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Using sequence signatures and kink-turn motifs in knowledge-based statistical potentials for RNA structure prediction

机译:在基于知识的统计潜力中使用序列签名和转折基序进行RNA结构预测

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摘要

Kink turns are widely occurring motifs in RNA, located in internal loops and associated with many biological functions including translation, regulation and splicing. The associated sequence pattern, a 3-nt bulge and G-A, A-G base-pairs, generates an angle of ∼50° along the helical axis due to A-minor interactions. The conserved sequence and distinct secondary structures of kink-turns (k-turn) suggest computational folding rules to predict k-turn-like topologies from sequence. Here, we annotate observed k-turn motifs within a non-redundant RNA dataset based on sequence signatures and geometrical features, analyze bending and torsion angles, and determine distinct knowledge-based potentials with and without k-turn motifs. We apply these scoring potentials to our RAGTOP (RNA-As-Graph-Topologies) graph sampling protocol to construct and sample coarse-grained graph representations of RNAs from a given secondary structure. We present graph-sampling results for 35 RNAs, including 12 k-turn and 23 non k-turn internal loops, and compare the results to solved structures and to RAGTOP results without special k-turn potentials. Significant improvements are observed with the updated scoring potentials compared to the k-turn-free potentials. Because k-turns represent a classic example of sequence/structure motif, our study suggests that other such motifs with sequence signatures and unique geometrical features can similarly be utilized for RNA structure prediction and design.
机译:扭结转弯是RNA中广泛存在的基序,位于内部环中,并与许多生物学功能(包括翻译,调控和剪接)相关。由于A-次要相互作用,相关的序列模式(一个3-nt凸起和G-A,A-G碱基对)沿螺旋轴产生约50°的角度。拐弯(k-turn)的保守序列和独特的二级结构建议了计算折叠规则,以根据序列预测k-turn-like拓扑。在这里,我们基于序列特征和几何特征注释非冗余RNA数据集中观察到的k转向基元,分析弯曲和扭转角,并确定具有和不具有k转向基元的基于知识的独特潜力。我们将这些得分潜力应用到我们的RAGTOP(RNA-As-Graph-Topologies)图采样方案中,以从给定的二级结构构建和采样RNA的粗粒度图表示。我们提供了35个RNA的图形采样结果,包括12 k转和23非k转内部环,并将结果与​​已解决的结构和RAGTOP结果进行了比较,而没有特殊的k转潜力。与无k圈潜力相比,更新的得分潜力可观察到显着改善。因为k圈代表序列/结构基序的经典示例,所以我们的研究表明,具有序列签名和独特几何特征的其他此类基序可以类似地用于RNA结构预测和设计。

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