Division of Biology and Biological Engineering, California Institute of Technology, Pasadena, CA 91125, USA; Kavli Institute for Theoretical Physics, University of California, Santa Barbara, CA 93106, USA.
Division of Biology and Biological Engineering, California Institute of Technology, Pasadena, CA 91125, USA.
Cell Syst. 2016 Nov 23;3(5):419-433.e8. doi: 10.1016/j.cels.2016.10.015.
As they proliferate, living cells undergo transitions between specific molecularly and developmentally distinct states. Despite the functional centrality of these transitions in multicellular organisms, it has remained challenging to determine which transitions occur and at what rates without perturbations and cell engineering. Here, we introduce kin correlation analysis (KCA) and show that quantitative cell-state transition dynamics can be inferred, without direct observation, from the clustering of cell states on pedigrees (lineage trees). Combining KCA with pedigrees obtained from time-lapse imaging and endpoint single-molecule RNA-fluorescence in situ hybridization (RNA-FISH) measurements of gene expression, we determined the cell-state transition network of mouse embryonic stem (ES) cells. This analysis revealed that mouse ES cells exhibit stochastic and reversible transitions along a linear chain of states ranging from 2C-like to epiblast-like. Our approach is broadly applicable and may be applied to systems with irreversible transitions and non-stationary dynamics, such as in cancer and development.
随着细胞的增殖,它们会在特定的分子和发育上有区别的状态之间发生转变。尽管这些转变在多细胞生物中具有功能上的核心地位,但在没有干扰和细胞工程的情况下,确定哪些转变发生以及发生的速度仍然具有挑战性。在这里,我们引入了亲缘关系相关分析(KCA),并表明可以从谱系(谱系树)上细胞状态的聚类中推断出定量的细胞状态转变动态,而无需直接观察。将 KCA 与延时成像获得的谱系以及基因表达的终点单细胞 RNA-荧光原位杂交(RNA-FISH)测量相结合,我们确定了小鼠胚胎干细胞(ES 细胞)的细胞状态转变网络。该分析表明,小鼠 ES 细胞沿从 2C 样到胚外样的线性状态链表现出随机和可逆的转变。我们的方法具有广泛的适用性,可应用于具有不可逆转变和非平稳动力学的系统,如癌症和发育。