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Dynamics of cellular level function and regulation derived from murine expression array data.

机译:从鼠表达阵列数据得出的细胞水平功能和调控的动力学。

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A major open question of systems biology is how genetic and molecular components interact to create phenotypes at the cellular level. Although much recent effort has been dedicated to inferring effective regulatory influences within small networks of genes, the power of microarray bioinformatics has yet to be used to determine functional influences at the cellular level. In all cases of data-driven parameter estimation, the number of model parameters estimable from a set of data is strictly limited by the size of that set. Rather than infer parameters describing the detailed interactions of just a few genes, we chose a larger-scale investigation so that the cumulative effects of all gene interactions could be analyzed to identify the dynamics of cellular-level function. By aggregating genes into large groups with related behaviors (megamodules), we were able to determine the effective aggregate regulatory influences among 12 major gene groups in murine B lymphocytes over a variety of time steps. Intriguing observations about the behavior of cells at this high level of abstraction include: (i) a medium-term critical global transcriptional dependence on ATP-generating genes in the mitochondria, (ii) a longer-term dependence on glycolytic genes, (iii) the dual role of chromatin-reorganizing genes in transcriptional activation and repression, (iv) homeostasis-favoring influences, (v) the indication that, as a group, G protein-mediated signals are not concentration-dependent in their influence on target gene expression, and (vi) short-term-activating/long-term-repressing behavior of the cell-cycle system that reflects its oscillatory behavior.
机译:系统生物学的一个主要开放问题是遗传和分子成分如何相互作用以在细胞水平上产生表型。尽管最近有很多努力致力于推断小型基因网络中的有效调控影响,但微阵列生物信息学的功能尚未用于确定细胞水平的功能影响。在所有数据驱动参数估计的情况下,可从一组数据估计的模型参数的数量严格受该组数据大小的限制。我们没有选择推断仅描述几个基因的详细相互作用的参数,而是选择了大规模调查,以便可以分析所有基因相互作用的累积效应,从而确定细胞水平功能的动力学。通过将基因聚合为具有相关行为的大类(巨型模块),我们能够确定在不同时间段内鼠B淋巴细胞中12个主要基因组之间的有效聚集调节作用。关于细胞在如此高的抽象水平下的行为的有趣观察结果包括:(i)对线粒体中ATP生成基因的中期关键性全局转录依赖性,(ii)对糖酵解基因的长期依赖性,(iii)染色质重组基因在转录激活和抑制中的双重作用;(iv)有利于体内平衡的影响;(v)表明,作为一个整体,G蛋白介导的信号对靶基因表达的影响与浓度无关(vi)反映其振荡行为的细胞周期系统的短期激活/长期抑制行为。

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