/SpatialID

A cell typing method for spatially resolved transcriptomics via transfer learning and spatial embedding

Primary LanguagePythonMIT LicenseMIT

python >3.8.8 Downloads Documentation Status

Implementation of cell annotation method: Spatial-ID

DOI

Spatially resolved transcriptomics (SRT) provides the opportunity to investigate the gene expression profiles and the spatial context of cells in naive state. Cell type annotation is a crucial task in the spatial transcriptome analysis of cell and tissue biology. In this study, we propose Spatial-ID, a supervision-based cell typing method, for high-throughput cell-level SRT datasets that integrates transfer learning and spatial embedding. Spatial-ID effectively incorporates the existing knowledge of reference scRNA-seq datasets and the spatial information of SRT datasets.

The architecture was inspired by Spatial-ID.

Installation

pip install SpatialID

API

For the API, please refer to: https://spatialid.readthedocs.io/en/latest/index.html

Dependences

numpy-1.21.3 pandas-1.2.4 scanpy-1.8.1 torch-1.8.1 torch__geometric-1.7.2

Datasets

Disclaimer

This tool is for research purpose and not approved for clinical use.
This is not an official product.