Department of Cancer Biology and Center for Cancer Systems Biology, Dana-Farber Cancer Institute, Boston, Massachusetts, United States of America.
PLoS Comput Biol. 2012;8(4):e1002482. doi: 10.1371/journal.pcbi.1002482. Epub 2012 Apr 26.
Stochastic fluctuations in gene expression give rise to cell-to-cell variability in protein levels which can potentially cause variability in cellular phenotype. For TRAIL (TNF-related apoptosis-inducing ligand) variability manifests itself as dramatic differences in the time between ligand exposure and the sudden activation of the effector caspases that kill cells. However, the contribution of individual proteins to phenotypic variability has not been explored in detail. In this paper we use feature-based sensitivity analysis as a means to estimate the impact of variation in key apoptosis regulators on variability in the dynamics of cell death. We use Monte Carlo sampling from measured protein concentration distributions in combination with a previously validated ordinary differential equation model of apoptosis to simulate the dynamics of receptor-mediated apoptosis. We find that variation in the concentrations of some proteins matters much more than variation in others and that precisely which proteins matter depends both on the concentrations of other proteins and on whether correlations in protein levels are taken into account. A prediction from simulation that we confirm experimentally is that variability in fate is sensitive to even small increases in the levels of Bcl-2. We also show that sensitivity to Bcl-2 levels is itself sensitive to the levels of interacting proteins. The contextual dependency is implicit in the mathematical formulation of sensitivity, but our data show that it is also important for biologically relevant parameter values. Our work provides a conceptual and practical means to study and understand the impact of cell-to-cell variability in protein expression levels on cell fate using deterministic models and sampling from parameter distributions.
基因表达的随机波动导致蛋白质水平在细胞间产生可变性,这可能导致细胞表型的可变性。对于 TRAIL(TNF 相关凋亡诱导配体),可变性表现为配体暴露与杀死细胞的效应半胱天冬酶突然激活之间的时间存在显著差异。然而,个体蛋白质对表型可变性的贡献尚未详细探讨。在本文中,我们使用基于特征的敏感性分析来估计关键凋亡调节剂的变异对细胞死亡动力学变异性的影响。我们使用来自测量的蛋白质浓度分布的蒙特卡罗采样结合先前验证的凋亡的常微分方程模型来模拟受体介导的凋亡动力学。我们发现,一些蛋白质浓度的变化比其他蛋白质的变化重要得多,而哪些蛋白质重要取决于其他蛋白质的浓度以及是否考虑蛋白质水平的相关性。我们从模拟中得出并通过实验证实的一个预测是,命运的可变性对 Bcl-2 水平的微小增加很敏感。我们还表明,对 Bcl-2 水平的敏感性本身对相互作用蛋白质的水平也很敏感。上下文相关性隐含在敏感性的数学公式中,但我们的数据表明,对于生物学相关的参数值,它也很重要。我们的工作为使用确定性模型和从参数分布中采样来研究和理解蛋白质表达水平的细胞间可变性对细胞命运的影响提供了一种概念和实践方法。