De Novo Sequence-Based Method for ncRPI Prediction using Structural Information

M. Leone, Marta Galvani, M. Masseroli
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Abstract

Improving knowledge of RNA-binding protein targets is focusing the attention towards non-coding RNAs (ncRNAs), i.e., transcripts not translated into a protein; they are associated with a wide range of biological functions through different molecular mechanisms, usually concerning the interaction with one or more protein partners. Recent studies confirmed that the alteration of ncRNA-protein interactions (ncRPIs) may be linked to various pathologies, including autoimmune and metabolic diseases, neurological and muscular disorders and cancer. Unfortunately, the limited number of structurally characterized RNA-protein complexes available does not allow to accurately establish their role in cellular processes and diseases. Experimental analyses to identify ncRNA-protein interactions are providing a large amount of valuable data, but these experiments are expensive and time-consuming. For these reasons, computational approaches based on machine learning techniques appear very useful to predict ncRPIs. Yet, there are still few studies regarding the prediction of ncRPIs, especially including the use of higher-order structures, which are of vital importance for the ncRPI functions. In this work, a new computational method for non-coding RNA-protein interaction prediction is developed; from sequence data, it derives more accurate information about the secondary structure of the molecules involved in such interactions, which it then uses in the prediction. Obtained results suggest that the use of machine learning techniques, together with considering also information on higher-order structures of ncRNAs and proteins, can be useful to better predict ncRPIs.
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基于从头序列的结构信息ncRPI预测方法
对rna结合蛋白靶点的认识不断提高,将注意力集中在非编码rna (ncRNAs)上,即未翻译成蛋白质的转录本;它们通过不同的分子机制与广泛的生物学功能相关,通常涉及与一个或多个蛋白质伴侣的相互作用。最近的研究证实,ncrna -蛋白相互作用(ncrpi)的改变可能与多种病理有关,包括自身免疫和代谢疾病、神经和肌肉疾病以及癌症。不幸的是,有限数量的结构特征rna -蛋白复合物可用,不允许准确地确定其在细胞过程和疾病中的作用。鉴定ncrna -蛋白质相互作用的实验分析提供了大量有价值的数据,但这些实验既昂贵又耗时。由于这些原因,基于机器学习技术的计算方法在预测ncrpi方面显得非常有用。然而,关于ncRPI预测的研究仍然很少,特别是包括使用对ncRPI功能至关重要的高阶结构。本文提出了一种新的非编码rna -蛋白相互作用预测计算方法;从序列数据中,它可以获得更准确的信息,了解参与这种相互作用的分子的二级结构,然后在预测中使用这些信息。获得的结果表明,使用机器学习技术,同时考虑ncRNAs和蛋白质的高阶结构信息,可以更好地预测ncrpi。
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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