CViewer:一个基于 Java 的统计框架,用于将散弹枪元基因组学与其他 omics 数据集整合在一起。

IF 13.8 1区 生物学 Q1 MICROBIOLOGY
Orges Koci, Richard K Russell, M Guftar Shaikh, Christine Edwards, Konstantinos Gerasimidis, Umer Zeeshan Ijaz
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引用次数: 0

摘要

背景:用于微生物群落调查的霰弹枪元基因组学能获取大量微生物基因组信息,包括其丰度、分类和系统发育信息,以及其基因组构成,后者有助于根据注释的基因产物、mRNA、蛋白质和代谢物检索其功能。在特定假说的背景下,往往还包括其他模式,以说明宿主与微生物组之间的相互作用。例如,在人类相关微生物组项目中,通过流式细胞术纳入宿主免疫学已变得越来越普遍。虽然有很多软件方法可用于下游统计分析,其中一些还利用了基于标记和基于组装的方法,但有助于将所有此类信息整合到一个平台中的统计工具仍然十分匮乏。由于严格的计算要求,统计工作流程往往是被动的,可视化探索有限:在这项研究中,我们开发了一个基于 Java 的统计框架 ( https://github.com/KociOrges/cviewer ) 来探索猎枪元基因组学数据,该框架可与传统管道无缝集成,并提供探索性分析和假设驱动分析。最终产品是一个具有多文档界面的高度交互式工具包,它能让没有专业知识的人更轻松地对多组学数据集进行分析,并揭示与生物相关的模式。我们设计的算法基于常用的数值生态学和机器学习原理,并以集成的组学工具为价值驱动,不仅能发现不同数据集之间的相关性,还能根据病例对照关系进行区分:结论:CViewer 用于分析两个不同的元基因组数据集,其复杂程度各不相同。这些数据集包括一项饮食干预研究,旨在了解克罗恩病在饮食治疗过程中的变化,包括病情缓解;以及一项肥胖症数据集的肠道微生物组图谱,该数据集比较了不同病因引起的肥胖症受试者和瘦弱的对照组。在 CViewer 中对这两项研究进行的完整分析提供了非常有力的机理见解,与已发表的文献相吻合,并展示了其全部潜力。视频摘要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CViewer: a Java-based statistical framework for integration of shotgun metagenomics with other omics datasets.

Background: Shotgun metagenomics for microbial community survey recovers enormous amount of information for microbial genomes that include their abundances, taxonomic, and phylogenetic information, as well as their genomic makeup, the latter of which then helps retrieve their function based on annotated gene products, mRNA, protein, and metabolites. Within the context of a specific hypothesis, additional modalities are often included, to give host-microbiome interaction. For example, in human-associated microbiome projects, it has become increasingly common to include host immunology through flow cytometry. Whilst there are plenty of software approaches available, some that utilize marker-based and assembly-based approaches, for downstream statistical analyses, there is still a dearth of statistical tools that help consolidate all such information in a single platform. By virtue of stringent computational requirements, the statistical workflow is often passive with limited visual exploration.

Results: In this study, we have developed a Java-based statistical framework ( https://github.com/KociOrges/cviewer ) to explore shotgun metagenomics data, which integrates seamlessly with conventional pipelines and offers exploratory as well as hypothesis-driven analyses. The end product is a highly interactive toolkit with a multiple document interface, which makes it easier for a person without specialized knowledge to perform analysis of multiomics datasets and unravel biologically relevant patterns. We have designed algorithms based on frequently used numerical ecology and machine learning principles, with value-driven from integrated omics tools which not only find correlations amongst different datasets but also provide discrimination based on case-control relationships.

Conclusions: CViewer was used to analyse two distinct metagenomic datasets with varying complexities. These include a dietary intervention study to understand Crohn's disease changes during a dietary treatment to include remission, as well as a gut microbiome profile for an obesity dataset comparing subjects who suffer from obesity of different aetiologies and against controls who were lean. Complete analyses of both studies in CViewer then provide very powerful mechanistic insights that corroborate with the published literature and demonstrate its full potential. Video Abstract.

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来源期刊
Microbiome
Microbiome MICROBIOLOGY-
CiteScore
21.90
自引率
2.60%
发文量
198
审稿时长
4 weeks
期刊介绍: Microbiome is a journal that focuses on studies of microbiomes in humans, animals, plants, and the environment. It covers both natural and manipulated microbiomes, such as those in agriculture. The journal is interested in research that uses meta-omics approaches or novel bioinformatics tools and emphasizes the community/host interaction and structure-function relationship within the microbiome. Studies that go beyond descriptive omics surveys and include experimental or theoretical approaches will be considered for publication. The journal also encourages research that establishes cause and effect relationships and supports proposed microbiome functions. However, studies of individual microbial isolates/species without exploring their impact on the host or the complex microbiome structures and functions will not be considered for publication. Microbiome is indexed in BIOSIS, Current Contents, DOAJ, Embase, MEDLINE, PubMed, PubMed Central, and Science Citations Index Expanded.
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