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EffectiveDB—updates and novel features for a better annotation of bacterial secreted proteins and Type III IV VI secretion systems

机译:EffectiveDB-更新和新颖的功能可以更好地注释细菌分泌的蛋白质和IIIIVVI型分泌系统

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摘要

Protein secretion systems play a key role in the interaction of bacteria and hosts. EffectiveDB () contains pre-calculated predictions of bacterial secreted proteins and of intact secretion systems. Here we describe a major update of the database, which was previously featured in the NAR Database Issue. EffectiveDB bundles various tools to recognize Type III secretion signals, conserved binding sites of Type III chaperones, Type IV secretion peptides, eukaryotic-like domains and subcellular targeting signals in the host. Beyond the analysis of arbitrary protein sequence collections, the new release of EffectiveDB also provides a ‘genome-mode’, in which protein sequences from nearly complete genomes or metagenomic bins can be screened for the presence of three important secretion systems (Type III, IV, VI). EffectiveDB contains pre-calculated predictions for currently 1677 bacterial genomes from the EggNOG 4.0 database and for additional bacterial genomes from NCBI RefSeq. The new, user-friendly and informative web portal offers a submission tool for running the EffectiveDB prediction tools on user-provided data.
机译:蛋白质分泌系统在细菌和宿主的相互作用中起关键作用。 EffectiveDB()包含细菌分泌蛋白和完整分泌系统的预先计算的预测。在这里,我们描述了数据库的主要更新,该更新以前在NAR数据库问题中进行了介绍。 EffectiveDB捆绑了多种工具来识别宿主中的III型分泌信号,III型伴侣的保守结合位点,IV型分泌肽,真核样结构域和亚细胞靶向信号。除分析任意蛋白质序列集合外,新版的EffectiveDB还提供了一种“基因组模式”,其中可以筛选来自几乎完整基因组或宏基因组区域的蛋白质序列,以寻找三个重要的分泌系统(III,IV型)的存在。 ,VI)。 EffectiveDB包含来自EggNOG 4.0数据库的当前1677个细菌基因组以及来自NCBI RefSeq的其他细菌基因组的预先计算的预测。新的,用户友好和信息丰富的Web门户提供了一个提交工具,用于对用户提供的数据运行EffectiveDB预测工具。

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