Publication | Open Access
ICELLNET: a transcriptome-based framework to dissect intercellular communication
23
Citations
37
References
2020
Year
Unknown Venue
ImmunologyCell PopulationGene Regulatory NetworkGene Expression ProfilingTumor BiologyCell InteractionBiological Network VisualizationIntercellular CommunicationCancer ResearchTranslational BioinformaticsPathway AnalysisGene ExpressionCell BiologyFunctional GenomicsTumor MicroenvironmentCell CommunicationCancer GenomicsBreast CancerSystems BiologyMedicine
Abstract Cell-to-cell communication can be inferred from ligand-receptor expression in cell transcriptomic datasets. However, important challenges remain: 1) global integration of cell-to-cell communication, 2) biological interpretation, and 3) application to individual cell population transcriptomic profiles. We developed ICELLNET, a transcriptomic-based framework integrating: 1) an original expert-curated database of ligand-receptor interactions accounting for multiple subunits expression, 2) quantification of communication scores, 3) the possibility to connect a cell population of interest with 31 reference human cell types (BioGPS), and 4) three visualization modes to facilitate biological interpretation. We applied ICELLNET to uncover different communication in breast cancer associated fibroblast (CAF) subsets. ICELLNET also revealed autocrine IL-10 as a switch to control human dendritic cell communication with up to 12 other cell types, four of which were experimentally validated. In summary, ICELLNET is a global, versatile, biologically validated, and easy-to-use framework to dissect cell communication from single or multiple cell-based transcriptomic profile(s).
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