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ClusterMap for multi-scale clustering analysis of spatial gene expression

Yichun He, Xin Tang, Jiahao Huang, Jingyi Ren, Haowen Zhou, Kevin Chen, Albert Liu, Hailing Shi, Zuwan Lin, Qiang Li, Abhishek Aditham, Johain R. Ounadjela, Emanuelle I. Grody, Jian Shu, Jia Liu, Xiao Wang

2021Nature Communications93 citationsDOIOpen Access PDF

Abstract

Quantifying RNAs in their spatial context is crucial to understanding gene expression and regulation in complex tissues. In situ transcriptomic methods generate spatially resolved RNA profiles in intact tissues. However, there is a lack of a unified computational framework for integrative analysis of in situ transcriptomic data. Here, we introduce an unsupervised and annotation-free framework, termed ClusterMap, which incorporates the physical location and gene identity of RNAs, formulates the task as a point pattern analysis problem, and identifies biologically meaningful structures by density peak clustering (DPC). Specifically, ClusterMap precisely clusters RNAs into subcellular structures, cell bodies, and tissue regions in both two- and three-dimensional space, and performs consistently on diverse tissue types, including mouse brain, placenta, gut, and human cardiac organoids. We demonstrate ClusterMap to be broadly applicable to various in situ transcriptomic measurements to uncover gene expression patterns, cell niche, and tissue organization principles from images with high-dimensional transcriptomic profiles.

Topics & Concepts

Computational biologyTranscriptomeBiologyGene expressionContext (archaeology)Cluster analysisGeneGene regulatory networkRegulation of gene expressionComputer scienceGeneticsArtificial intelligencePaleontologySingle-cell and spatial transcriptomicsRNA Research and SplicingGene expression and cancer classification
ClusterMap for multi-scale clustering analysis of spatial gene expression | Litcius