Multi-level cellular and functional annotation of single-cell transcriptomes using scPipeline

Nicholas Mikolajewicz, Rafael Gacesa, Magali Aguilera-Uribe,Kevin R. Brown,Jason Moffat,Hong Han

Communications biology(2022)

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摘要
Single-cell RNA-sequencing (scRNA-seq) offers functional insight into complex biology, allowing for the interrogation of cellular populations and gene expression programs at single-cell resolution. Here, we introduce scPipeline, a single-cell data analysis toolbox that builds on existing methods and offers modular workflows for multi-level cellular annotation and user-friendly analysis reports. Advances to scRNA-seq annotation include: (i) co-dependency index (CDI)-based differential expression, (ii) cluster resolution optimization using a marker-specificity criterion, (iii) marker-based cell-type annotation with Miko scoring, and (iv) gene program discovery using scale-free shared nearest neighbor network (SSN) analysis. Both unsupervised and supervised procedures were validated using a diverse collection of scRNA-seq datasets and illustrative examples of cellular transcriptomic annotation of developmental and immunological scRNA-seq atlases are provided herein. Overall, scPipeline offers a flexible computational framework for in-depth scRNA-seq analysis.
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关键词
Computational platforms and environments,Functional clustering,Gene expression,Gene regulatory networks,Statistical methods,Life Sciences,general
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