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SIMMAP: Stochastic character mapping of discrete traits on phylogenies

机译:SIMMAP:文学性状的离散性状的随机性质映射

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Background Character mapping on phylogenies has played an important, if not critical role, in our understanding of molecular, morphological, and behavioral evolution. Until very recently we have relied on parsimony to infer character changes. Parsimony has a number of serious limitations that are drawbacks to our understanding. Recent statistical methods have been developed that free us from these limitations enabling us to overcome the problems of parsimony by accommodating uncertainty in evolutionary time, ancestral states, and the phylogeny. Results SIMMAP has been developed to implement stochastic character mapping that is useful to both molecular evolutionists, systematists, and bioinformaticians. Researchers can address questions about positive selection, patterns of amino acid substitution, character association, and patterns of morphological evolution. Conclusion Stochastic character mapping, as implemented in the SIMMAP software, enables users to address questions that require mapping characters onto phylogenies using a probabilistic approach that does not rely on parsimony. Analyses can be performed using a fully Bayesian approach that is not reliant on considering a single topology, set of substitution model parameters, or reconstruction of ancestral states. Uncertainty in these quantities is accommodated by using MCMC samples from their respective posterior distributions.
机译:背景技术在我们对分子,形态和行为演化的理解中,文学发育的角色映射起到了重要的话,如果不是关键的作用。直到最近,我们依赖于分析来推断品格变化。 Parsimony有许多严重的限制,这是我们的理解的缺点。已经开发了最近的统计方法,从而从这些限制中获得释放我们使我们通过在进化时间,祖先状态和系统发育中的不确定性来克服定义问题。结果已经开发了SIMMAP,以实现对分子演变,系统家和生物信息管理员有用的随机性格映射。研究人员可以解决有关阳性选择,氨基酸替代,性格协会和形态学模式模式的问题。结论在SIMMAP软件中实施的随机性格映射使用户能够使用不依赖于图依赖的概率方法来解决需要将字符映射到文学中的问题。可以使用完全贝叶斯的方法进行分析,这些方法不依赖于考虑单个拓扑,一组替代模型参数或祖先州的重建。通过使用各自的后部分布,通过使用MCMC样品来容纳这些数量的不确定性。

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