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GPSit: An automated method for evolutionary analysis of nonculturable ciliated microeukaryotes

机译:GPSIT:一种用于非培养性纤毛微核的进化分析的自动化方法

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摘要

Microeukaryotes are among the most important components of the microbial food web in almost all aquatic and terrestrial ecosystems worldwide. In order to gain a better understanding their roles and functions in ecosystems, sequencing coupled with phylogenomic analyses of entire genomes or transcriptomes is increasingly used to reconstruct the evolutionary history and classification of these microeukaryotes and thus provide a more robust framework for determining their systematics and diversity. More importantly, phylogenomic research usually requires high levels of hands-on bioinformatics experience. Here, we propose an efficient automated method, "Guided Phylogenomic Search in trees" (GPSit), which starts from predicted protein sequences of newly sequenced species and a well-defined customized orthologous database. Compared with previous protocols, our method streamlines the entire workflow by integrating all essential and other optional operations. In so doing, the manual operation time for reconstructing phylogenetic relationships is reduced from days to several hours, compared to other methods. Furthermore, GPSit supports user-defined parameters in most steps and thus allows users to adapt it to their studies. The effectiveness of GPSit is demonstrated by incorporating available online data and new single-cell data of three nonculturable marine ciliates (Anteholosticha monilata, Deviata sp. and Diophrys scutum) under moderate sequencing coverage (similar to 5x). Our results indicate that the former could reconstruct robust "deep" phylogenetic relationships while the latter reveals the presence of intermediate taxa in shallow relationships. Based on empirical phylogenomic data, we also used GPSit to evaluate the impact of different levels of missing data on two commonly used methods of phylogenetic analyses, maximum likelihood (ML) and Bayesian inference (BI) methods. We found that BI is less sensitive to missing data when fast-evolving sites are removed.ds. We f
机译:微核素是在全球几乎所有水生和陆地生态系统中的微生物网上的最重要组成部分之一。为了更好地了解生态系统中的作用和功能,与整个基因组或转录om的系统托管分析偶联的测序越来越多地用于重建这些微核的进化历史和分类,从而提供更强大的框架,用于确定其系统性和多样性。更重要的是,文育研究通常需要高水平的动手生物信息学体验。在此,我们提出了一种有效的自动化方法,“引导文学中的文学组织”(GPSIT)(GPSIT)开始,其从新序列物种的预测蛋白序列和明确定义的定制正交数据库。与以前的协议相比,我们的方法通过集成所有必不可少的和其他可选操作来简化整个工作流程。这样,与其他方法相比,重建系统发育关系的手动操作时间从天到几个小时减少。此外,GPSIT在大多数步骤中支持用户定义的参数,因此允许用户将其调整到他们的研究。通过在适度测序覆盖下掺入可用的在线数据和三个不可培养的海洋纤维(脱妖体海绵,Deviata Sp。和辅助Scutum)的新单细胞数据来证明GPSit的有效性。我们的结果表明,前者可以重建鲁棒的“深层”的系统发育关系,而后者揭示了浅层关系中的中间分类物的存在。基于经验的系统托儿述数据,我们还使用GPSIT在两种常用的系统发育方法,最大可能性(ML)和贝叶斯推理(BI)方法中评估不同水平缺失数据的影响。当删除快速不断发展的站点时,我们发现BI对缺少数据不太敏感。我们f

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