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首页> 外文期刊>Nucleic acids research >SMARTIV: combined sequence and structure de-novo motif discovery for in-vivo RNA binding data
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SMARTIV: combined sequence and structure de-novo motif discovery for in-vivo RNA binding data

机译:SMARTIV:体内RNA结合数据的组合序列和结构创新基序发现

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摘要

Gene expression regulation is highly dependent on binding of RNA-binding proteins (RBPs) to their RNA targets. Growing evidence supports the notion that both RNA primary sequence and its local secondary structure play a role in specific Protein-RNA recognition and binding. Despite the great advance in high-throughput experimental methods for identifying sequence targets of RBPs, predicting the specific sequence and structure binding preferences of RBPs remains a major challenge. We present a novel webserver, SMARTIV, designed for discovering and visualizing combined RNA sequence and structure motifs from high-throughput RNA-binding data, generated from in-vivo experiments. The uniqueness of SMARTIV is that it predicts motifs from enriched k-mers that combine information from ranked RNA sequences and their predicted secondary structure, obtained using various folding methods. Consequently, SMARTIV generates Position Weight Matrices (PWMs) in a combined sequence and structure alphabet with assigned P-values. SMARTIV concisely represents the sequence and structure motif content as a single graphical logo, which is informative and easy for visual perception. SMARTIV was examined extensively on a variety of high-throughput binding experiments for RBPs from different families, generated from different technologies, showing consistent and accurate results. Finally, SMARTIV is a user-friendly webserver, highly efficient in run-time and freely accessible via http://smartiv.technion.ac.il/.
机译:基因表达调控高度依赖于RNA结合蛋白(RBP)与其RNA靶标的结合。越来越多的证据支持以下观点:RNA一级序列及其局部二级结构均在特定的蛋白质-RNA识别和结合中起作用。尽管在鉴定RBP序列靶标的高通量实验方法方面取得了巨大进步,但预测RBP的特定序列和结构结合偏好仍是一个重大挑战。我们提出了一种新颖的网络服务器SMARTIV,旨在从体内实验产生的高通量RNA结合数据中发现并可视化组合的RNA序列和结构基序。 SMARTIV的独特之处在于,它可以根据富集的k-mer预测基序,这些k-mer结合了来自排名RNA序列的信息以及使用各种折叠方法获得的预测二级结构。因此,SMARTIV以组合的序列和结构字母以及分配的P值生成位置权重矩阵(PWM)。 SMARTIV简洁地将序列和结构主题内容表示为单个图形徽标,内容丰富且易于视觉感知。 SMARTIV在来自不同家族的RBP的各种高通量结合实验中进行了广泛检查,这些实验来自不同的技术,显示出一致而准确的结果。最后,SMARTIV是用户友好的Web服务器,运行时效率很高,可通过http://smartiv.technion.ac.il/免费访问。

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