2024
DOI: 10.1093/bib/bbae188
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scBOL: a universal cell type identification framework for single-cell and spatial transcriptomics data

Yuyao Zhai,
Liang Chen,
Minghua Deng

Abstract: Motivation Over the past decade, single-cell transcriptomic technologies have experienced remarkable advancements, enabling the simultaneous profiling of gene expressions across thousands of individual cells. Cell type identification plays an essential role in exploring tissue heterogeneity and characterizing cell state differences. With more and more well-annotated reference data becoming available, massive automatic identification methods have sprung up to simplify the annotation process on… Show more

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