可视化
聚类分析
克莱德
计算生物学
计算机科学
层次聚类
降维
生物
数据可视化
数据挖掘
遗传学
基因
人工智能
系统发育树
作者
Gregory W. Schwartz,Yeqiao Zhou,Jelena Petrovic,Maria Fasolino,Lanwei Xu,Sydney M. Shaffer,Warren S. Pear,Golnaz Vahedi,Robert B. Faryabi
出处
期刊:Nature Methods
[Springer Nature]
日期:2020-03-02
卷期号:17 (4): 405-413
被引量:73
标识
DOI:10.1038/s41592-020-0748-5
摘要
Identifying and visualizing transcriptionally similar cells is instrumental for accurate exploration of the cellular diversity revealed by single-cell transcriptomics. However, widely used clustering and visualization algorithms produce a fixed number of cell clusters. A fixed clustering ‘resolution’ hampers our ability to identify and visualize echelons of cell states. We developed TooManyCells, a suite of graph-based algorithms for efficient and unbiased identification and visualization of cell clades. TooManyCells introduces a visualization model built on a concept intentionally orthogonal to dimensionality-reduction methods. TooManyCells is also equipped with an efficient matrix-free divisive hierarchical spectral clustering different from prevalent single-resolution clustering methods. TooManyCells enables multiresolution and multifaceted exploration of single-cell clades. An advantage of this paradigm is the immediate detection of rare and common populations that outperforms popular clustering and visualization algorithms, as demonstrated using existing single-cell transcriptomic data sets and new data modeling drug-resistance acquisition in leukemic T cells. The TooManyCells approach to scRNA-seq data facilitates efficient and unbiased identification and visualization of cell clades and rare subpopulations. Application of TooManyCells to drug-resistant leukemia cells identifies a rare resistant-like subpopulation of treatment-naive cells.
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