PLoS Computational Biology (Nov 2022)

Inferring a spatial code of cell-cell interactions across a whole animal body.

  • Erick Armingol,
  • Abbas Ghaddar,
  • Chintan J Joshi,
  • Hratch Baghdassarian,
  • Isaac Shamie,
  • Jason Chan,
  • Hsuan-Lin Her,
  • Samuel Berhanu,
  • Anushka Dar,
  • Fabiola Rodriguez-Armstrong,
  • Olivia Yang,
  • Eyleen J O'Rourke,
  • Nathan E Lewis

DOI
https://doi.org/10.1371/journal.pcbi.1010715
Journal volume & issue
Vol. 18, no. 11
p. e1010715

Abstract

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Cell-cell interactions shape cellular function and ultimately organismal phenotype. Interacting cells can sense their mutual distance using combinations of ligand-receptor pairs, suggesting the existence of a spatial code, i.e., signals encoding spatial properties of cellular organization. However, this code driving and sustaining the spatial organization of cells remains to be elucidated. Here we present a computational framework to infer the spatial code underlying cell-cell interactions from the transcriptomes of the cell types across the whole body of a multicellular organism. As core of this framework, we introduce our tool cell2cell, which uses the coexpression of ligand-receptor pairs to compute the potential for intercellular interactions, and we test it across the Caenorhabditis elegans' body. Leveraging a 3D atlas of C. elegans' cells, we also implement a genetic algorithm to identify the ligand-receptor pairs most informative of the spatial organization of cells across the whole body. Validating the spatial code extracted with this strategy, the resulting intercellular distances are negatively correlated with the inferred cell-cell interactions. Furthermore, for selected cell-cell and ligand-receptor pairs, we experimentally confirm the communicatory behavior inferred with cell2cell and the genetic algorithm. Thus, our framework helps identify a code that predicts the spatial organization of cells across a whole-animal body.