CytoSimplex: visualizing single-cell fates and transitions on a simplex.

Jialin Liu, Yichen Wang, Chen Li, Yichen Gu, Noriaki Ono, Joshua Welch
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Abstract

Summary: Cells differentiate to their final fates along unique trajectories, often involving multi-potent progenitors that can produce multiple terminally differentiated cell types. Recent developments in single-cell transcriptomic and epigenomic measurement provide tremendous opportunities for mapping these trajectories. The visualization of single-cell data often relies on dimension reduction methods such as UMAP to simplify high-dimensional single-cell data down to an understandable 2D form. However, these dimension reduction methods are not constructed to allow direct interpretation of the reduced dimensions in terms of cell differentiation. To address these limitations, we developed a new approach that places each cell from a single-cell dataset within a simplex whose vertices correspond to terminally differentiated cell types. Our approach can quantify and visualize current cell fate commitment and future cell potential. We developed CytoSimplex, a standalone open-source package implemented in R and Python that provides simple and intuitive visualizations of cell differentiation in 2D ternary and 3D quaternary plots. We believe that CytoSimplex can help researchers gain a better understanding of cell type transitions in specific tissues and characterize developmental processes.

Availability and implementation: The R version of CytoSimplex is available on Github at https://github.com/welch-lab/CytoSimplex. The Python version of CytoSimplex is available on Github at https://github.com/welch-lab/pyCytoSimplex.

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CytoSimplex:在单纯形上可视化单细胞命运和转变。
摘要:细胞沿着独特的轨迹分化到最终的命运,通常涉及能够产生多种终末分化细胞类型的多能祖细胞。单细胞转录组学和表观基因组学测量的最新发展为绘制这些轨迹提供了巨大的机会。单格数据的可视化通常依赖于UMAP等降维方法,将高维单格数据简化为可理解的二维(2D)形式。然而,这些降维方法的构建并不是为了允许从细胞分化的角度直接解释降维。为了解决这些限制,我们开发了一种新方法,将单个细胞数据集中的每个细胞放置在一个单纯形中,其顶点对应于最终分化的细胞类型。我们的方法可以量化和可视化当前的细胞命运承诺和未来的细胞潜力。我们开发了CytoSimplex,这是一个独立的开源软件包,用R和Python实现,提供简单直观的二维三元和三维(3D)四元图细胞分化可视化。我们相信CytoSimplex可以帮助研究人员更好地理解特定组织中细胞类型的转变,并表征发育过程。可用性和实现:R版本的CytoSimplex可在Github上获得https://github.com/welch-lab/CytoSimplex。Python版本的CytoSimplex可在Github上获得https://github.com/welch-lab/pyCytoSimplex .补充信息:补充数据可在Bioinformatics在线获得。
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