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RepTar:宿主和病毒微小RNA预测细胞靶点数据库。

RepTar: a database of predicted cellular targets of host and viral miRNAs.

作者信息

Elefant Naama, Berger Amnon, Shein Harel, Hofree Matan, Margalit Hanah, Altuvia Yael

机构信息

Department of Microbiology and Molecular Genetics, IMRIC, The Hebrew University-Hadassah Medical School, Jerusalem 91120, Israel.

出版信息

Nucleic Acids Res. 2011 Jan;39(Database issue):D188-94. doi: 10.1093/nar/gkq1233. Epub 2010 Dec 10.

Abstract

Computational identification of putative microRNA (miRNA) targets is an important step towards elucidating miRNA functions. Several miRNA target-prediction algorithms have been developed followed by publicly available databases of these predictions. Here we present a new database offering miRNA target predictions of several binding types, identified by our recently developed modular algorithm RepTar. RepTar is based on identification of repetitive elements in 3'-UTRs and is independent of both evolutionary conservation and conventional binding patterns (i.e. Watson-Crick pairing of 'seed' regions). The modularity of RepTar enables the prediction of targets with conventional seed sites as well as rarer targets with non-conventional sites, such as sites with seed wobbles (G-U pairing in the seed region), 3'-compensatory sites and the newly discovered centered sites. Furthermore, RepTar's independence of conservation enables the prediction of cellular targets of the less evolutionarily conserved viral miRNAs. Thus, the RepTar database contains genome-wide predictions of human and mouse miRNAs as well as predictions of cellular targets of human and mouse viral miRNAs. These predictions are presented in a user-friendly database, which allows browsing through the putative sites as well as conducting simple and advanced queries including data intersections of various types. The RepTar database is available at http://reptar.ekmd.huji.ac.il.

摘要

计算鉴定假定的微小RNA(miRNA)靶标是阐明miRNA功能的重要一步。已经开发了几种miRNA靶标预测算法,随后出现了这些预测结果的公开可用数据库。在此,我们展示了一个新的数据库,它提供了通过我们最近开发的模块化算法RepTar鉴定的几种结合类型的miRNA靶标预测。RepTar基于对3'-非翻译区(3'-UTR)中重复元件的鉴定,并且独立于进化保守性和传统结合模式(即“种子”区域的沃森-克里克配对)。RepTar的模块化能够预测具有传统种子位点的靶标以及具有非传统位点的罕见靶标,例如具有种子摆动(种子区域中的G-U配对)、3'-补偿位点和新发现的中心位点的靶标。此外,RepTar对保守性的独立性使得能够预测进化上不太保守的病毒miRNA的细胞靶标。因此,RepTar数据库包含人类和小鼠miRNA的全基因组预测以及人类和小鼠病毒miRNA的细胞靶标预测。这些预测结果呈现在一个用户友好的数据库中,该数据库允许浏览假定的位点以及进行简单和高级查询,包括各种类型的数据交集。RepTar数据库可在http://reptar.ekmd.huji.ac.il获取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6290/3013742/0bfd106cbf6b/gkq1233f1.jpg

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