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SSRome: an integrated database and pipelines for exploring microsatellites in all organisms

机译:SSRome:用于探索所有生物中的微卫星的集成数据库和管道

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摘要

Over the past decade, many databases focusing on microsatellite mining on a genomic scale were released online with at least one of the following major deficiencies: (i) lacking the classification of microsatellites as genic or non-genic, (ii) not comparing microsatellite motifs at both genic and non-genic levels in order to identify unique motifs for each class or (iii) missing SSR marker development. In this study, we have developed ‘SSRome’ as a web-based, user-friendly, comprehensive and dynamic database with pipelines for exploring microsatellites in 6533 organisms. In the SSRome database, 158 million microsatellite motifs are identified across all taxa, in addition to all the mitochondrial and chloroplast genomes and expressed sequence tags available from NCBI. Moreover, 45.1 million microsatellite markers were developed and classified as genic or non-genic. All the stored motif and marker datasets can be downloaded freely. In addition, SSRome provides three user-friendly tools to identify, classify and compare motifs on either a genome- or transcriptome-wide scale. With the implementation of PHP, HTML and JavaScript, users can upload their data for analysis via a user-friendly GUI. SSRome represents a powerful database and mega-tool that will assist researchers in developing and dissecting microsatellite markers on a high-throughput scale.
机译:在过去的十年中,许多专注于基因组规模的微卫星采矿的数据库在线发布,但至少存在以下主要缺陷之一:(i)缺乏将微卫星分类为基因型还是非基因型的;(ii)不比较微卫星的基序在基因和非基因水平上鉴定每个类别的独特基序,或(iii)缺失SSR标记物的发育。在这项研究中,我们开发了“ SSRome”,它是一个基于Web的,用户友好的,全面而动态的数据库,具有用于探索6533种生物中的微卫星的管道。在SSRome数据库中,除所有线粒体和叶绿体基因组以及可从NCBI获得的表达的序列标签外,在所有分类单元中鉴定出1.58亿个微卫星基序。此外,开发了4510万微卫星标记并将其分类为基因或非基因。所有存储的图案和标记数据集都可以免费下载。此外,SSRome提供了三种用户友好的工具,可以在全基因组或转录组范围内鉴定,分类和比较基序。通过实施PHP,HTML和JavaScript,用户可以通过用户友好的GUI上传数据以进行分析。 SSRome代表了一个强大的数据库和大型工具,将帮助研究人员以高通量规模开发和解剖微卫星标记。

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