scspecies allows users to align latent representations of single-cell datasets from different species.
Project description
scspecies
scSpecies is a deep‐learning framework for aligning single‐cell RNA-seq datasets across species.
Built on top of scVI and transfer-learning principles, it learns a shared embedding space that directly matches cell populations from different organisms.
Installation
To install the latest stable release of scSpecies run one of the following commands. scSpecies defines two extras required to run the tutorial notebooks, plotting and notebooks.
.. code-block:: bash
pip install scspecies
After installing, confirm that scSpecies loads:
.. code-block:: bash
python -c "import scspecies; print(scspecies.__version__)"
Documentation
Full API docs, tutorials, and examples are available at: scSpecies Documentation (Read the Docs)
Tutorial Notebooks s
Notebooks can be accessed via the package documentation or found in the folder docs/source/tutorials via GitHub.
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