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首页> 外文期刊>Nucleic Acids Research >CellBIC: bimodality-based top-down clustering of single-cell RNA sequencing data reveals hierarchical structure of the cell type
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CellBIC: bimodality-based top-down clustering of single-cell RNA sequencing data reveals hierarchical structure of the cell type

机译:Cellbic:基于双细胞RNA测序数据的双级基础的自上而下聚类,显示了细胞类型的层次结构

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摘要

Single-cell RNA sequencing (scRNA-seq) is a powerful tool to study heterogeneity and dynamic changes in cell populations. Clustering scRNA-seq is essential in identifying new cell types and studying their characteristics. We develop CellBIC (single Cell BI-modal Clustering) to cluster scRNA-seq data based on modality in the gene expression distribution. Compared with classical bottom-up approaches that rely on a distance metric, CellBIC performs hierarchical clustering in a top-down manner. CellBIC outperformed the bottom-up hierarchical clustering approach and other recently developed clustering algorithms while maintaining the hierarchical structure of cells. Importantly, CellBIC identifies type 2 diabetes and age specific similar to cell signatures characterized by SIX3 and CDH2, respectively.
机译:单细胞RNA测序(ScRNA-SEQ)是一种研究异质性和细胞群体的动态变化的强大工具。 聚类ScrNA-SEQ对于识别新细胞类型并研究其特征至关重要。 我们开发Cellbic(单细胞双型聚类)到基于基因表达分布中的模态进行群集ScrNA-SEQ数据。 与依赖于距离度量的经典自下而上的方法相比,Cellbic以自上而下的方式执行分层聚类。 Cellbic优于自下而上的分层聚类方法和其他最近开发的聚类算法,同时保持细胞的层次结构。 重要的是,Cellbic鉴定了与特征的2型糖尿病和年龄,其特异性分别具有六个和CDH2的特征细胞签名。

著录项

  • 来源
    《Nucleic Acids Research》 |2018年第21期|共8页
  • 作者单位

    Univ Penn Inst Diabet Obes &

    Metab Perelman Sch Med Philadelphia PA 19104 USA;

    Univ Penn Inst Diabet Obes &

    Metab Perelman Sch Med Philadelphia PA 19104 USA;

    Univ Penn Inst Diabet Obes &

    Metab Perelman Sch Med Philadelphia PA 19104 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物化学;
  • 关键词

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