Litcius/Paper detail

Knowledge-graph-based cell-cell communication inference for spatially resolved transcriptomic data with SpaTalk

Xin Shao, Chengyu Li, Haihong Yang, Xiaoyan Lu, Jie Liao, Jingyang Qian, Kai Wang, Junyun Cheng, Penghui Yang, Huajun Chen, Xiao Xu, Xiaohui Fan

2022Nature Communications214 citationsDOIOpen Access PDF

Abstract

Spatially resolved transcriptomics provides genetic information in space toward elucidation of the spatial architecture in intact organs and the spatially resolved cell-cell communications mediating tissue homeostasis, development, and disease. To facilitate inference of spatially resolved cell-cell communications, we here present SpaTalk, which relies on a graph network and knowledge graph to model and score the ligand-receptor-target signaling network between spatially proximal cells by dissecting cell-type composition through a non-negative linear model and spatial mapping between single-cell transcriptomic and spatially resolved transcriptomic data. The benchmarked performance of SpaTalk on public single-cell spatial transcriptomic datasets is superior to that of existing inference methods. Then we apply SpaTalk to STARmap, Slide-seq, and 10X Visium data, revealing the in-depth communicative mechanisms underlying normal and disease tissues with spatial structure. SpaTalk can uncover spatially resolved cell-cell communications for single-cell and spot-based spatially resolved transcriptomic data universally, providing valuable insights into spatial inter-cellular tissue dynamics.

Topics & Concepts

TranscriptomeInferenceComputational biologyComputer scienceCellGraphCell typeBiologyArtificial intelligenceGene expressionGeneTheoretical computer scienceGeneticsSingle-cell and spatial transcriptomicsGene expression and cancer classificationGene Regulatory Network Analysis
Knowledge-graph-based cell-cell communication inference for spatially resolved transcriptomic data with SpaTalk | Litcius