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RaptRanker: in silico RNA aptamer selection from HT-SELEX experiment based on local sequence and structure information

机译:Raptranker:基于本地序列和结构信息的HT-SELEX实验中的Silico RNA适体选择

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Aptamers are short single-stranded RNA/DNA molecules that bind to specific target molecules. Aptamers with high binding-affinity and target specificity are identified using an in vitro procedure called high throughput systematic evolution of ligands by exponential enrichment (HT-SELEX). However, the development of aptamer affinity reagents takes a considerable amount of time and is costly because HT-SELEX produces a large dataset of candidate sequences, some of which have insufficient binding-affinity. Here, we present RNA aptamer Ranker (RaptRanker), a novel in silico method for identifying high binding-affinity aptamers from HT-SELEX data by scoring and ranking. RaptRanker analyzes HT-SELEX data by evaluating the nucleotide sequence and secondary structure simultaneously, and by ranking according to scores reflecting local structure and sequence frequencies. To evaluate the performance of RaptRanker, we performed two new HT-SELEX experiments, and evaluated binding affinities of a part of sequences that include aptamers with low binding-affinity. In both datasets, the performance of RaptRanker was superior to Frequency, Enrichment and MPBind. We also confirmed that the consideration of secondary structures is effective in HT-SELEX data analysis, and that RaptRanker successfully predicted the essential subsequence motifs in each identified sequence.
机译:适体是与特异性靶分子结合的短单链RNA / DNA分子。使用指数富集(HT-SELEX)的具有高通量系统演化的体外程序鉴定具有高结合亲和力和靶特异性的适体。然而,Aptamer亲和试剂的发展需要相当大的时间,并且是昂贵的,因为HT-SELEX产生了候选序列的大型数据集,其中一些具有不充分的结合亲和力。在这里,我们呈现RNA适体排名(Raptranker),一种用于通过评分和排列来鉴定来自HT-SELEX数据的高结合亲和力适体的硅方法中的一种新颖。 Raptranker通过同时评估核苷酸序列和次要结构来分析HT-SELEX数据,并根据反映局部结构和序列频率的分数排序。为了评估Raptranker的性能,我们进行了两个新的HT-SELEX实验,并评估了一部分序列的结合亲和力,其包括具有低结合亲和力的适体。在两个数据集中,Raptranker的性能优于频率,富集和MPBind。我们还证实,二次结构的考虑在HT-SELEX数据分析中是有效的,并且RAPTRANNER成功地预测了每个识别的序列中的基本子项序列图。

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