Research themes
Gene networks
The group develops algorithms for constructing models of gene networks and studies their involvement in pathological contexts such as cancer, neurodegenerative diseases, genetic dysfunctions, and viral infections. The group also works on the study of gene networks in general, including in non-human contexts such as the model plant Arabidopsis thaliana.
Transcriptomics of human pathologies
The group studies the phenomenon of gene transcription quantitatively through the analysis of expression data from high-throughput technologies such as microarrays and next-generation sequencing. The analysis contexts predominantly relate to human pathologies such as cancer, metabolic genetic diseases, drug abuse, and viral infections.
Phylogenomics
The group produces models of molecular evolution based on the comparison of sequences and gene expression, using classical phylogenetic techniques (evolutionary trees) and innovative ones (evolutionary networks and principal component analysis).
Omics machine learning
The group develops algorithms for predicting genetic phenomena (e.g., somatic mutations), metabolic levels, and clinical characteristics (estimation of course and pharmacological response) in patient samples through the interrogation of gene networks.