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Improved Core Genes Prediction for Constructing Well-Supported Phylogenetic Trees in Large Sets of Plant Species

机译:改进的核心基因预测在大型植物物种中构建良好的支持系统发育树木

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The way to infer well-supported phylogenetic trees that precisely reflect the evolutionary process is a challenging task that completely depends on the way the related core genes have been found. In previous computational biology studies, many similarity based algorithms, mainly dependent on calculating sequence alignment matrices, have been proposed to find them. In these kinds of approaches, a significantly high similarity score between two coding sequences extracted from a given annotation tool means that one has the same genes. In a previous work article, we presented a quality test approach (QTA) that improves the core genes quality by combining two annotation tools (namely NCBI, a partially human-curated database, and DOGMA, an efficient annotation algorithm for chloroplasts). This method takes the advantages from both sequence similarity and gene features to guarantee that the core genome contains correct and well-clustered coding sequences (i.e., genes). We then show in this article how useful are such well-defined core genes for biomolecular phylogenetic reconstructions, by investigating various subsets of core genes at various family or genus levels, leading to subtrees with strong bootstraps that are finally merged in a well-supported supertree.
机译:推断出良好地反映进化过程的良好支持的系统发育树的方法是一个具有挑战性的任务,完全取决于发现相关核心基因的发现方式。在先前的计算生物学研究中,已经提出了许多基于相似性的算法,主要取决于计算序列对准矩阵,以找到它们。在这些方法中,从给定的注释工具提取的两种编码序列之间的显着高度相似度得分意味着一种具有相同的基因。在以前的工作文章中,我们介绍了一种质量测试方法(QTA)通过组合两个注释工具(即NCBI,部分人类策划数据库和教条,叶绿体的有效注释算法)来提高核心基因质量。该方法具有序列相似性和基因特征的优点,以确保核心基因组含有正确且聚类良好的编码序列(即,基因)。然后,我们在本文中展示了用于生物分子发育重建的这种明确定义的核心基因,通过研究各种家庭或属的各种核心基因的各种亚群,导致具有强大自发的子树,最终在一个支持良好的超级卓越中合并。

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