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Reconstructing Ancestral Genomic Orders Using Binary Encoding and Probabilistic Models

机译:使用二进制编码和概率模型重建祖先基因组顺序

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Changes of gene ordering under rearrangements have been extensively used as a signal to reconstruct phylogenies and ancestral genomes. Inferring the gene order of an extinct species has the potential in revealing a more detailed evolutionary history of species descended from it. Current tools used in ancestral reconstruction may fall into parsimonious and probabilistic methods according to the criteria they follow. In this study, we propose a new probabilistic method called PMAG to infer the ancestral genomic orders by calculating the conditional probabilities of gene adjacencies using Bayes' theorem. The method incorporates a transition model designed particularly for genomic rearrangement scenarios, a reroot procedure to relocate the root to the target ancestor that is inferred as well as a greedy algorithm to connect adjacencies with high conditional probabilities into valid gene orders. We conducted a series of simulation experiments to assess the performance of PMAG and compared it against previously existing probabilistic methods (InferCARsPro) and parsimonious methods (GRAPPA). As we learned from the results, PMAG can reconstruct more correct ancestral adjacencies and yet run several orders of magnitude faster than Inf erCARsPro and GRAPPA.
机译:在重排下基因顺序的变化已被广泛用作重建系统发育和祖先基因组的信号。推断灭绝物种的基因顺序有可能揭示更详细的进化史。根据祖先重建所遵循的标准,当前用于祖先重建的工具可能会归为简化和概率方法。在这项研究中,我们提出了一种称为PMAG的新概率方法,该方法通过使用贝叶斯定理计算基因邻接的条件概率来推断祖先的基因组顺序。该方法包括专门为基因组重排方案设计的过渡模型,将根重新定位到推断的目标祖先的重新生根过程,以及将具有高条件概率的邻接关系连接到有效基因顺序中的贪婪算法。我们进行了一系列模拟实验,以评估PMAG的性能,并将其与以前的概率方法(InferCARsPro)和简约方法(GRAPPA)进行比较。从结果中我们可以了解到,PMAG可以重建更正确的祖先邻接关系,但运行速度要比Inf erCARsPro和GRAPPA快几个数量级。

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