Halley Julianne D, Burden Frank R, Winkler David A
CSIRO Molecular and Health Technologies, Private Bag 10, Clayton South MDC 3169, Australia.
Stem Cell Res. 2009 May;2(3):165-77. doi: 10.1016/j.scr.2009.03.001. Epub 2009 Mar 17.
A sound theoretical or conceptual model of gene regulatory processes that control stem cell fate is still lacking, compromising our ability to manipulate stem cells for therapeutic benefit. The complexity of the regulatory and signaling pathways limits development of useful, predictive models that employ solely reductionist methods using molecular components. However, there is clear evidence from other complex systems that coarse-grained or mesoscale models can yield useful insights and provide workable models for the prediction of some emergent properties such as cell phenotype. We present such a coarse-grained model of stem cell decision making, utilizing the concept of self-organized criticality, which is an order that propagates in some nonequilibrium systems. The model proposes that stochastic gene expression within a stem cell gene regulatory network self-organizes to a critical-like state, characterized by cascades of gene expression that prime various transcriptional programs associated with different cell fates. This diversity of cell fate options is reduced during the decision-making process, which involves a supercritical connectivity in the gene regulatory network as a stem cell leaves its niche microenvironment and an overall increase in transcription occurs. As modules of genes that correspond to specific cell fates approach their critical points, competitive interactions occur between them that are influenced by prevailing microenvironmental conditions. The conceptual model incorporates both intrinsic and extrinsic factors governing stem cell fate and provides a logical pathway to the development of a computational model. We further suggest that rapid self-organized criticality, rather than self-organized criticality, best describes the mesoscale organization of gene regulatory networks.
目前仍缺乏一个完善的、能够控制干细胞命运的基因调控过程的理论或概念模型,这削弱了我们为治疗目的而操纵干细胞的能力。调控和信号通路的复杂性限制了仅使用分子成分的还原论方法来开发有用的预测模型。然而,来自其他复杂系统的明确证据表明,粗粒度或中尺度模型可以产生有用的见解,并为预测一些涌现特性(如细胞表型)提供可行的模型。我们提出了这样一个干细胞决策的粗粒度模型,利用自组织临界性的概念,这是一种在某些非平衡系统中传播的秩序。该模型提出,干细胞基因调控网络内的随机基因表达会自组织成一种类似临界的状态,其特征是基因表达级联引发与不同细胞命运相关的各种转录程序。在决策过程中,这种细胞命运选择的多样性会减少,这涉及到干细胞离开其生态位微环境时基因调控网络中的超临界连通性以及转录的整体增加。当与特定细胞命运相对应的基因模块接近其临界点时,它们之间会发生受主要微环境条件影响的竞争相互作用。这个概念模型纳入了控制干细胞命运的内在和外在因素,并为计算模型的开发提供了一条逻辑途径。我们进一步认为,快速自组织临界性,而非自组织临界性,最能描述基因调控网络的中尺度组织。