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LTRsift: a graphical user interface for semi-automatic classification and postprocessing of de novo detected LTR retrotransposons

机译:LTRsift:图形用户界面,用于从头检测到的LTR逆转座子的半自动分类和后处理

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Background Long terminal repeat (LTR) retrotransposons are a class of eukaryotic mobile elements characterized by a distinctive sequence similarity-based structure. Hence they are well suited for computational identification. Current software allows for a comprehensive genome-wide de novo detection of such elements. The obvious next step is the classification of newly detected candidates resulting in (super-)families. Such a de novo classification approach based on sequence-based clustering of transposon features has been proposed before, resulting in a preliminary assignment of candidates to families as a basis for subsequent manual refinement. However, such a classification workflow is typically split across a heterogeneous set of glue scripts and generic software (for example, spreadsheets), making it tedious for a human expert to inspect, curate and export the putative families produced by the workflow. Results We have developed LTRsift, an interactive graphical software tool for semi-automatic postprocessing of de novo predicted LTR retrotransposon annotations. Its user-friendly interface offers customizable filtering and classification functionality, displaying the putative candidate groups, their members and their internal structure in a hierarchical fashion. To ease manual work, it also supports graphical user interface-driven reassignment, splitting and further annotation of candidates. Export of grouped candidate sets in standard formats is possible. In two case studies, we demonstrate how LTRsift can be employed in the context of a genome-wide LTR retrotransposon survey effort. Conclusions LTRsift is a useful and convenient tool for semi-automated classification of newly detected LTR retrotransposons based on their internal features. Its efficient implementation allows for convenient and seamless filtering and classification in an integrated environment. Developed for life scientists, it is helpful in postprocessing and refining the output of software for predicting LTR retrotransposons up to the stage of preparing full-length reference sequence libraries. The LTRsift software is freely available at http://www.zbh.uni-hamburg.de/LTRsift webcite under an open-source license.
机译:背景长末端重复序列(LTR)反转录转座子是一类真核生物移动元件,其特征在于独特的基于序列相似性的结构。因此,它们非常适合于计算识别。当前的软件允许对此类元素进行全面的全基因组从头检测。显而易见的下一步是对导致(超)家族的新发现候选者进行分类。以前已经提出了这种基于转座子特征的基于序列的聚类的从头分类方法,从而将候选物初步分配给家族,作为随后的人工改良的基础。但是,这样的分类工作流通常分散在胶水脚本和通用软件(例如,电子表格)的异类集合中,这使得人类专家检查,整理和导出由该工作流产生的推定族变得乏味。结果我们开发了LTRsift,这是一个交互式图形软件工具,用于从头开始预测LTR反转录转座子注释的半自动后处理。其用户友好的界面提供可自定义的过滤和分类功能,以分层方式显示假定的候选组,其成员及其内部结构。为了简化手动工作,它还支持图形用户界面驱动的重新分配,拆分和进一步注释候选者。可以按标准格式导出分组的候选集。在两个案例研究中,我们演示了如何在全基因组LTR反转录转座子调查工作的背景下使用LTRsift。结论LTRsift是基于新近检测到的LTR反转录转座子内部特征的半自动分类的有用且方便的工具。它的有效实现可在集成环境中方便,无缝地进行过滤和分类。它是为生命科学家开发的,有助于后处理和完善软件的输出,以预测LTR逆转座子直至准备全长参考序列文库的阶段。 LTRsift软件可以在开源许可下从http://www.zbh.uni-hamburg.de/LTRsift网站免费获得。

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