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A Quantitative Multivariate Model of Human Dendritic Cell-T Helper Cell Communication
Author(s) -
Maximilien Grandclaudon,
Marie Perrot-Dockès,
Coline Trichot,
Léa Karpf,
Omar Abouzid,
Camille Chauvin,
Philémon Sirven,
Wassim Abou-Jaoudé,
Frédérique Berger,
Philippe Hupé,
Denis Thieffry,
Laure Sansonnet,
Julien Chiquet,
Céline LévyLeduc,
Vassili Soumelis
Publication year - 2019
Publication title -
cell
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 26.304
H-Index - 776
eISSN - 1097-4172
pISSN - 0092-8674
DOI - 10.1016/j.cell.2019.09.012
Subject(s) - biology , context (archaeology) , decipher , dendritic cell , function (biology) , computational biology , cell , systems biology , grammar , microbiology and biotechnology , immune system , immunology , bioinformatics , genetics , paleontology , linguistics , philosophy
Cell-cell communication involves a large number of molecular signals that function as words of a complex language whose grammar remains mostly unknown. Here, we describe an integrative approach involving (1) protein-level measurement of multiple communication signals coupled to output responses in receiving cells and (2) mathematical modeling to uncover input-output relationships and interactions between signals. Using human dendritic cell (DC)-T helper (Th) cell communication as a model, we measured 36 DC-derived signals and 17 Th cytokines broadly covering Th diversity in 428 observations. We developed a data-driven, computationally validated model capturing 56 already described and 290 potentially novel mechanisms of Th cell specification. By predicting context-dependent behaviors, we demonstrate a new function for IL-12p70 as an inducer of Th17 in an IL-1 signaling context. This work provides a unique resource to decipher the complex combinatorial rules governing DC-Th cell communication and guide their manipulation for vaccine design and immunotherapies.

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