Converting any SpatialData
object into files that can be opened by the Xenium Explorer.
Check the documentation to get started quickly.
Xenium Explorer is a registered trademark of 10x Genomics. The Xenium Explorer is licensed for usage on Xenium data (more details here).
Requirement: python>=3.9
pip install spatialdata_xenium_explorer
- Conversion of the following data: images, cell boundaries (polygons or spot), transcripts, cell-by-gene table, and cell categories (or observations).
- Image alignment can be made on the Xenium Explorer, and then the
SpatialData
object can be updated - When working on the
SpatialData
orAnnData
object, new cell categories can be easily and quickly added to the Explorer - When selecting cells with the "lasso tool" on the Explorer, it's easy to select back these cells on the
SpatialData
orAnnData
object
You can use our CLI or API, see examples below. It will create up to 6 files, among which a file called experiment.xenium
. Double-click on this file to open it on the Xenium Explorer (make sure you have the latest version of the software).
spatialdata_xenium_explorer write /path/to/sdata.zarr
Check our documentation for more details.
import spatialdata
import spatialdata_xenium_explorer
sdata = spatialdata.read_zarr("...")
spatialdata_xenium_explorer.write("/path/to/directory", sdata, image_key, shapes_key, points_key, gene_column)
Check our documentation for more details.
This package is still in early development. Contributions are welcome (new issues, pull requests, ...).
This library has been detailed in a more general article spatial omics analysis, see the Sopa library. The latter article is not published yet, but you can cite our preprint:
@article {Blampey2023.12.22.571863,
author = {Quentin Blampey & Kevin Mulder et al.},
title = {Sopa: a technology-invariant pipeline for analyses of image-based spatial-omics},
elocation-id = {2023.12.22.571863},
year = {2023},
doi = {10.1101/2023.12.22.571863},
publisher = {Cold Spring Harbor Laboratory},
URL = {https://www.biorxiv.org/content/early/2023/12/23/2023.12.22.571863},
eprint = {https://www.biorxiv.org/content/early/2023/12/23/2023.12.22.571863.full.pdf},
journal = {bioRxiv}
}