Herberg Maria, Glauche Ingmar, Zerjatke Thomas, Winzi Maria, Buchholz Frank, Roeder Ingo
Institute for Medical Informatics and Biometry, Faculty of Medicine Carl Gustav Carus, Technische Universität Dresden, Dresden, Germany Interdisciplinary Center for Bioinformatics, Faculty of Medicine, Universität Leipzig, Leipzig, Germany
Institute for Medical Informatics and Biometry, Faculty of Medicine Carl Gustav Carus, Technische Universität Dresden, Dresden, Germany.
J R Soc Interface. 2016 Apr;13(117). doi: 10.1098/rsif.2016.0167.
Pluripotent mouse embryonic stem cells (mESCs) show heterogeneous expression levels of transcription factors (TFs) involved in pluripotency regulation, among them Nanog and Rex1. The expression of both TFs can change dynamically between states of high and low activity, correlating with the cells' capacity for self-renewal. Stochastic fluctuations as well as sustained oscillations in gene expression are possible mechanisms to explain this behaviour, but the lack of suitable data hampered their clear distinction. Here, we present a systems biology approach in which novel experimental data on TF heterogeneity is complemented by an agent-based model of mESC self-renewal. Because the model accounts for intracellular interactions, cell divisions and heredity structures, it allows for evaluating the consistency of the proposed mechanisms with data on population growth and on TF dynamics after cell sorting. Our model-based analysis revealed that a bistable, noise-driven network model fulfils the minimal requirements to consistently explain Nanog and Rex1 expression dynamics in heterogeneous and sorted mESC populations. Moreover, we studied the impact of TF-related proliferation capacities on the frequency of state transitions and demonstrate that cellular genealogies can provide insights into the heredity structures of mESCs.
多能性小鼠胚胎干细胞(mESCs)显示出参与多能性调控的转录因子(TFs)表达水平的异质性,其中包括Nanog和Rex1。这两种转录因子的表达在高活性和低活性状态之间可动态变化,与细胞的自我更新能力相关。基因表达中的随机波动以及持续振荡是解释这种行为的可能机制,但缺乏合适的数据阻碍了对它们的明确区分。在此,我们提出一种系统生物学方法,其中关于TF异质性的新实验数据由基于代理的mESC自我更新模型进行补充。由于该模型考虑了细胞内相互作用、细胞分裂和遗传结构,它能够评估所提出的机制与细胞分选后群体生长和TF动态数据的一致性。我们基于模型的分析表明,双稳态、噪声驱动的网络模型满足一致解释异质性和分选后的mESC群体中Nanog和Rex1表达动态的最低要求。此外,我们研究了与TF相关的增殖能力对状态转换频率的影响,并证明细胞谱系可以提供对mESCs遗传结构的见解。