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Tree and rate estimation by local evaluation of heterochronous nucleotide data

机译:通过本地评估异源核苷酸数据估算树和速率

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Motivation: Heterochronous gene sequence data is important for characterizing the evolutionary processes of fast-evolving organisms such as RNA viruses. A limited set of algorithms exists for estimating the rate of nucleotide substitution and inferring phylogenetic trees from such data. The authors here present a new method, Tree and Rate Estimation by Local Evaluation (TREBLE) that robustly calculates the rate of nucleotide substitution and phylogeny with several orders of magnitude improvement in computational time.Methods: For the basis of its rate estimation TREBLE novelly utilizes a geometric interpretation of the molecular clock assumption to deduce a local estimate of the rate of nucleotide substitution for triplets of dated sequences. Averaging the triplet estimates via a variance weighting yields a global estimate of the rate. From this value, an iterative refinement procedure relying on statistical properties of the triplets then generates a final estimate of the global rate of nucleotide substitution. The estimated global rate is then utilized to find the tree from the pairwise distance matrix via an UPGMA-like algorithm.Results: Simulation studies show that TREBLE estimates the rate of nucleotide substitution with point estimates comparable with the best of available methods. Confidence intervals are comparable with that of BEAST. TREBLE'S phylogenetic reconstruction is significantly improved over the other distance matrix method but not as accurate as the Bayesian algorithm. Compared with three other algorithms, TREBLE reduces computational time by a minimum factor of 3000. Relative to the algorithm with the most accurate estimates for the rate of nucleotide substitution (i.e. BEAST), TREBLE is over 10000 times more computationally efficient.
机译:动机:异源基因序列数据对于表征快速发展的生物(如RNA病毒)的进化过程非常重要。存在用于估计核苷酸取代率并从此类数据推断系统发育树的有限算法集。本文作者提出了一种新的方法,即通过本地评估的树和速率估计(TREBLE),该算法可在计算时间上以几个数量级的改进来稳健地计算核苷酸取代和系统发育的速率。方法:在速率估计的基础上,TREBLE新颖地利用了分子时钟假设的几何解释,以推断出带日期序列的三胞胎的核苷酸取代率的局部估计。通过方差加权对三元组估计值求平均值,可以得出速率的整体估计值。根据该值,依赖于三元组的统计特性的迭代细化过程随后会生成核苷酸整体置换率的最终估计值。然后,通过类似UPGMA的算法,利用估计的全局速率从成对距离矩阵中查找树。结果:仿真研究表明,TREBLE用点估计值估计核苷酸替代率,可与最佳方法相媲美。置信区间与BEAST相当。与其他距离矩阵方法相比,TREBLE的系统发育重构得到了显着改善,但不如贝叶斯算法那样精确。与其他三种算法相比,TREBLE减少了3000倍的计算时间。相对于最精确估算核苷酸取代率(即BEAST)的算法,TREBLE的计算效率高出10000倍。

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