系统发育树
克莱德
生物
系统发育学
分类单元
进化生物学
网络拓扑
分类等级
树(集合论)
系统基因组学
濒危物种
生态学
计算机科学
基因
遗传学
数学
数学分析
栖息地
操作系统
作者
Brian Tilston Smith,Jon Merwin,Kaiya L. Provost,Gregory Thom,Robb T. Brumfield,Mateus Ferreira,William M. Mauck,Robert G. Moyle,Timothy F. Wright,Leo Joseph
出处
期刊:Systematic Biology
[Oxford University Press]
日期:2022-08-02
卷期号:72 (1): 228-241
被引量:19
标识
DOI:10.1093/sysbio/syac055
摘要
Gene tree discordance is expected in phylogenomic trees and biological processes are often invoked to explain it. However, heterogeneous levels of phylogenetic signal among individuals within data sets may cause artifactual sources of topological discordance. We examined how the information content in tips and subclades impacts topological discordance in the parrots (Order: Psittaciformes), a diverse and highly threatened clade of nearly 400 species. Using ultraconserved elements from 96% of the clade's species-level diversity, we estimated concatenated and species trees for 382 ingroup taxa. We found that discordance among tree topologies was most common at nodes dating between the late Miocene and Pliocene, and often at the taxonomic level of the genus. Accordingly, we used two metrics to characterize information content in tips and assess the degree to which conflict between trees was being driven by lower-quality samples. Most instances of topological conflict and nonmonophyletic genera in the species tree could be objectively identified using these metrics. For subclades still discordant after tip-based filtering, we used a machine learning approach to determine whether phylogenetic signal or noise was the more important predictor of metrics supporting the alternative topologies. We found that when signal favored one of the topologies, the noise was the most important variable in poorly performing models that favored the alternative topology. In sum, we show that artifactual sources of gene tree discordance, which are likely a common phenomenon in many data sets, can be distinguished from biological sources by quantifying the information content in each tip and modeling which factors support each topology. [Historical DNA; machine learning; museomics; Psittaciformes; species tree.].
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