Department of Biological Sciences, Virginia Polytechnic Institute and State University, 926 West Campus Drive, Blacksburg, VA 24061 USA.
Department of Biological Sciences, University of Idaho, 875 Perimeter Drive, Moscow, ID 83844 USA.
Syst Biol. 2018 Nov 1;67(6):1091-1109. doi: 10.1093/sysbio/syy031.
As a result of the process of descent with modification, closely related species tend to be similar to one another in a myriad different ways. In statistical terms, this means that traits measured on one species will not be independent of traits measured on others. Since their introduction in the 1980s, phylogenetic comparative methods (PCMs) have been framed as a solution to this problem. In this article, we argue that this way of thinking about PCMs is deeply misleading. Not only has this sowed widespread confusion in the literature about what PCMs are doing but has led us to develop methods that are susceptible to the very thing we sought to build defenses against-unreplicated evolutionary events. Through three Case Studies, we demonstrate that the susceptibility to singular events is indeed a recurring problem in comparative biology that links several seemingly unrelated controversies. In each Case Study, we propose a potential solution to the problem. While the details of our proposed solutions differ, they share a common theme: unifying hypothesis testing with data-driven approaches (which we term "phylogenetic natural history") to disentangle the impact of singular evolutionary events from that of the factors we are investigating. More broadly, we argue that our field has, at times, been sloppy when weighing evidence in support of causal hypotheses. We suggest that one way to refine our inferences is to re-imagine phylogenies as probabilistic graphical models; adopting this way of thinking will help clarify precisely what we are testing and what evidence supports our claims.
由于进化过程中的趋同演化,密切相关的物种往往在无数方面彼此相似。从统计学角度来看,这意味着在一个物种上测量的特征与在其他物种上测量的特征并非相互独立。自从 20 世纪 80 年代引入以来,系统发育比较方法(PCMs)一直被认为是解决这个问题的方法。在本文中,我们认为这种思考 PCMs 的方式存在严重的误导性。这不仅在关于 PCMs 正在做什么的文献中造成了广泛的混淆,而且还导致我们开发了容易受到我们试图防范的事情影响的方法——未经复制的进化事件。通过三个案例研究,我们证明了对单一事件的敏感性确实是比较生物学中的一个反复出现的问题,它将几个看似不相关的争议联系在一起。在每个案例研究中,我们都提出了一个可能的解决方案。虽然我们提出的解决方案的细节有所不同,但它们有一个共同的主题:将假设检验与基于数据的方法(我们称之为“系统发育自然史”)统一起来,以将单一进化事件的影响与我们正在研究的因素的影响区分开来。更广泛地说,我们认为我们的领域在权衡支持因果假设的证据时有时过于草率。我们建议,一种改进我们推断的方法是重新将系统发育想象为概率图形模型;采用这种思维方式将有助于澄清我们正在测试的内容以及支持我们主张的证据。