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iMIRACLE: an Iterative Multi-View Graph Neural Network to Model Intercellular Gene Regulation from Spatial

Ziheng Duan1, Siwei Xu1, Cheyu Lee1

  • 1University of California, Irvine, Irvine, CA, USA.

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Summary
This summary is machine-generated.

iMiracle, a new graph neural network, decodes cell-cell communication by integrating gene expression and ligand-receptor interactions. This method improves spatial transcriptomics analysis for understanding intercellular regulation.

Keywords:
cell–ell communicationsgraph neural networksinter-cellular gene regulationspatial transcriptomics

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Area of Science:

  • Genomics
  • Computational Biology
  • Systems Biology

Background:

  • Spatial transcriptomics enables gene expression analysis within cellular microenvironments.
  • Cell-cell communication (CCC) via ligand-receptor (LR) interactions drives cellular responses.
  • Existing methods lack robust approaches to link CCC to gene expression changes for biological insights.

Purpose of the Study:

  • To develop a novel computational method for modeling intercellular regulation.
  • To integrate spatial transcriptomics data with cell-cell communication networks.
  • To infer cell-specific gene regulatory scores driven by LR interactions.

Main Methods:

  • Developed iMiracle, an iterative multi-view graph neural network.
  • Integrated inter- and intra-cellular networks for gene expression estimation.
  • Employed iterative learning to address data sparsity in CCC networks.
  • Inferred cell-specific ligand-gene regulatory scores using LR pair contributions.

Main Results:

  • iMiracle demonstrated superior performance in gene expression imputation across diverse datasets.
  • The method outperformed existing approaches in inferring regulatory scores.
  • Evaluated on nine simulated and eight real spatial transcriptomics datasets from three platforms.

Conclusions:

  • iMiracle effectively models intercellular regulation by integrating gene expression and CCC data.
  • The tool enhances the interpretability of spatial transcriptomics by providing cell-specific regulatory insights.
  • iMiracle is an open-source software poised to advance the study of cell-cell communication and transcriptional regulation.