EasyOmics: A graphical interface for population-scale omics data association, integration, and visualization.

IF 9.4 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Yu Han, Qiao Du, Yifei Dai, Shaobo Gu, Mengyu Lei, Wei Liu, Wenjia Zhang, Mingjia Zhu, Landi Feng, Huan Si, Jianquan Liu, Yanjun Zan
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引用次数: 0

Abstract

The rapid growth of population-scale whole-genome resequencing, RNA sequencing, bisulfite sequencing, and metabolomic and proteomic profiling has led quantitative genetics into the era of big omics data. Association analyses of omics data, such as genome-, transcriptome-, proteome-, and methylome-wide association studies, along with integrative analyses of multiple omics datasets, require various bioinformatics tools, which rely on advanced programming skills and command-line interfaces and thus pose challenges for wet-lab biologists. Here, we present EasyOmics, a stand-alone R Shiny application with a user-friendly interface that enables wet-lab biologists to perform population-scale omics data association, integration, and visualization. The toolkit incorporates multiple functions designed to meet the increasing demand for population-scale omics data analyses, including data quality control, heritability estimation, genome-wide association analysis, conditional association analysis, omics quantitative trait locus mapping, omics-wide association analysis, omics data integration, and visualization. A wide range of publication-quality graphs can be prepared in EasyOmics by pointing and clicking. EasyOmics is a platform-independent software that can be run under all operating systems, with a docker container for quick installation. It is freely available to non-commercial users at Docker Hub https://hub.docker.com/r/yuhan2000/easyomics.

EasyOmics:用于群体规模 omics 数据关联、整合和可视化的图形界面。
人口规模的全基因组重测序、RNA测序、亚硫酸氢盐测序、代谢组学和蛋白质组学分析的快速发展,将定量遗传学带入了一个大组学数据时代。执行组学数据关联分析,如基因组、转录组、蛋白质组和甲基组广泛关联分析,以及对多个组学数据集的综合分析需要各种生物信息学工具,这些工具依赖于高级编程技能和命令行工具,这对湿实验室生物学家来说是具有挑战性的。在这里,我们介绍了EasyOmics一个独立的R Shiny应用程序,具有用户友好的界面,供湿实验室生物学家执行群体规模的组学数据关联,集成和可视化。该工具包包含多种功能,旨在满足日益增长的群体规模组学数据分析的需求,包括数据质量控制、遗传力估计、全基因组关联分析、条件关联分析、组学数量性状位点定位、全基因组关联分析、组学数据集成和可视化等。广泛的出版质量图表可以在EasyOmics中准备与指向和点击。EasyOmics是一款平台无关的软件,可以在所有操作系统下运行,并使用docker容器进行快速安装。它可以在docker hub https://hub.docker.com/r/yuhan2000/easyomics上免费提供给非商业用户。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Plant Communications
Plant Communications Agricultural and Biological Sciences-Plant Science
CiteScore
15.70
自引率
5.70%
发文量
105
审稿时长
6 weeks
期刊介绍: Plant Communications is an open access publishing platform that supports the global plant science community. It publishes original research, review articles, technical advances, and research resources in various areas of plant sciences. The scope of topics includes evolution, ecology, physiology, biochemistry, development, reproduction, metabolism, molecular and cellular biology, genetics, genomics, environmental interactions, biotechnology, breeding of higher and lower plants, and their interactions with other organisms. The goal of Plant Communications is to provide a high-quality platform for the dissemination of plant science research.
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