An R package for the visualization and analysis of spatially-resolved transcriptomics data, such as those generated with 10X Visium. The spatialGE package features a data object (STlist: Spatial Transctiptomics List) to store data and results from multiple tissue sections, as well as associated analytical methods for:
STplot
, gene_interpolation
, STplot_interpolation
to explore gene expression in spatial context.SThet
, compare_SThet
to assess the level of spatial uniformity in gene expression by calculating Moran’s I and/or Geary’s C and qualitatively explore correlations with sample-level metadata (i.e., tissue type, therapy, disease status).STclust
to perform spatially-informed hierarchical clustering for prediction of tissue domains in samples.STenrich
to detect gene sets with indications of spatial patterns (i.e., non-spatially uniform gene set expression).STgradient
to detect genes with evidence of variation in expression with respect to a tissue domain.STdiff
to test for differentially expressed genes using mixed models with spatial covariance structures to account of spatial dependency among spots/cells. It also supports non-spatial tests (Wilcoxon’s and T-test).The methods in the initial spatialGE release, technical details, and their utility are presented in this publication: https://doi.org/10.1093/bioinformatics/btac145. For details on the recently developed methods STenrich
, STgradient
, and STdiff
please refer to the spatialGE documentation.
The spatialGE
repository is available at GitHub and can be installed via devtools
.
options(timeout=9999999) # To avoid R closing connection with GitHub
devtools::install_github("fridleylab/spatialGE")
For tutorials on how to use spatialGE
, please go to: https://fridleylab.github.io/spatialGE/
The code for spatialGE
can be found here: https://github.com/FridleyLab/spatialGE
A point-and-click web application that allows using spatialGE without coding/scripting is available at https://spatialge.moffitt.org . The web app currently supports Visium outputs and csv/tsv gene expression files paired with csv/tsv coordinate files.
When using spatialGE, please cite the following publication:
Ospina, O. E., Wilson C. M., Soupir, A. C., Berglund, A. Smalley, I., Tsai, K. Y., Fridley, B. L. 2022. spatialGE: quantification and visualization of the tumor microenvironment heterogeneity using spatial transcriptomics. Bioinformatics, 38:2645-2647. https://doi.org/10.1093/bioinformatics/btac145