| Literature DB >> 33597528 |
Floriane Noël1,2,3, Lucile Massenet-Regad1,4, Irit Carmi-Levy2,3, Antonio Cappuccio2,3, Maximilien Grandclaudon2,3, Coline Trichot1,2,3, Yann Kieffer2,5, Fatima Mechta-Grigoriou2,5, Vassili Soumelis6,7,8,9.
Abstract
Cell-to-cell communication can be inferred from ligand-receptor expression in cell transcriptomic datasets. However, important challenges remain: global integration of cell-to-cell communication; biological interpretation; and application to individual cell population transcriptomic profiles. We develop 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; and 4) three visualization modes to facilitate biological interpretation. We apply ICELLNET to three datasets generated through RNA-seq, single-cell RNA-seq, and microarray. ICELLNET reveals autocrine IL-10 control of human dendritic cell communication with up to 12 cell types. Four of them (T cells, keratinocytes, neutrophils, pDC) are further tested and experimentally validated. In summary, ICELLNET is a global, versatile, biologically validated, and easy-to-use framework to dissect cell communication from individual or multiple cell-based transcriptomic profiles.Entities:
Year: 2021 PMID: 33597528 DOI: 10.1038/s41467-021-21244-x
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919