Reconstructing multi-scale tissue spatial architecture from single-cell RNA-seq with REMAP

Journal: bioRxiv
Published Date:

Abstract

Understanding spatial organization of cells is critical for deciphering tissue function and disease. Single-cell RNA-sequencing (scRNA-seq) profiles transcriptomes at scale but loses spatial context, while spatial transcriptomics (ST) preserves spatial information but is constrained by cost and gene coverage. Here, we present REMAP, a deep learning framework that integrates gene expression with neighborhood-level gene-gene covariance to reconstruct multi-scale spatial organization of scRNA-seq data using one or multiple ST references. Across 2D and 3D mouse brain, human fetal cortex, and seven human cancer types, REMAP consistently outperformed existing approaches. Applied to a human multiple sclerosis atlas, REMAP resolved microglial neighborhood heterogeneity, and identified a rare pro-inflammatory microglia-astrocyte subpopulation. Across diverse cancers, REMAP recovered conserved spatially defined cancer-associated fibroblast subtypes with known prognostic significance. By transforming cost-efficient single-cell datasets into spatially interpretable tissue maps, REMAP enables spatial hypothesis generation, microenvironment discovery, and population-scale inference of conserved and perturbed architectural principles in human disease.

Authors

  • Li
  • M.; Jiang
  • S.; Coleman
  • K.; Chen
  • Z.; Jin
  • K.; Liu
  • Y.; Lee
  • D. H.; Hwang
  • T. H.; Xiao
  • R.; Jin
  • J.; Walsh
  • C. A.; Qian
  • X.; Wang
  • L.

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