Comparison of Three Computational Tools for the Prediction of RNA Tertiary Structures.

IF 3.6 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Frank Yiyang Mao, Mei-Juan Tu, Gavin McAllister Traber, Ai-Ming Yu
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引用次数: 0

Abstract

Understanding the structures of noncoding RNAs (ncRNAs) is important for the development of RNA-based therapeutics. There are inherent challenges in employing current experimental techniques to determine the tertiary (3D) structures of RNAs with high complexity and flexibility in folding, which makes computational methods indispensable. In this study, we compared the utilities of three advanced computational tools, namely RNAComposer, Rosetta FARFAR2, and the latest AlphaFold 3, to predict the 3D structures of various forms of RNAs, including the small interfering RNA drug, nedosiran, and the novel bioengineered RNA (BioRNA) molecule showing therapeutic potential. Our results showed that, while RNAComposer offered a malachite green aptamer 3D structure closer to its crystal structure, the performances of RNAComposer and Rosetta FARFAR2 largely depend upon the secondary structures inputted, and Rosetta FARFAR2 predictions might not even recapitulate the typical, inverted "L" shape tRNA 3D structure. Overall, AlphaFold 3, integrating molecular dynamics principles into its deep learning framework, directly predicted RNA 3D structures from RNA primary sequence inputs, even accepting several common post-transcriptional modifications, which closely aligned with the experimentally determined structures. However, there were significant discrepancies among three computational tools in predicting the distal loop of human pre-microRNA and larger BioRNA (tRNA fused pre-miRNA) molecules whose 3D structures have not been characterized experimentally. While computational predictions show considerable promise, their notable strengths and limitations emphasize the needs for experimental validation of predictions besides characterization of more RNA 3D structures.

用于预测 RNA 三级结构的三种计算工具的比较。
了解非编码 RNA(ncRNA)的结构对于开发基于 RNA 的疗法非常重要。目前的实验技术在确定具有高度复杂性和折叠灵活性的 RNA 的三级(3D)结构方面存在固有的挑战,因此计算方法不可或缺。在这项研究中,我们比较了三种先进计算工具(即 RNAComposer、Rosetta FARFAR2 和最新的 AlphaFold 3)在预测各种形式 RNA(包括小干扰 RNA 药物奈多西兰和具有治疗潜力的新型生物工程 RNA(BioRNA)分子)的三维结构方面的实用性。我们的结果表明,虽然 RNAComposer 提供的孔雀石绿适配体三维结构更接近其晶体结构,但 RNAComposer 和 Rosetta FARFAR2 的性能很大程度上取决于输入的二级结构,Rosetta FARFAR2 预测的结果甚至可能无法再现典型的倒 "L "形 tRNA 三维结构。总体而言,AlphaFold 3 将分子动力学原理融入其深度学习框架,直接从输入的 RNA 一级序列预测了 RNA 的三维结构,甚至接受了几种常见的转录后修饰,这与实验测定的结构非常吻合。然而,在预测人类前microRNA和更大的BioRNA(tRNA融合前miRNA)分子的远端环路时,三种计算工具之间存在明显差异,而这些分子的三维结构尚未得到实验表征。虽然计算预测显示出相当大的前景,但其显著的优势和局限性强调了除了表征更多 RNA 三维结构外,还需要对预测进行实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Non-Coding RNA
Non-Coding RNA Biochemistry, Genetics and Molecular Biology-Genetics
CiteScore
6.70
自引率
4.70%
发文量
74
审稿时长
10 weeks
期刊介绍: Functional studies dealing with identification, structure-function relationships or biological activity of: small regulatory RNAs (miRNAs, siRNAs and piRNAs) associated with the RNA interference pathway small nuclear RNAs, small nucleolar and tRNAs derived small RNAs other types of small RNAs, such as those associated with splice junctions and transcription start sites long non-coding RNAs, including antisense RNAs, long ''intergenic'' RNAs, intronic RNAs and ''enhancer'' RNAs other classes of RNAs such as vault RNAs, scaRNAs, circular RNAs, 7SL RNAs, telomeric and centromeric RNAs regulatory functions of mRNAs and UTR-derived RNAs catalytic and allosteric (riboswitch) RNAs viral, transposon and repeat-derived RNAs bacterial regulatory RNAs, including CRISPR RNAS Analysis of RNA processing, RNA binding proteins, RNA signaling and RNA interaction pathways: DICER AGO, PIWI and PIWI-like proteins other classes of RNA binding and RNA transport proteins RNA interactions with chromatin-modifying complexes RNA interactions with DNA and other RNAs the role of RNA in the formation and function of specialized subnuclear organelles and other aspects of cell biology intercellular and intergenerational RNA signaling RNA processing structure-function relationships in RNA complexes RNA analyses, informatics, tools and technologies: transcriptomic analyses and technologies development of tools and technologies for RNA biology and therapeutics Translational studies involving long and short non-coding RNAs: identification of biomarkers development of new therapies involving microRNAs and other ncRNAs clinical studies involving microRNAs and other ncRNAs.
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