SpaGRN: Investigating spatially informed regulatory paths for spatially resolved transcriptomics data

Yao Li, Xiaobin Liu, Lidong Guo, Kai Han, Shuangsang Fang, Xinjiang Wan, Dantong Wang, Xun Xu, Ling Jiang, Guangyi Fan, Mengyang Xu

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

Cells spatially organize into distinct cell types or functional domains through localized gene regulatory networks. However, current spatially resolved transcriptomics analyses fail to integrate spatial constraints and proximal cell influences, limiting the mechanistic understanding of tissue organization. Here, we introduce SpaGRN, a statistical framework that reconstructs cell-type- or functional-domain-specific, dynamic, and spatial regulons by coupling intracellular spatial regulatory causality with extracellular signaling path information. Benchmarking across synthetic and real datasets demonstrates SpaGRN's superior precision over state-of-the-art tools in identifying context-dependent regulons. Applied to diverse spatially resolved transcriptomics platforms (Stereo-seq, STARmap, MERFISH, CosMx, Slide-seq, and 10x Visium), complex cancerous samples, and 3D datasets of developing Drosophila embryos and larvae, SpaGRN not only provides a versatile toolkit for decoding receptor-mediated spatial regulons but also reveals spatiotemporal regulatory mechanisms underlying organogenesis and inflammation.

Original languageEnglish
Article number101243
JournalCell Systems
Volume16
Issue number4
DOIs
StatePublished - 16 Apr 2025

Keywords

  • 3D regulatory atlas
  • cellular interaction mapping
  • gene regulatory network
  • receptor
  • receptor-TF-target cascades
  • spatial autocorrelation analysis
  • spatially resolved transcriptomics
  • spatiotemporal dynamics
  • transcription factor

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