RNAelem:一种发现由 RNA 结合蛋白结合的 RNA 中序列结构图案的算法。

IF 2.4 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY Bioinformatics advances Pub Date : 2024-09-28 eCollection Date: 2024-01-01 DOI:10.1093/bioadv/vbae144
Hiroshi Miyake, Risa Karakida Kawaguchi, Hisanori Kiryu
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引用次数: 0

摘要

动机RNA 结合蛋白(RBPs)在 RNA 转录后调控中发挥着至关重要的作用。鉴于其重要性,分析 RBPs 识别的特定 RNA 模式已成为生物信息学的一个重要研究重点。深度神经网络提高了 RBP 结合位点预测的准确性,但由于其可解释性有限,从这些模型中了解 RBP 结合特异性的结构基础具有挑战性。为了解决这个问题,我们开发了 RNAelem,它结合了 RNA 二级结构的剖面无上下文语法和 Turner 能量模型,来预测 RBP 结合区域的序列结构主题:结果:与现有工具相比,RNAelem 对具有结构基调的 RNA 序列的检测准确率更高。将 RNAelem 应用于 eCLIP 数据库后,我们不仅能够在没有二级结构的情况下重现许多已知的一级序列主题,而且还发现了许多包含序列非特异性插入区域的二级结构主题。此外,RNAelem 的高可解释性还产生了一些有见地的发现,如 U2AF 蛋白结合区的长程碱基配对相互作用:代码见 https://github.com/iyak/RNAelem。
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RNAelem: an algorithm for discovering sequence-structure motifs in RNA bound by RNA-binding proteins.

Motivation: RNA-binding proteins (RBPs) play a crucial role in the post-transcriptional regulation of RNA. Given their importance, analyzing the specific RNA patterns recognized by RBPs has become a significant research focus in bioinformatics. Deep Neural Networks have enhanced the accuracy of prediction for RBP-binding sites, yet understanding the structural basis of RBP-binding specificity from these models is challenging due to their limited interpretability. To address this, we developed RNAelem, which combines profile context-free grammar and the Turner energy model for RNA secondary structure to predict sequence-structure motifs in RBP-binding regions.

Results: RNAelem exhibited superior detection accuracy compared to existing tools for RNA sequences with structural motifs. Upon applying RNAelem to the eCLIP database, we were not only able to reproduce many known primary sequence motifs in the absence of secondary structures, but also discovered many secondary structural motifs that contained sequence-nonspecific insertion regions. Furthermore, the high interpretability of RNAelem yielded insightful findings such as long-range base-pairing interactions in the binding region of the U2AF protein.

Availability and implementation: The code is available at https://github.com/iyak/RNAelem.

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