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Comprehensive comparative analysis and identification of RNA-binding protein domains: Multi-class classification and feature selection

机译:RNA结合蛋白结构域的全面比较分析和鉴定:多类分类和特征选择

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RNA-protein interaction plays an important role in various cellular processes, such as protein synthesis, gene regulation, post-transcriptional gene regulation, alternative splicing, and infections by RNA viruses. In this study, using Gene Ontology Annotated (GOA) and Structural Classification of Proteins (SCOP) databases an automatic procedure was designed to capture structurally solved RNA-binding protein domains in different subclasses. Subsequently, we applied tuned multi-class SVM (TMCSVM), Random Forest (RF), and multi-class ? 1/? q-regularized logistic regression (MCRLR) for analysis and classifying RNA-binding protein domains based on a comprehensive set of sequence and structural features. In this study, we compared prediction accuracy of three different state-of-the-art predictor methods. From our results, TMCSVM outperforms the other methods and suggests the potential of TMCSVM as a useful tool for facilitating the multi-class prediction of RNA-binding protein domains. On the other hand, MCRLR by elucidating importance of features for their contribution in predictive accuracy of RNA-binding protein domains subclasses, helps us to provide some biological insights into the roles of sequences and structures in protein-RNA interactions.
机译:RNA-蛋白质相互作用在各种细胞过程中起着重要作用,例如蛋白质合成,基因调控,转录后基因调控,可变剪接和RNA病毒感染。在这项研究中,使用带注释的基因本体论(GOA)和蛋白质的结构分类(SCOP)数据库,设计了一种自动程序来捕获不同子类中结构解析的RNA结合蛋白结构域。随后,我们应用了经过调整的多类SVM(TMCSVM),随机森林(RF)和多类? 1 /? q-正规逻辑回归(MCRLR),用于基于一组全面的序列和结构特征对RNA结合蛋白域进行分析和分类。在这项研究中,我们比较了三种不同的最新预测器方法的预测准确性。从我们的结果来看,TMCSVM优于其他方法,并暗示TMCSVM作为促进RNA结合蛋白结构域的多类预测的有用工具的潜力。另一方面,MCRLR通过阐明特征对它们在RNA结合蛋白结构域亚类的预测准确性中的贡献的重要性,帮助我们提供一些生物学洞察力,以了解序列和结构在蛋白质-RNA相互作用中的作用。

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