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

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          Abstract

          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.

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          Author and article information

          Journal
          13 July 2005
          Article
          q-bio/0507020
          9239aa21-fe79-4712-8f1e-ae274f0edc38
          History
          Custom metadata
          Bioinformatics 2003, 19(15):1889-1900
          25 pages, 9 figures, 4 Tables
          q-bio.GN q-bio.PE

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