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FlexStem: improving predictions of RNA secondary structures with pseudoknots by reducing the search space

机译:FlexStem:通过减少搜索空间来改善带有假结的RNA二级结构的预测

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Motivation: RNA secondary structures with pseudoknots are often predicted by minimizing free energy, which is proved to be NP-hard. Due to kinetic reasons the real RNA secondary structure often has local instead of global minimum free energy. This implies that we may improve the performance of RNA secondary structure prediction by taking kinetics into account and minimize free energy in a local area.Result: we propose a novel algorithm named FlexStem to predict RNA secondary structures with pseudoknots. Still based on MFE criterion, FlexStem adopts comprehensive energy models that allow complex pseudoknots. Unlike classical thermodynamic methods, our approach aims to simulate the RNA folding process by successive addition of maximal stems, reducing the search space while maintaining or even improving the prediction accuracy. This reduced space is constructed by our maximal stem strategy and stem-adding rule induced from elaborate statistical experiments on real RNA secondary structures. The strategy and the rule also reflect the folding characteristic of RNA from a new angle and help compensate for the deficiency of merely relying on MFE in RNA structure prediction. We validate FlexStem by applying it to tRNAs, 5SrRNAs and a large number of pseudoknotted structures and compare it with the well-known algorithms such as RNAfold, PKNOTS, PknotsRG, HotKnots and ILM according to their overall sensitivities and specificities, as well as positive and negative controls on pseudoknots. The results show that FlexStem significantly increases the prediction accuracy through its local search strategy.
机译:动机:通常通过最小化自由能来预测带有假结的RNA二级结构,事实证明这是NP-hard的。由于动力学原因,真正的RNA二级结构通常具有局部而不是全局的最小自由能。这暗示着我们可以通过考虑动力学来改善RNA二级结构的预测性能,并最大限度地减少局部区域的自由能。结果:我们提出了一种名为FlexStem的新型算法,可以预测带有假结的RNA二级结构。 FlexStem仍基于MFE标准,采用了全面的能量模型,允许复杂的假结。与经典的热力学方法不同,我们的方法旨在通过连续添加最大茎来模拟RNA折叠过程,从而在保持甚至提高预测准确性的同时减少搜索空间。这种减少的空间是由我们的最大茎策略和茎添加规则构造而成的,该规则是通过对真实RNA二级结构进行详尽的统计实验得出的。该策略和规则也从一个新的角度反映了RNA的折叠特性,有助于弥补在RNA结构预测中仅依赖MFE的不足。我们通过将FlexStem应用于tRNA,5SrRNA和大量假结结构来对其进行验证,并根据其整体敏感性和特异性以及阳性和特异性将其与RNAfold,PKNOTS,PknotsRG,HotKnots和ILM等著名算法进行比较假结的负面控制。结果表明,FlexStem通过其本地搜索策略显着提高了预测准确性。

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