duVerle David A, Yotsukura Sohiya, Nomura Seitaro, Aburatani Hiroyuki, Tsuda Koji
Graduate School of Frontier Sciences at the University of Tokyo, 5-1-5 Kashiwa-no-ha, Kashiwa, Japan.
Biotechnology Research Institute for Drug Discovery, National Institute of Advanced Industrial Science and Technology, 2-4-7 Aomi, Koto-ku, Tokyo, Japan.
BMC Bioinformatics. 2016 Sep 13;17(1):363. doi: 10.1186/s12859-016-1175-6.
Single-cell RNA sequencing is fast becoming one the standard method for gene expression measurement, providing unique insights into cellular processes. A number of methods, based on general dimensionality reduction techniques, have been suggested to help infer and visualise the underlying structure of cell populations from single-cell expression levels, yet their models generally lack proper biological grounding and struggle at identifying complex differentiation paths.
Here we introduce cellTree: an R/Bioconductor package that uses a novel statistical approach, based on document analysis techniques, to produce tree structures outlining the hierarchical relationship between single-cell samples, while identifying latent groups of genes that can provide biological insights.
With cellTree, we provide experimentalists with an easy-to-use tool, based on statistically and biologically-sound algorithms, to efficiently explore and visualise single-cell RNA data. The cellTree package is publicly available in the online Bionconductor repository at: http://bioconductor.org/packages/cellTree/ .
单细胞RNA测序正迅速成为基因表达测量的标准方法之一,为细胞过程提供独特见解。基于一般降维技术,人们提出了许多方法来帮助从单细胞表达水平推断和可视化细胞群体的潜在结构,然而它们的模型通常缺乏适当的生物学基础,并且在识别复杂的分化路径方面存在困难。
在这里,我们介绍了cellTree:一个R/Bioconductor软件包,它使用一种基于文档分析技术的新颖统计方法,生成概述单细胞样本之间层次关系的树结构,同时识别能够提供生物学见解的潜在基因群体。
通过cellTree,我们为实验人员提供了一个易于使用的工具,该工具基于统计和生物学合理的算法,可有效地探索和可视化单细胞RNA数据。cellTree软件包可在在线Bionconductor存储库中公开获取,网址为:http://bioconductor.org/packages/cellTree/ 。