计算机科学
反褶积
空间分析
聚类分析
空间语境意识
人工智能
模式识别(心理学)
背景(考古学)
嵌入
图形
数据挖掘
生物
理论计算机科学
算法
数学
古生物学
统计
作者
Yahui Long,Kok Siong Ang,Mengwei Li,Kian Long Kelvin Chong,Raman Sethi,Chengwei Zhong,Hang Xu,Zhiwei Ong,Karishma Sachaphibulkij,Ao Chen,Li Zeng,Huazhu Fu,Min Wu,Lina H. K. Lim,Longqi Liu,Jinmiao Chen
标识
DOI:10.1038/s41467-023-36796-3
摘要
Abstract Spatial transcriptomics technologies generate gene expression profiles with spatial context, requiring spatially informed analysis tools for three key tasks, spatial clustering, multisample integration, and cell-type deconvolution. We present GraphST, a graph self-supervised contrastive learning method that fully exploits spatial transcriptomics data to outperform existing methods. It combines graph neural networks with self-supervised contrastive learning to learn informative and discriminative spot representations by minimizing the embedding distance between spatially adjacent spots and vice versa. We demonstrated GraphST on multiple tissue types and technology platforms. GraphST achieved 10% higher clustering accuracy and better delineated fine-grained tissue structures in brain and embryo tissues. GraphST is also the only method that can jointly analyze multiple tissue slices in vertical or horizontal integration while correcting batch effects. Lastly, GraphST demonstrated superior cell-type deconvolution to capture spatial niches like lymph node germinal centers and exhausted tumor infiltrating T cells in breast tumor tissue.
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