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A kinetic model of the evolution of a protein interaction network

机译:蛋白质相互作用网络演化的动力学模型

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Background Known protein interaction networks have very particular properties. Old proteins tend to have more interactions than new ones. One of the best statistical representatives of this property is the node degree distribution (distribution of proteins having a given number of interactions). It has previously been shown that this distribution is very close to the sum of two distinct exponential components. In this paper, we asked: What are the possible mechanisms of evolution for such types of networks? To answer this question, we tested a kinetic model for simplified evolution of a protein interactome. Our proposed model considers the emergence of new genes and interactions and the loss of old ones. We assumed that there are generally two coexisting classes of proteins. Proteins constituting the first class are essential only for ecological adaptations and are easily lost when ecological conditions change. Proteins of the second class are essential for basic life processes and, hence, are always effectively protected against deletion. All proteins can transit between the above classes in both directions. We also assumed that the phenomenon of gene duplication is always related to ecological adaptation and that a new copy of a duplicated gene is not essential. According to this model, all proteins gain new interactions with a rate that preferentially increases with the number of interactions (the rich get richer). Proteins can also gain interactions because of duplication. Proteins lose their interactions both with and without the loss of partner genes. Results The proposed model reproduces the main properties of protein-protein interaction networks very well. The connectivity of the oldest part of the interaction network is densest, and the node degree distribution follows the sum of two shifted power-law functions, which is a theoretical generalization of the previous finding. The above distribution covers the wide range of values of node degrees very well, much better than a power law or generalized power law supplemented with an exponential cut-off. The presented model also relates the total number of interactome links to the total number of interacting proteins. The theoretical results were for the interactomes of A. thaliana, B. taurus, C. elegans, D. melanogaster, E. coli, H. pylori, H. sapiens, M. musculus, R. norvegicus and S. cerevisiae. Conclusions Using these approaches, the kinetic parameters could be estimated. Finally, the model revealed the evolutionary kinetics of proteome formation, the phenomenon of protein differentiation and the process of gaining new interactions.
机译:背景技术已知的蛋白质相互作用网络具有非常特殊的性质。旧蛋白质往往比新蛋白质具有更多的相互作用。此属性的最佳统计代表之一是节点度分布(具有给定数目的相互作用的蛋白质的分布)。先前已经表明,这种分布非常接近两个不同的指数成分之和。在本文中,我们问:这种类型的网络可能发展出什么机制?为了回答这个问题,我们测试了动力学模型以简化蛋白质相互作用组的进化。我们提出的模型考虑了新基因的出现和相互作用以及旧基因的丧失。我们假设通常有两种蛋白质共存。构成第一类的蛋白质仅对生态适应至关重要,在生态条件变化时很容易丢失。第二类蛋白质对于基本生活过程至关重要,因此始终可以有效地保护其免受缺失。所有蛋白质均可在上述类别之间双向迁移。我们还假设基因重复现象总是与生态适应有关,并且复制基因的新副本不是必需的。根据该模型,所有蛋白质都会获得新的相互作用,且相互作用的速率会随着相互作用次数的增加而优先增加(富人越富裕)。蛋白质也可以由于重复而获得相互作用。蛋白质在失去和失去伴侣基因的情况下都会失去相互作用。结果所提出的模型很好地再现了蛋白质-蛋白质相互作用网络的主要特性。交互网络最老部分的连通性最密集,节点度分布遵循两个移位的幂律函数之和,这是先前发现的理论概括。上面的分布很好地覆盖了节点度值的广泛范围,比幂律或补充了指数截止的广义幂律好得多。提出的模型也将相互作用组链接的总数与相互作用蛋白的总数联系起来。理论结果是针对拟南芥,金牛座,秀丽隐杆线虫,黑腹果蝇,大肠杆菌,幽门螺杆菌,智人,小家鼠,诺维氏酵母和酿酒酵母的相互作用组。结论使用这些方法,可以估计动力学参数。最后,该模型揭示了蛋白质组形成的进化动力学,蛋白质分化现象以及获得新相互作用的过程。

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