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A New Method for Handling Missing Species in Diversification Analysis Applicable to Randomly or Nonrandomly Sampled Phylogenies

机译:多样化分析中适用于随机或非随机采样系统发生学的新物种处理新方法

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Chronograms from molecular dating are increasingly being used to infer rates of diversification and their change over time. A major limitation in such analyses is incomplete species sampling that moreover is usually nonrandom. While the widely used gamma statistic with the Monte Carlo constant-rates test or the birth death likelihood analysis with the Delta AICrc test statistic are appropriate for comparing the fit of different diversification models in phylogenies with random species sampling, no objective automated method has been developed for fitting diversification models to nonrandomly sampled phylogenies. Here, we introduce a novel approach, CorSiM, which involves simulating missing splits under a constant rate birth death model and allows the user to specify whether species sampling in the phylogeny being analyzed is random or nonrandom. The completed trees can be used in subsequent model-fitting analyses. This is fundamentally different from previous diversification rate estimation methods, which were based on null distributions derived from the incomplete trees. CorSiM is automated in an R package and can easily be applied to large data sets. We illustrate the approach in two Araceae clades, one with a random species sampling of 52% and one with a nonrandom sampling of 55%. In the latter clade, the CorSiM approach detects and quantifies an increase in diversification rate, whereas classic approaches prefer a constant rate model; in the former clade, results do not differ among methods (as indeed expected since the classic approaches are valid only for randomly sampled phylogenies). The CorSiM method greatly reduces the type 1 error in diversification analysis, but type II error remains a methodological problem.
机译:来自分子测年的计时码表越来越多地用于推断多样化的速度及其随时间的变化。这种分析的主要局限性是物种采样不完整,而且通常不是随机的。尽管广泛使用的伽玛统计量和蒙特卡洛常数速率检验或出生死亡可能性分析与德尔塔AICrc检验量统计适用于比较随机物种进行系统发育中不同多样性模型的拟合度,但尚未开发出客观的自动化方法用于将多样化模型拟合到非随机采样的系统发育树。在这里,我们介绍一种新颖的方法CorSiM,它涉及在恒定速率出生死亡模型下模拟缺失的分裂,并允许用户指定所分析系统发育中的物种采样是随机的还是非随机的。完成的树可用于后续的模型拟合分析。这从根本上不同于以前的多样化率估计方法,后者基于不完整树的零分布。 CorSiM在R程序包中是自动化的,可以轻松应用于大型数据集。我们在两个天南星科进化枝中举例说明了这一方法,其中一个物种的随机物种采样率为52%,另一个物种的非随机采样率为55%。在后一种情况下,CorSiM方法可以检测并量化多样化率的提高,而经典方法则更喜欢采用恒定速率模型。在前一个进化枝中,方法之间的结果没有差异(确实如此,因为经典方法仅对随机采样的系统发育有效)。 CorSiM方法极大地减少了多元化分析中的1型误差,但II型误差仍然是方法学上的问题。

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