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Inference of Ancient Whole-Genome Duplications and the Evolution of Gene Duplication and Loss Rates

机译:古代全基因组重复的推断与基因重复和损失率的演变

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Gene tree-species tree reconciliation methods have been employed for studying ancient whole-genome duplication (WGD) events across the eukaryotic tree of life. Most approaches have relied on using maximum likelihood trees and the maximum parsimony reconciliation thereof to count duplication events on specific branches of interest in a reference species tree. Such approaches do not account for uncertainty in the gene tree and reconciliation, or do so only heuristically. The effects of these simplifications on the inference of ancient WGDs are unclear. In particular, the effects of variation in gene duplication and loss rates across the species tree have not been considered. Here, we developed a full probabilistic approach for phylogenomic reconciliation-based WGD inference, accounting for both gene tree and reconciliation uncertainty using a method based on the principle of amalgamated likelihood estimation. The model and methods are implemented in a maximum likelihood and Bayesian setting and account for variation of duplication and loss rates across the species tree, using methods inspired by phylogenetic divergence time estimation. We applied our newly developed framework to ancient WGDs in land plants and investigated the effects of duplication and loss rate variation on reconciliation and gene count based assessment of these earlier proposed WGDs.
机译:基因树种类树和解方法已经用于研究跨越真核生物树的古代全基因组重复(WGD)事件。大多数方法都依赖于使用最大似然树和其最大分析协调,以在参考物种树上计算特定感兴趣分支的重复事件。这些方法不考虑基因树和和解中的不确定性,或者只有启发式。这些简化对古代WGDS推断的影响尚不清楚。特别地,尚未考虑在整个物种树上变化的变异和损失率的影响。在这里,我们开发了一种基于系统核糖和解的WGD推断的全面概率方法,使用基于合并似然估计原理的方法来占基因树和和解不确定性。模型和方法在最大可能性和贝叶斯环境中实施,并且使用由系统发育发散时间估计的启发的方法来实现各种树木的复制和损失率的变化。我们将新开发的框架应用于陆地植物中的古代WGD,并调查了重复和损失率变化对对账和基因数量的基于拟议WGD的评估。

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