminant analysis (LDA), ...
International audienceMotivation: The high dimensionality of genomic data calls for the development ...