Department of Ecology and Evolutionary Biology, University of Michigan, Ann Arbor, MI 48109, USA
Department of Ecology and Evolutionary Biology, University of Michigan, Ann Arbor, MI 48109, USA.
Proc Biol Sci. 2017 Oct 11;284(1864). doi: 10.1098/rspb.2017.0986.
Puttick (2017 , 20162290 (doi:10.1098/rspb.2016.2290)) performed a simulation study to compare accuracy among methods of inferring phylogeny from discrete morphological characters. They report that a Bayesian implementation of the Mk model (Lewis 2001 , 913-925 (doi:10.1080/106351501753462876)) was most accurate (but with low resolution), while a maximum-likelihood (ML) implementation of the same model was least accurate. They conclude by strongly advocating that Bayesian implementations of the Mk model should be the default method of analysis for such data. While we appreciate the authors' attempt to investigate the accuracy of alternative methods of analysis, their conclusion is based on an inappropriate comparison of the ML point estimate, which does not consider confidence, with the Bayesian consensus, which incorporates estimation credibility into the summary tree. Using simulation, we demonstrate that ML and Bayesian estimates are concordant when confidence and credibility are comparably reflected in summary trees, a result expected from statistical theory. We therefore disagree with the conclusions of Puttick and consider their prescription of any default method to be poorly founded. Instead, we recommend caution and thoughtful consideration of the model or method being applied to a morphological dataset.
Puttick(2017,20162290(doi:10.1098/rspb.2016.2290))进行了一项模拟研究,以比较从离散形态特征推断系统发育的方法的准确性。他们报告说,Mk 模型的贝叶斯实现(Lewis 2001,913-925(doi:10.1080/106351501753462876))是最准确的(但分辨率较低),而相同模型的最大似然(ML)实现是最不准确的。他们得出的结论是强烈主张,对于这种数据,Mk 模型的贝叶斯实现应该是默认的分析方法。虽然我们赞赏作者试图调查替代分析方法的准确性,但他们的结论是基于对不考虑置信度的 ML 点估计与贝叶斯共识的不适当比较,后者将估计可信度纳入到摘要树中。通过模拟,我们证明了当置信度和可信度在摘要树中得到可比反映时,ML 和贝叶斯估计是一致的,这是统计理论所预期的结果。因此,我们不同意 Puttick 的结论,并认为他们对默认方法的规定没有很好的依据。相反,我们建议对应用于形态数据集的模型或方法保持谨慎和深思熟虑。