机器学习模型基于宿主和生物地理数据准确预测变形头绦虫(Onchoproteocephalidea)的分支。

IF 3.9 2区 生物学 Q1 EVOLUTIONARY BIOLOGY
Cladistics Pub Date : 2025-03-06 DOI:10.1111/cla.12610
Philippe Vieira Alves, Reinaldo José da Silva, Tomáš Scholz, Alain de Chambrier, José Luis Luque, Anastasiia Duchenko, Daniel Janies, Denis Jacob Machado
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引用次数: 0

摘要

变形头虫是一种世界性和多样化的绦虫(绦虫),在淡水和陆地环境中都有脊椎动物宿主。尽管该群体无处不在,但推动该群体进化的关键宏观进化过程尚未被确定。在此,我们利用已公开的(671)和新生成的(91)537个末端的核RNA28S和线粒体MT-CO1核苷酸序列回顾了蛋白头绦虫的系统发育关系。在简约最优准则下进行主树搜索,同时分析不同的基因序列。有趣的是,我们无法恢复变形头科的单一性。此外,传统的二维特征优化策略难以将树与宿主和生物地理数据协调一致。因此,我们研究了宿主和生物地理数据是否可以在多维空间中与寄生虫分支相关联,从而同时考虑多层信息。为此,我们使用随机森林(一类机器学习模型)来测试protecephalid树背景下组合(而非单个)宿主和生物地理数据的预测潜力。我们得到的模型可以正确地将88.85%(平均)的终端划分为8个代表性分支。此外,我们相互作用地增加了进化枝扰动概率的水平,并证实了模型精度与进化枝扰动程度负相关的期望。我们的研究结果表明,宿主和生物地理数据可以在多维空间中准确地预测蛋白质头类分支,尽管它们难以在寄生虫树中优化。这些结果与蛋白质头类动物的进化不是独立于宿主和生物地理的假设一致,这两者都可能为我们的进化树提供了外部支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning models accurately predict clades of proteocephalidean tapeworms (Onchoproteocephalidea) based on host and biogeographical data.

Proteocephalids are a cosmopolitan and diverse group of tapeworms (Cestoda) that have colonized vertebrate hosts in freshwater and terrestrial environments. Despite the ubiquity of the group, key macroevolutionary processes that have driven the group's evolution have yet to be identified. Here, we review the phylogenetic relationships of proteocephalid tapeworms using publicly available (671) and newly generated (91) nucleotide sequences of the nuclear RNA28S and the mitochondrial MT-CO1 for 537 terminals. The main tree search was carried out under the parsimony optimality criterion, analysing different gene alignments simultaneously. Interestingly, we were not able to recover monophyly of the Proteocephalidae. Additionally, it was difficult to reconcile the tree with host and biogeographical data using traditional character optimization strategies in two dimensions. Therefore, we investigated if host and biogeographical data can be correlated with the parasite clades in a multidimensional space-thus considering multiple layers of information simultaneously. To that end, we used random forests (a class of machine learning models) to test the predictive potential of combined (not individual) host and biogeographical data in the context of the proteocephalid tree. Our resulting models can correctly place 88.85% (on average) of the terminals into eight representative clades. Moreover, we interactively increased the levels of clade perturbation probability and confirmed the expectation that model accuracy negatively correlates with the degree of clade perturbation. Our results show that host and biogeographical data can accurately predict proteocephalid clades in multidimensional space, even though they are difficult to optimize in the parasite tree. These results agree with the assumption that the evolution of proteocephalids is not independent of host and biogeography, and both may provide external support for our tree.

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来源期刊
Cladistics
Cladistics 生物-进化生物学
CiteScore
8.60
自引率
5.60%
发文量
34
期刊介绍: Cladistics publishes high quality research papers on systematics, encouraging debate on all aspects of the field, from philosophy, theory and methodology to empirical studies and applications in biogeography, coevolution, conservation biology, ontogeny, genomics and paleontology. Cladistics is read by scientists working in the research fields of evolution, systematics and integrative biology and enjoys a consistently high position in the ISI® rankings for evolutionary biology.
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