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IKAP—Identifying K mAjor cell Population groups in single-cell RNA-sequencing analysis

机译:IKAP-在单细胞RNA测序分析中识别K主要细胞群体

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Background In single-cell RNA-sequencing analysis, clustering cells into groups and differentiating cell groups by differentially expressed (DE) genes are 2 separate steps for investigating cell identity. However, the ability to differentiate between cell groups could be affected by clustering. This interdependency often creates a bottleneck in the analysis pipeline, requiring researchers to repeat these 2 steps multiple times by setting different clustering parameters to identify a set of cell groups that are more differentiated and biologically relevant. Findings To accelerate this process, we have developed IKAP—an algorithm to identify major cell groups and improve differentiating cell groups by systematically tuning parameters for clustering. We demonstrate that, with default parameters, IKAP successfully identifies major cell types such as T cells, B cells, natural killer cells, and monocytes in 2 peripheral blood mononuclear cell datasets and recovers major cell types in a previously published mouse cortex dataset. These major cell groups identified by IKAP present more distinguishing DE genes compared with cell groups generated by different combinations of clustering parameters. We further show that cell subtypes can be identified by recursively applying IKAP within identified major cell types, thereby delineating cell identities in a multi-layered ontology. Conclusions By tuning the clustering parameters to identify major cell groups, IKAP greatly improves the automation of single-cell RNA-sequencing analysis to produce distinguishing DE genes and refine cell ontology using single-cell RNA-sequencing data.
机译:背景技术在单细胞RNA测序分析中,通过差异表达(DE)基因将细胞聚类和区分细胞群是研究细胞身份的两个独立步骤。但是,群集会影响区分细胞组的能力。这种相互依赖性通常会在分析流程中造成瓶颈,要求研究人员通过设置不同的聚类参数来识别一组更具分化性和生物学相关性的细胞组,从而多次重复这两个步骤。结果为了加快这一过程,我们开发了IKAP,该算法可通过系统地调整聚类参数来识别主要细胞群并改善分化细胞群。我们证明,使用默认参数,IKAP成功识别了2种外周血单核细胞数据集中的主要细胞类型,例如T细胞,B细胞,自然杀伤细胞和单核细胞,并在先前发布的小鼠皮质数据集中恢复了主要细胞类型。与通过聚类参数的不同组合生成的细胞组相比,通过IKAP识别的这些主要细胞组呈现出更多的独特DE基因。我们进一步表明,可以通过在已识别的主要细胞类型内递归应用IKAP来识别细胞亚型,从而在多层本体中描述细胞身份。结论IKAP通过调整聚类参数以识别主要细胞群,极大地改善了单细胞RNA测序分析的自动化,以产生独特的DE基因并使用单细胞RNA测序数据完善细胞本体。

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