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Simple stochastic birth and death models of genome evolution: was there enough time for us to evolve

机译:基因组进化的简单随机生死模型:我们有足够的时间进化吗?

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Motivation: The distributions of many genome-associated quantities, including the membership of paralogous gene families can be approximated with power laws. We are interested in developing mathematical models of genome evolution that adequately account for the shape of these distributions and describe the evolutionary dynamics of their formation. Results: We show that simple stochastic models of genome evolution lead to power-law asymptotics of protein domain family size distribution. These models, called Birth, Death and Innovation Models (BDIM), represent a special class of balanced birth-and-death processes, in which domain duplication and deletion rates are asymptotically equal up to the second order. The simplest, linear BDIM shows an excellent fit to the observed distributions of domain family size in diverse prokaryotic and eukaryotic genomes. However, the stochastic version of the linear BDIM explored here predicts that the actual size of large paralogous families is reached on an unrealistically long timescale. We show that introduction of non-linearity, which might be interpreted as interaction of a particular order between individual family members, allows the model to achieve genome evolution rates that are much better compatible with the current estimates of the rates of individual duplication/loss events.
机译:动机:许多与基因组相关的量的分布,包括旁系基因家族的成员,可以用幂律来近似。我们对开发能够充分说明这些分布的形状并描述其形成的进化动力学的基因组进化数学模型感兴趣。结果:我们表明简单的基因组进化随机模型导致蛋白质域家族大小分布的幂律渐近性。这些称为出生,死亡和创新模型(BDIM)的模型代表一类平衡的生死过程,其中域的重复和删除率渐近等于二阶。最简单的线性BDIM显示出非常适合在各种原核和真核基因组中观察到的域家族大小分布。但是,此处探讨的线性BDIM的随机版本预测,大型旁系同源家庭的实际规模是在不切实际的长时间范围内达到的。我们表明,非线性的引入(可以解释为单个家庭成员之间特定顺序的相互作用)使模型能够实现与个体重复/丢失事件发生率的当前估计更好地兼容的基因组进化速率。 。

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