Section for Science of Complex Systems/CeMSIIS, Medical University of Vienna, Vienna, Austria.
PLoS One. 2012;7(5):e36679. doi: 10.1371/journal.pone.0036679. Epub 2012 May 31.
Systemic properties of living cells are the result of molecular dynamics governed by so-called genetic regulatory networks (GRN). These networks capture all possible features of cells and are responsible for the immense levels of adaptation characteristic to living systems. At any point in time only small subsets of these networks are active. Any active subset of the GRN leads to the expression of particular sets of molecules (expression modes). The subsets of active networks change over time, leading to the observed complex dynamics of expression patterns. Understanding of these dynamics becomes increasingly important in systems biology and medicine. While the importance of transcription rates and catalytic interactions has been widely recognized in modeling genetic regulatory systems, the understanding of the role of degradation of biochemical agents (mRNA, protein) in regulatory dynamics remains limited. Recent experimental data suggests that there exists a functional relation between mRNA and protein decay rates and expression modes. In this paper we propose a model for the dynamics of successions of sequences of active subnetworks of the GRN. The model is able to reproduce key characteristics of molecular dynamics, including homeostasis, multi-stability, periodic dynamics, alternating activity, differentiability, and self-organized critical dynamics. Moreover the model allows to naturally understand the mechanism behind the relation between decay rates and expression modes. The model explains recent experimental observations that decay-rates (or turnovers) vary between differentiated tissue-classes at a general systemic level and highlights the role of intracellular decay rate control mechanisms in cell differentiation.
活细胞的系统属性是所谓的遗传调控网络 (GRN) 所控制的分子动力学的结果。这些网络捕捉了细胞的所有可能特征,是活系统具有巨大适应水平的原因。在任何时候,这些网络中只有一小部分是活跃的。GRN 的任何活跃子集都会导致特定分子集的表达(表达模式)。活跃网络的子集随时间变化,导致观察到的表达模式的复杂动态。在系统生物学和医学中,对这些动态的理解变得越来越重要。虽然在遗传调控系统的建模中已经广泛认识到转录率和催化相互作用的重要性,但对生化物质(mRNA、蛋白质)降解在调控动态中的作用的理解仍然有限。最近的实验数据表明,mRNA 和蛋白质降解率与表达模式之间存在功能关系。在本文中,我们提出了一个 GRN 活跃子网序列动态的模型。该模型能够再现分子动力学的关键特征,包括内稳态、多稳定性、周期性动力学、交替活性、可区分性和自组织临界动力学。此外,该模型允许自然地理解降解率和表达模式之间关系的背后机制。该模型解释了最近的实验观察结果,即衰退率(或周转率)在一般系统水平上在分化组织类型之间存在差异,并强调了细胞内衰退率控制机制在细胞分化中的作用。