2022
DOI: 10.1101/2022.10.24.513476
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Single-cell gene set enrichment analysis and transfer learning for functional annotation of scRNA-seq data

Abstract: Although an essential step, the functional annotation of cells often proves particularly challenging in the analysis of single-cell transcriptional data. Several methods have been developed to accomplish this task. However, in most cases, these rely on techniques initially developed for bulk RNA sequencing or simply make use of marker genes identified from cell clustering followed by supervised annotation. To overcome these limitations and automatise the process, we have developed two novel methods, the single… Show more

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References 86 publications
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