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Pattern-based Search of Epigenomic Data Using GeNemo

机译:使用GeNemo基于模式的表观基因组数据搜索

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摘要

Compared with the robust text-based search tools for genomic or RNA sequencing data, current methodologies for pattern-based searches of epigenomic and other functional genomic data are very limited. GeNemo is the first online search tool that accomplishes this goal. Users input their functional genomic data in the Browser Extensible Data (BED), Peaks, and bigWig formats, and may search for data in any of the three formats. Users may specify which types of datasets to search against, choosing from a variety of online datasets, with the Encyclopedia of DNA Elements (ENCODE) representing different epigenomic marks, transcriptional factor binding sites, and chromatin hypersensitivities or accessibilities in specific cell types, and developmental stages or species (mouse or human). GeNemo returns a list of genomic regions with matching patterns to the input data, which may be viewed in the browser as well as downloaded in the BED file format. The upgraded GeNemo has improved graphical display, has more robust interface, and is no longer prone to errors due to changes in the University of California, Santa Cruz (UCSC) genome browser. Troubleshooting steps for common problems are discussed. As the amount of functional genomic data is expanding exponentially, there is a critical need to develop and refine new bioinformatic tools such as GeNemo for data analyses and interpretation.
机译:与基于健壮的基于文本的基因组或RNA测序数据搜索工具相比,当前基于模式的表观基因组和其他功能基因组数据的搜索方法非常有限。 GeNemo是第一个实现此目标的在线搜索工具。用户以浏览器可扩展数据(BED),峰和bigWig格式输入其功能基因组数据,并可以以这三种格式中的任何一种来搜索数据。用户可以从各种在线数据集中选择要搜索的数据类型,DNA元素百科全书(ENCODE)代表不同的表观基因组标记,转录因子结合位点以及特定细胞类型和发育中的染色质超敏性或可及性阶段或物种(鼠标或人类)。 GeNemo返回具有与输入数据匹配的模式的基因组区域列表,可以在浏览器中查看以及以BED文件格式下载。升级后的GeNemo具有改进的图形显示,具有更强大的界面,并且不再由于加利福尼亚大学圣克鲁斯分校(UCSC)基因组浏览器的更改而容易出错。讨论了常见问题的故障排除步骤。随着功能基因组数据的数量呈指数增长,迫切需要开发和完善新的生物信息工具,例如GeNemo,以进行数据分析和解释。

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