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The Underlying Molecular and Network Level Mechanisms in the Evolution of Robustness in Gene Regulatory Networks

机译:基因调控网络中鲁棒性进化的潜在分子和网络水平机制

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Gene regulatory networks show robustness to perturbations. Previous works identified robustness as an emergent property of gene network evolution but the underlying molecular mechanisms are poorly understood. We used a multi-tier modeling approach that integrates molecular sequence and structure information with network architecture and population dynamics. Structural models of transcription factor-DNA complexes are used to estimate relative binding specificities. In this model, mutations in the DNA cause changes on two levels: (a) at the sequence level in individual binding sites (modulating binding specificity), and (b) at the network level (creating and destroying binding sites). We used this model to dissect the underlying mechanisms responsible for the evolution of robustness in gene regulatory networks. Results suggest that in sparse architectures (represented by short promoters), a mixture of local-sequence and network-architecture level changes are exploited. At the local-sequence level, robustness evolves by decreasing the probabilities of both the destruction of existent and generation of new binding sites. Meanwhile, in highly interconnected architectures (represented by long promoters), robustness evolves almost entirely via network level changes, deleting and creating binding sites that modify the network architecture.
机译:基因调控网络显示出对干扰的鲁棒性。先前的工作将稳健性确定为基因网络进化的新兴属性,但对潜在的分子机制了解甚少。我们使用了多层建模方法,该方法将分子序列和结构信息与网络体系结构和种群动态相结合。转录因子-DNA复合物的结构模型用于估计相对结合特异性。在该模型中,DNA中的突变导致两个水平的变化:(a)在单个结合位点的序列水平(调节结合特异性),和(b)在网络位点的(创建和破坏结合位点)。我们使用此模型来剖析负责基因调控网络健壮性进化的潜在机制。结果表明,在稀疏架构(由短启动子表示)中,利用了本地序列和网络架构级别更改的混合。在局部序列水平上,鲁棒性通过降低销毁现有结合位点和产生新结合位点的概率来发展。同时,在高度互连的体系结构(由长启动子表示)中,健壮性几乎完全通过网络级更改,删除和创建修改网络体系结构的绑定站点来发展。

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