--- title: "TENxXeniumData" author: - name: Matineh Rahmatbakhsh affiliation: ProCogia, Vancouver, Canada - name: Monica Ge affiliation: Genentech, South San Francisco, California, USA output: BiocStyle::html_document: toc_float: true package: TENxXeniumData abstract: | The TENxXeniumData ExperimentHub package provides a collection of Xenium spatial transcriptomics datasets by 10X Genomics. These datasets have been formatted into the Bioconductor classes, the SpatialExperiment or SpatialFeatureExperiment (SFE), to facilitate seamless integration into various applications, including examples, demonstrations, and tutorials. The constructed data objects include gene expression profiles, per-transcript location data, centroid, segmentation boundaries (e.g., cell or nucleus boundaries), and image. vignette: | %\VignetteIndexEntry{TENxXeniumData} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r include = FALSE} knitr::opts_chunk$set(message = FALSE, warning = FALSE, error = FALSE) ``` # Introduction Image-based spatial data, like Xenium, is typically focused on profiling a pre-selected set of genes. Such data can achieve resolution at the level of individual molecules, preserving both single-cell and subcellular details. Additionally, these methods often capture cellular boundaries through segmentations. The `TENxXeniumData` package aims to provide a curated collection of Xenium spatial transcriptomics datasets provided by 10X Genomics. These datasets are formatted into Bioconductor classes, specifically the SpatialExperiment or SpatialFeatureExperiment (SFE). Similar to [SFEData](https://bioconductor.org/packages/SFEData/), TENxXeniumData is designed as an ExperimentHub package focusing on Spatial Data, with a specific emphasis on Xenium. A notable distinction lies in our constructed data object, where our primary focus is on Xenium data. We aim to capture detected molecules/transcripts crucial for gaining insights into subcellular details related to specific markers and the imaging data, in addition to the gene expression profile of each cell, the centroid, and the boundary of each cell. Additionally, we have chosen to employ SpatialExperiment as an alternative scheme for data representation. In this scheme, cellular segmentations are integrated into per-cell metadata of the constructed object, # Installation To install the `TENxXeniumData` package from GitHub: ```{r, eval=FALSE} if (!require("BiocManager", quietly = TRUE)) install.packages("BiocManager") BiocManager::install("TENxXeniumData") ``` # Available datasets The `TENxXeniumData` package provides an R/Bioconductor resource for [Xenium spatially-resolved data by 10X Genomics](https://support.10xgenomics.com/spatial-gene-expression/datasets). The package currently includes the following datasets: * [Mouse Brain: 10x Genomics Xenium In Situ (Tiny Subset)](https://www.10xgenomics.com/resources/datasets/fresh-frozen-mouse-brain-for-xenium-explorer-demo-1-standard) * `spe_mouse_brain` (SpatialExperiment Bioconductor class) * `sfe_mouse_brain` (SpatialFeatureExperiment Bioconductor class) * [Human Pancreas: 10x Genomics Xenium In Situ](https://www.10xgenomics.com/resources/datasets/human-pancreas-preview-data-xenium-human-multi-tissue-and-cancer-panel-1-standard) * `spe_human_pancreas` (SpatialExperiment Bioconductor class) * `sfe_human_pancreas` (SpatialFeatureExperiment Bioconductor class) A list of currently available datasets can be obtained using the ExperimentHub interface: ```{r, message=FALSE} library(SpatialExperiment) library(SpatialFeatureExperiment) library(TENxXeniumData) library(BumpyMatrix) library(SummarizedExperiment) eh <- ExperimentHub() (q <- query(eh, "TENxXenium")) ``` # Loading the data The following examples illustrate the process of loading the provided datasets into your R session, representing them as objects of the `SpatialExperiment` or `SpatialFeatureExperiment` classes. Loading SpatialExperiment object: ```{r, message=FALSE} # load object spe <- spe_mouse_brain() # check object spe ``` ```{r} # here, cellular segmentations are stored in per-cell metadata colData(spe) ``` Loading SpatialFeatureExperiment object: ```{r, message=FALSE} # load object sfe <- sfe_mouse_brain() # check object sfe ``` # Session information ```{r} sessionInfo() ```