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A Machine Learning Approach to Resolving Incongruence in Molecular Phylogenies and Visualization Analysis

机译:解决分子系统发育不一致性和可视化分析的机器学习方法

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The incongruence between gene trees and species trees is one of the most pervasive challenges in molecular phylogenetics. In this work, a machine learning approach is proposed to overcome this problem. In the machine learning approach, the gene data set is clustered by a self-organizing map (SOM). Then a phylogenetically informative core gene set is created by combining the maximum entropy gene from each cluster to conduct phylogenetic analysis. Using the same data set, this approach performs better than the previous random gene concatenation method. The SOM based information visualization is also employed to compare the species patterns in the phylogenetic tree constructions.
机译:基因树木和物种树之间的不统称是分子系统源的最普遍挑战之一。在这项工作中,提出了一种机器学习方法来克服这个问题。在机器学习方法中,基因数据集由自组织地图聚集(SOM)。然后通过将来自每种聚类的最大熵基因组合来进行系统发育分析来创建系统源性信息核心基因组。使用相同的数据集,该方法比以前的随机基因串联方法更好地执行。还采用基于SOM的信息可视化来比较系统发育树结构中的物种模式。

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