Institute of Industrial Science, The University of Tokyo, Tokyo, Japan.
LMAM and School of Mathematical Sciences, Peking University, Beijing, China.
PLoS Comput Biol. 2019 Nov 13;15(11):e1007488. doi: 10.1371/journal.pcbi.1007488. eCollection 2019 Nov.
Modeling cell differentiation from omics data is an essential problem in systems biology research. Although many algorithms have been established to analyze scRNA-seq data, approaches to infer the pseudo-time of cells or quantify their potency have not yet been satisfactorily solved. Here, we propose the Landscape of Differentiation Dynamics (LDD) method, which calculates cell potentials and constructs their differentiation landscape by a continuous birth-death process from scRNA-seq data. From the viewpoint of stochastic dynamics, we exploited the features of the differentiation process and quantified the differentiation landscape based on the source-sink diffusion process. In comparison with other scRNA-seq methods in seven benchmark datasets, we found that LDD could accurately and efficiently build the evolution tree of cells with pseudo-time, in particular quantifying their differentiation landscape in terms of potency. This study provides not only a computational tool to quantify cell potency or the Waddington potential landscape based on scRNA-seq data, but also novel insights to understand the cell differentiation process from a dynamic perspective.
从组学数据中对细胞分化进行建模是系统生物学研究中的一个基本问题。尽管已经建立了许多算法来分析 scRNA-seq 数据,但推断细胞的伪时间或量化其潜能的方法尚未得到令人满意的解决。在这里,我们提出了分化动力学景观(LDD)方法,该方法通过 scRNA-seq 数据中的连续生死过程来计算细胞潜能并构建其分化景观。从随机动力学的角度来看,我们利用分化过程的特征,并基于源汇扩散过程来量化分化景观。在与七个基准数据集的其他 scRNA-seq 方法进行比较时,我们发现 LDD 可以准确有效地构建具有伪时间的细胞进化树,特别是可以从潜能的角度量化其分化景观。这项研究不仅提供了一种基于 scRNA-seq 数据量化细胞潜能或 Waddington 潜能景观的计算工具,而且还为从动态角度理解细胞分化过程提供了新的见解。