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A Machine Learning Method for Detecting Autocorrelation of Evolutionary Rates in Large Phylogenies

机译:一种机器学习方法,用于检测大脑发育中进化率的自相关

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摘要

New species arise from pre-existing species and inherit similar genomes and environments. This predicts greater similarity of the tempo of molecular evolution between direct ancestors and descendants, resulting in autocorrelation of evolutionary rates in the tree of life. Surprisingly, molecular sequence data have not confirmed this expectation, possibly because available methods lack the power to detect autocorrelated rates. Here, we present a machine learning method, CorrTest, to detect the presence of rate autocorrelation in large phylogenies. CorrTest is computationally efficient and performs better than the available state-of-the-art method. Application of CorrTest reveals extensive rate autocorrelation in DNA and amino acid sequence evolution of mammals, birds, insects, metazoans, plants, fungi, parasitic protozoans, and prokaryotes. Therefore, rate autocorrelation is a common phenomenon throughout the tree of life. These findings suggest concordance between molecular and nonmolecular evolutionary patterns, and they will foster unbiased and precise dating of the tree of life.
机译:新物种由预先存在的物种产生并继承类似的基因组和环境。这预测了直接祖先和后代之间的分子演化的节奏的更大的相似性,从而在生命之树中进行了进化率的自相关。令人惊讶的是,分子序列数据没有证实这种期望,可能是因为可用的方法缺乏检测自相关率的力量。在这里,我们提出了一种机器学习方法,RERTEST,检测大脑发育中率自相关的存在。 Corrtest是计算上高效的,并且比可用的最先进方法更好。 Corrtest的应用揭示了哺乳动物,鸟类,昆虫,美容素,植物,真菌,寄生原生动物和原核生物的DNA和氨基酸序列演化中的广泛汇率自相关。因此,速度自相关是整个生命之树的常见现象。这些发现建议分子和非分子进化模式之间的一致性,他们将促进生命之树的无偏见和精确约会。

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