Mapping cellular interactions from spatially resolved transcriptomics data.
James ZhuYunguan WangWoo Yong ChangAlicia MalewskaFabiana NapolitanoJeffrey C GahanNisha UnniMin ZhaoRongqing YuanFangjiang WuLauren YueLei GuoZhuo ZhaoDanny Z ChenRaquibul HannanSiyuan ZhangGuanghua XiaoPing MuAriella B HankerDouglas StrandCarlos L ArteagaNeil DesaiXinlei WangYang XieTao WangPublished in: Nature methods (2024)
Cell-cell communication (CCC) is essential to how life forms and functions. However, accurate, high-throughput mapping of how expression of all genes in one cell affects expression of all genes in another cell is made possible only recently through the introduction of spatially resolved transcriptomics (SRT) technologies, especially those that achieve single-cell resolution. Nevertheless, substantial challenges remain to analyze such highly complex data properly. Here, we introduce a multiple-instance learning framework, Spacia, to detect CCCs from data generated by SRTs, by uniquely exploiting their spatial modality. We highlight Spacia's power to overcome fundamental limitations of popular analytical tools for inference of CCCs, including losing single-cell resolution, limited to ligand-receptor relationships and prior interaction databases, high false positive rates and, most importantly, the lack of consideration of the multiple-sender-to-one-receiver paradigm. We evaluated the fitness of Spacia for three commercialized single-cell resolution SRT technologies: MERSCOPE/Vizgen, CosMx/NanoString and Xenium/10x. Overall, Spacia represents a notable step in advancing quantitative theories of cellular communications.