比较广义逻辑模型揭示了果蝇翅膀发育过程中细胞周期退出过程中的差异基因相互作用。

GI-Edition. Proceedings Pub Date : 2009-01-01
Mingzhou Joe Song, Chung-Chien Hong, Yang Zhang, Laura Buttitta, Bruce A Edgar
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引用次数: 0

摘要

提出了一种比较相互作用检测范式来研究细胞发育过程中控制细胞增殖的复杂基因调控网络。不同于试图从时间转录数据中重建整个细胞周期调控网络,在两种不同的条件下,直接从时间过程转录数据中检测到由广义逻辑表示的差异相互作用。这种比较方法是尺度和位移不变的,并且能够检测非线性微分相互作用。对大肠杆菌电路的模拟研究表明,所提出的比较方法大大提高了直观的重建-比较方法的统计能力。因此,将该方法应用于微阵列实验,分析果蝇翅膀中细胞退出细胞周期时的基因表达,并在延迟细胞退出的条件下,过度表达细胞周期调节因子E2F。在两个受E2F活性强烈影响的基因簇之间发现了一种统计上显著的差异相互作用,这表明Hippo信号通路参与了对E2F的响应,这一发现可能为细胞周期控制机制提供更多的见解。此外,比较模型可以应用于静态和动态基因表达数据,并且可以扩展到处理两种以上的条件,在许多生物学研究中都很有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Generalized Logic Modeling Reveals Differential Gene Interactions during Cell Cycle Exit in Drosophila Wing Development.

A comparative interaction detection paradigm is proposed to study the complex gene regulatory networks that control cell proliferation during development. Instead of attempting to reconstruct the entire cell cycle regulatory network from temporal transcript data, differential interactions - represented by generalized logic - are detected directly from time course transcript data under two distinct conditions. This comparative approach is scale- and shift-invariant and is capable of detecting nonlinear differential interactions. Simulation studies on E. coli circuits demonstrated that the proposed comparative method has substantially increased statistical power over the intuitive reconstruct-then-compare approach. This method was therefore applied to a microarray experiment, profiling gene expression in the fruit fly wing as cells exit the cell cycle, and under a condition which delays this exit, over-expression of the cell cycle regulator E2F. One statistically significant differential interaction was identified between two gene clusters that is strongly influenced by E2F activity, and suggests the involvement of the Hippo signaling pathway in response to E2F, a finding that may provide additional insights on cell cycle control mechanisms. Furthermore, the comparative modeling can be applied to both static and dynamic gene expression data, and is extendible to deal with more than two conditions, useful in many biological studies.

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