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Binary Particle Swarm Optimization Versus Hybrid Genetic Algorithm for Inferring Well Supported Phylogenetic Trees

机译:二进制粒子群优化与混合遗传算法推论支持良好的系统发育树。

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The amount of completely sequenced chloroplast genomes increases rapidly every day, leading to the possibility to build large-scale phylogenetic trees of plant species. Considering a subset of close plant species defined according to their chloroplasts, the phylogenetic tree that can be inferred by their core genes is not necessarily well supported, due to the possible occurrence of "problematic" genes (i.e., homoplasy, incomplete lineage sorting, horizontal gene transfers, etc.) which may blur the phylogenetic signal. However, a trustworthy phylogenetic tree can still be obtained provided such a number of blurring genes is reduced. The problem is thus to determine the largest subset of core genes that produces the best-supported tree. To discard problematic genes and due to the overwhelming number of possible combinations, this article focuses on how to extract the largest subset of sequences in order to obtain the most supported species tree. Due to computational complexity, a distributed Binary Particle Swarm Optimization (BPSO) is proposed in sequential and distributed fashions. Obtained results from both versions of the BPSO are compared with those computed using an hybrid approach embedding both genetic algorithms and statistical tests. The proposal has been applied to different cases of plant families, leading to encouraging results for these families.
机译:完全测序的叶绿体基因组的数量每天都在迅速增加,从而有可能建立大规模的植物物种系统树。考虑到根据其叶绿体定义的近缘植物物种的子集,由于可能出现“有问题的”基因(例如,同质,不完整的谱系分类,水平基因转移等),可能会使系统发生信号模糊。但是,只要减少模糊基因的数量,仍然可以获得可信赖的系统发育树。因此,问题在于确定产生最佳支持树的核心基因的最大子集。为了丢弃有问题的基因,并且由于大量可能的组合,本文重点介绍如何提取最大的序列子集以获得最受支持的物种树。由于计算的复杂性,提出了一种以顺序和分布式方式进行的分布式二进制粒子群优化算法(BPSO)。将两种版本的BPSO获得的结果与使用嵌入遗传算法和统计测试的混合方法计算得到的结果进行比较。该提案已应用于植物家庭的不同案例,为这些家庭带来了令人鼓舞的结果。

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