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Bioinformatics Tools and Benchmarks for Computational Docking and 3D Structure Prediction of RNA-Protein Complexes

机译:RNA蛋白质复合物的计算对接和3D结构预测的生物信息学工具和基准

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摘要

RNA-protein (RNP) interactions play essential roles in many biological processes, such as regulation of co-transcriptional and post-transcriptional gene expression, RNA splicing, transport, storage and stabilization, as well as protein synthesis. An increasing number of RNP structures would aid in a better understanding of these processes. However, due to the technical difficulties associated with experimental determination of macromolecular structures by high-resolution methods, studies on RNP recognition and complex formation present significant challenges. As an alternative, computational prediction of RNP interactions can be carried out. Structural models obtained by theoretical predictive methods are, in general, less reliable compared to models based on experimental measurements but they can be sufficiently accurate to be used as a basis for to formulating functional hypotheses. In this article, we present an overview of computational methods for 3D structure prediction of RNP complexes. We discuss currently available methods for macromolecular docking and for scoring 3D structural models of RNP complexes in particular. Additionally, we also review benchmarks that have been developed to assess the accuracy of these methods.
机译:RNA-蛋白质(RNP)相互作用在许多生物学过程中起着至关重要的作用,例如共同转录和转录后基因表达的调控,RNA剪接,运输,储存和稳定以及蛋白质合成。越来越多的RNP结构将有助于更好地理解这些过程。然而,由于高分辨率方法通过实验确定大分子结构的技术难度,RNP识别和复合物形成的研究提出了重大挑战。作为替代,可以进行RNP相互作用的计算预测。与基于实验测量的模型相比,通过理论预测方法获得的结构模型通常较不可靠,但它们可以足够准确地用作构成功能假设的基础。在本文中,我们概述了RNP配合物的3D结构预测的计算方法。我们讨论当前可用的方法,特别是高分子对接和RNP复杂的3D结构模型的得分。此外,我们还将审查为评估这些方法的准确性而开发的基准。

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