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Dissecting the ancient rapid radiation of microgastrine wasp genera using additional nuclear genes

机译:使用其他核基因解剖古代微胃泌素黄蜂属的快速辐射

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Previous estimates of a generic level phylogeny for the ubiquitous parasitoid wasp subfamily Microgastrinae (Hymenoptera) have been problematic due to short internal branches deep in the phylogeny. These short branches might be attributed to a rapid radiation among the taxa, the use of genes that are unsuitable for the levels of divergence being examined, or insufficient quantity of data. We added over 1200 nucleotides from four nuclear genes to a dataset derived from three genes to produce a dataset of over 3000 nucleotides per taxon. While the number of well-supported short branches in the phylogeny increased, we still did not obtain strong bootstrap support for every node. Parametric and nonparametric bootstrap simulations projected that an enormous, and likely unobtainable, amount of data would be required to get bootstrap support greater than 50% for every node. However, a marked increase in the number of well-supported nodes was seen when we conducted a Bayesian analysis of a combined dataset generated from morphological characters added to the seven gene dataset. Our results suggest that, in some cases, combining morphological and genetic characters may be the most practical way to increase support for short branches deep in a phylogeny. (c) 2006 Elsevier Inc. All rights reserved.
机译:由于系统发育深处的内部内部较短,以前对普遍存在的拟寄生虫黄蜂微科(膜翅目)的一般系统发育的估计是有问题的。这些短的分支可能是由于分类单元之间的快速辐射,使用了不适合所研究的差异水平的基因或数据量不足。我们将来自四个核基因的1200多个核苷酸添加到源自三个基因的数据集中,以生成每个分类单元3000多个核苷酸的数据集。虽然系统发育中良好支持的短分支数量增加,但我们仍未为每个节点获得强大的自举支持。参数化和非参数化的引导程序仿真预测,要使每个节点的引导程序支持均大于50%,将需要大量且可能无法获得的数据量。但是,当我们对由添加到七个基因数据集中的形态特征生成的组合数据集进行贝叶斯分析时,可以看到良好支持的节点数量显着增加。我们的结果表明,在某些情况下,将形态特征和遗传特征结合起来可能是增加系统发育深处对短枝支持的最实用方法。 (c)2006 Elsevier Inc.保留所有权利。

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