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Deciphering cell-cell communication at single-cell resolution for spatial transcriptomics with subgraph-based graph attention network.

Wenyi YangPingping WangShouping XuTao WangMeng LuoYideng CaiChang XuGuangfu XueJinhao QueQian DingXiyun JinYuexin YangFenglan PangBoran PangYi LinHuan NieZhao-Chun XuYong JiQinghua Jiang
Published in: Nature communications (2024)
The inference of cell-cell communication (CCC) is crucial for a better understanding of complex cellular dynamics and regulatory mechanisms in biological systems. However, accurately inferring spatial CCCs at single-cell resolution remains a significant challenge. To address this issue, we present a versatile method, called DeepTalk, to infer spatial CCC at single-cell resolution by integrating single-cell RNA sequencing (scRNA-seq) data and spatial transcriptomics (ST) data. DeepTalk utilizes graph attention network (GAT) to integrate scRNA-seq and ST data, which enables accurate cell-type identification for single-cell ST data and deconvolution for spot-based ST data. Then, DeepTalk can capture the connections among cells at multiple levels using subgraph-based GAT, and further achieve spatially resolved CCC inference at single-cell resolution. DeepTalk achieves excellent performance in discovering meaningful spatial CCCs on multiple cross-platform datasets, which demonstrates its superior ability to dissect cellular behavior within intricate biological processes.
Keyphrases
  • single cell
  • rna seq
  • high throughput
  • electronic health record
  • big data
  • stem cells
  • machine learning
  • induced apoptosis
  • gene expression
  • high resolution
  • mesenchymal stem cells
  • oxidative stress
  • cell cycle arrest