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Improving evolutionary models of protein interaction networks

机译:改善蛋白质相互作用网络的进化模型

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Motivation: Theoretical models of biological networks are valuable tools in evolutionary inference. Theoretical models based on gene duplication and divergence provide biologically plausible evolutionary mechanics. Similarities found between empirical networks and their theoretically generated counterpart are considered evidence of the role modeled mechanics play in biological evolution. However, the method by which these models are parameterized can lead to questions about the validity of the inferences. Selecting parameter values in order to produce a particular topological value obfuscates the possibility that the model may produce a similar topology for a large range of parameter values. Alternately, a model may produce a large range of topologies, allowing ( incorrect) parameter values to produce a valid topology from an otherwise flawed model. In order to lend biological credence to the modeled evolutionary mechanics, parameter values should be derived from the empirical data. Furthermore, recent work indicates that the timing and fate of gene duplications are critical to proper derivation of these parameters.Results: We present a methodology for deriving evolutionary rates from empirical data that is used to parameterize duplication and divergence models of protein interaction network evolution. Our method avoids shortcomings of previous methods, which failed to consider the effect of subsequent duplications. From our parameter values, we find that concurrent and existing existing duplication and divergence models are insufficient for modeling protein interaction network evolution. We introduce a model enhancement based on heritable interaction sites on the surface of a protein and find that it more closely reflects the high clustering found in the empirical network.
机译:动机:生物网络的理论模型是进化推理中的宝贵工具。基于基因复制和发散的理论模型提供了生物学上合理的进化机制。经验网络与其理论上对应的网络之间发现的相似性被认为是建模力学在生物进化中所起的作用的证据。但是,参数化这些模型的方法可能会导致有关推理有效性的问题。选择参数值以产生特定的拓扑值掩盖了该模型可能针对较大范围的参数值产生相似的拓扑的可能性。或者,模型可能会产生各种拓扑,从而允许(错误的)参数值从有缺陷的模型中产生有效的拓扑。为了在建模的进化力学中获得生物学上的信任,应该从经验数据中得出参数值。此外,最近的工作表明,基因复制的时间和命运对于正确推导这些参数至关重要。结果:我们提出了一种从经验数据中得出进化速率的方法,该方法可用于对蛋白质相互作用网络进化的复制和发散模型进行参数化。我们的方法避免了先前方法的缺点,后者无法考虑后续重复的影响。从我们的参数值,我们发现并发和现有的复制和发散模型不足以对蛋白质相互作用网络的演化进行建模。我们基于蛋白质表面上可遗传的相互作用位点引入模型增强,发现它更紧密地反映了经验网络中的高聚类。

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