Journal: Nucleic Acids Research
Article Title: Precise gene expression deconvolution in spatial transcriptomics with STged
doi: 10.1093/nar/gkaf087
Figure Lengend Snippet: STged is specifically designed for deconvolving gene expression from low-resolution SRT data. ( A ) Inputs for STged include an SRT gene expression matrix with coordinate information (top panel), corresponding cell-type proportion information (middle panel), and annotated scRNA-seq data as a reference for cell-type-specific gene expression (bottom panel). ( B ) STged’s computational model utilizes graph-based and reference gene signature-guided approaches, integrating cell-type-specific gene expression data from both spatial neighbor data and matched tissue scRNA-seq data. A spatial neighbor graph is constructed using spot location information, and cell-type-specific gene expression is derived from the annotated scRNA-seq data. ( C ) Outputs from STged include spot- and cell-type-specific gene expression matrices, alongside detailed gene expression profiles for each spot. ( D ) STged reconstructs spot- and cell-type-specific gene expression data for various downstream analyses, using cell- and gene-level approaches to thoroughly understand spatial cellular heterogeneity. At the cell level, clustering identifies distinct cell populations and continuous trajectories, and CCC analysis helps elucidate signaling interactions among cell types. At the gene level, mHVGs analysis identifies gene expression levels that vary across spatial microenvironments, and gene expression program analysis investigates the coordinated roles of gene sets in cellular regulation.
Article Snippet: SRT data of mouse kidney coronal section generated are downloaded from the website: ( https://www.10xgenomics.com/cn/resources/datasets/mouse-kidney-section-coronal-1-standard-1-1-0 ).
Techniques: Gene Expression, Construct, Derivative Assay