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How Well Can We Detect Lineage-Specific Diversification-Rate Shifts? A Simulation Study of Sequential AIC Methods

机译:我们如何检测特定于谱系的多样化速率变化?顺序AIC方法的仿真研究

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Evolutionary biologists have long been fascinated by the extreme differences in species numbers across branches of the Tree of Life. This has motivated the development of statistical methods for detecting shifts in the rate of lineage diversification across the branches of phylogenic trees. One of the most frequently used methods, MEDUSA, explores a set of diversification-rate models, where each model assigns branches of the phylogeny to a set of diversification-rate categories. Each model is first fit to the data, and the Akaike information criterion (AIC) is then used to identify the optimal diversification model. Surprisingly, the statistical behavior of this popular method is uncharacterized, which is a concern in light of: (1) the poor performance of the AIC as a means of choosing among models in other phylogenetic contexts; (2) the ad hoc algorithm used to visit diversification models, and; (3) errors that we reveal in the likelihood function used to fit diversification models to the phylogenetic data. Here, we perform an extensive simulation study demonstrating that MEDUSA (1) has a high false-discovery rate (on average, spurious diversification-rate shifts are identified approximate to 30% of the time), and (2) provides biased estimates of diversification-rate parameters. Understanding the statistical behavior of MEDUSA is critical both to empirical researchers-in order to clarify whether these methods can make reliable inferences from empirical datasets-and to theoretical biologists-in order to clarify the specific problems that need to be solved in order to develop more reliable approaches for detecting shifts in the rate of lineage diversification.
机译:进化生物学家长期以来都被生命之树各分支物种数量的极端差异所吸引。这激励了统计方法的发展,该统计方法用于检测跨系谱树的分支的谱系多样化速率的变化。 MEDUSA是最常用的方法之一,它探索了一组多样化率模型,其中每个模型都将系统发育的分支分配给一组多样化率类别。每个模型都首先适合数据,然后使用Akaike信息标准(AIC)来识别最佳多元化模型。出乎意料的是,这种流行的方法的统计行为是未知的,这是由于以下原因引起的:(1)AIC的性能不佳,无法在其他系统发育环境中选择模型。 (2)用于访问多元化模型的ad hoc算法;以及(3)我们在似然函数中揭示的误差,这些误差用于将多样化模型拟合到系统发育数据中。在这里,我们进行了广泛的模拟研究,证明MEDUSA(1)具有很高的错误发现率(平均而言,大约30%的时间识别出虚假的多样化率变化),以及(2)提供了多样化的偏差估计-rate参数。了解MEDUSA的统计行为对于经验研究者至关重要-为了澄清这些方法是否可以从经验数据集做出可靠的推断-对于理论生物学家来说-以阐明为了解决更多问题而需要解决的特定问题用于检测谱系多样化速率变化的可靠方法。

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