RAINBOW: accurate cell type annotation method via contrastive learning and reference guidance for scCAS data
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RAINBOW provides an accurate and efficient way to automatically annotate celltypes in scCAS datasets. All RAINBOW wheels distributed on PyPI are MIT licensed.
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