Department of Biomedical Engineering, School of Medicine, Tehran University of Medical Sciences, Tehran, Iran.
Research Center for Biomedical Technologies and Robotics, Tehran, Iran.
Curr Genet. 2021 Oct;67(5):785-797. doi: 10.1007/s00294-020-01146-z. Epub 2021 Apr 15.
The cell cycle is a complex network involved in the regulation of cell growth and proliferation. Intrinsic molecular noise in gene expression in the cell cycle network can generate fluctuations in protein concentration. How the cell cycle network maintains its robust transitions between cell cycle phases in the presence of these fluctuations remains unclear. To understand the complex and robust behavior of the cell cycle system in the presence of intrinsic noise, we developed a Markov model for the fission yeast cell cycle system. We quantified the effect of noise on gene and protein activity and on the probability of transition between different phases of the cell cycle. Our analysis shows how network perturbations decide the fate of the cell. Our model predicts that the cell cycle pathway (subsequent transitions from [Formula: see text]) is the most robust and probable pathway among all possible trajectories in the cell cycle network. We performed a sensitivity analysis to find correlations between protein interaction weights and transition probabilities between cell cycle phases. The sensitivity analysis predicts how network perturbations affect the transition probability between different cell cycle phases and, consequently, affect different cell fates, thus, forming testable in vitro/in vivo hypotheses. Our simulation results agree with published experimental findings and reveal how noise in the cell cycle regulatory network can affect cell cycle progression.
细胞周期是一个涉及细胞生长和增殖调控的复杂网络。细胞周期网络中基因表达的内在分子噪声会导致蛋白质浓度的波动。在存在这些波动的情况下,细胞周期网络如何维持其在细胞周期各相中稳健的转变仍然不清楚。为了理解存在内在噪声时细胞周期系统的复杂和稳健行为,我们为裂殖酵母细胞周期系统开发了一个马尔可夫模型。我们量化了噪声对基因和蛋白质活性以及细胞周期不同相之间转变概率的影响。我们的分析表明,网络扰动如何决定细胞的命运。我们的模型预测,细胞周期途径(随后从[公式:见文本])是细胞周期网络中所有可能轨迹中最稳健和最可能的途径。我们进行了敏感性分析,以找到蛋白质相互作用权重与细胞周期各相之间转变概率之间的相关性。敏感性分析预测了网络扰动如何影响不同细胞周期相之间的转变概率,从而影响不同的细胞命运,从而形成可在体外/体内进行检验的假说。我们的模拟结果与已发表的实验结果一致,并揭示了细胞周期调控网络中的噪声如何影响细胞周期进程。