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A Multi-Stack Based Phylogenetic Tree Building Method

机译:基于多栈的系统进化树构建方法

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摘要

Here we introduce a new Multi-Stack (MS) based phylogenetic tree building method. The Multi-Stack approach organizes the candidate subtrees (I.e. those having same number of leaves) into limited priority queues, always selecting the K-best subtrees, according to their distance estimation error. Using the it-best subtrees our method iteratively applies a novel subtree joining strategy to generate candidate higher level subtrees from the existing low-level ones. This new MS method uses the Constrained Least Squares Criteria (CLSC) which guarantees the non-negativity of the edge weights. The method was evaluated on real-life datasets as well as on artificial data. Our empirical study consists of three very different biological domains, and the artificial tests were carried out by applying a proper model population generator which evolves the sequences according to the predetermined branching pattern of a randomly generated model tree. The MS method was compared with the Unweighted Pair Group Method (UP-GMA), Neighbor-Joining (NJ), Maximum Likelihood (ML) and Fitch-Margoliash (FM) methods in terms of Branch Score Distance (BSD) and Distance Estimation Error (DEE). The results show clearly that the MS method can achieve improvements in building phylogenetic trees.
机译:在这里,我们介绍一种新的基于多堆栈(MS)的系统发育树构建方法。多栈方法将候选子树(即具有相同叶数的子树)组织到有限优先级队列中,始终根据其距离估计误差选择K个最佳子树。使用it-best子树,我们的方法迭代地应用了新颖的子树连接策略,以从现有的低级子树生成候选的更高级别的子树。这种新的MS方法使用约束最小二乘准则(CLSC),该准则可确保边缘权重的非负性。该方法已在实际数据集和人工数据上进行了评估。我们的实证研究包括三个截然不同的生物学领域,并且通过应用适当的模型种群生成器进行了人工测试,该种群生成器根据随机生成的模型树的预定分支模式演化序列。在分支得分距离(BSD)和距离估计误差方面,将MS方法与非加权对组方法(UP-GMA),邻居加入(NJ),最大似然(ML)和Fitch-Margoliash(FM)方法进行了比较(DEE)。结果清楚地表明,MS方法可以在构建系统发育树方面取得改进。

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