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Ancient evolutionary signals of protein-coding sequences allow the discovery of new genes in the Drosophila melanogaster genome

机译:蛋白质编码序列的古代进化信号允许在果蝇黑色素蛋白酶基因组中发现新基因

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摘要

Abstract Background The current growth in DNA sequencing techniques makes of genome annotation a crucial task in the genomic era. Traditional gene finders focus on protein-coding sequences, but they are far from being exhaustive. The number of this kind of genes continuously increases due to new experimental data and development of improved bioinformatics algorithms. Results In this context, AnABlast represents a novel in silico strategy, based on the accumulation of short evolutionary signals identified by protein sequence alignments of low score. This strategy potentially highlights protein-coding regions in genomic sequences regardless of traditional homology or translation signatures. Here, we analyze the evolutionary information that the accumulation of these short signals encloses. Using the Drosophila melanogaster genome, we stablish optimal parameters for the accurate gene prediction with AnABlast and show that this new strategy significantly contributes to add genes, exons and pseudogenes regions, yet to be discovered in both already annotated and new genomes. Conclusions AnABlast can be freely used to analyze genomic regions of whole genomes where it contributes to complete the previous annotation.
机译:摘要背景基因组注释的DNA测序技术目前的发展使得在基因组时代的一个重要任务。传统的基因发现专注于蛋白质编码序列,但他们远没有穷尽。这种基因的数量持续增加,由于新的实验数据和改善的生物信息学算法的发展。结果在这种情况下,AnABlast表示在硅片策略的新的,基于由低分的蛋白序列比对鉴定短进化信号的累积。这种策略在基因组序列可能凸显蛋白质编码区域,无论传统的同源性或翻译签名。在这里,我们分析的进化信息,这些短信号的积累封闭。利用果蝇基因组,我们stablish的精确基因预测与AnABlast并表明这一新战略显著有助于增加基因外显子和假地区,但在两个已经注释和新基因被发现最佳参数。 AnABlast可以自由使用来分析整个基因组的基因组区域,其中它有助于结论,完成先前的注释。

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