TooManyCells

A suite of algorithms and visualizations focusing on the relationships between cell clades.

Description: 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.
Authors: Schwartz GW, Y Zhou, Petrovic J, Fasolino M, Xu L, Shaffer SM, Pear WS, Vahedi G, and Faryabi RB
Lab: Schwartz
Version: 2.1.1.0
Keywords: Single-cell clade relationships scRNA-seq
Licensing: GPL-3

Citation

Schwartz, G. W. et al. TooManyCells identifies and visualizes relationships of single-cell clades. Nature Methods 17, 405–413 (2020).
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