a bayesian approach to the evolution of metabolic networks on a phylogeny贝叶斯方法的进化代谢网络的发展史.pdf
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A Bayesian Approach to the Evolution of Metabolic
Networks on a Phylogeny
1 2 1
Aziz Mithani *, Gail M. Preston , Jotun Hein
1 Department of Statistics, University of Oxford, Oxford, United Kingdom, 2 Department of Plant Sciences, University of Oxford, Oxford, United Kingdom
Abstract
The availability of genomes of many closely related bacteria with diverse metabolic capabilities offers the possibility of
tracing metabolic evolution on a phylogeny relating the genomes to understand the evolutionary processes and constraints
that affect the evolution of metabolic networks. Using simple (independent loss/gain of reactions) or complex
(incorporating dependencies among reactions) stochastic models of metabolic evolution, it is possible to study how
metabolic networks evolve over time. Here, we describe a model that takes the reaction neighborhood into account when
modeling metabolic evolution. The model also allows estimation of the strength of the neighborhood effect during the
course of evolution. We present Gibbs samplers for sampling networks at the internal node of a phylogeny and for
estimating the parameters of evolution over a phylogeny without exploring the whole search space by iteratively sampling
from the conditional distributions of the internal networks and parameters. The samplers are used to estimate the
parameters of evolution of metabolic networks of bacteria in the genus Pseudomonas and to infer the metabolic networks
of the ancestral pseudomonads. The results suggest that pathway maps that are conserved across the Pseudomonas
phylogeny have a stronger neighborhood structure than those which have a variable distribution of reactions across the
phylogeny, and th
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