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Bi-objective integer programming for RNA secondary structure prediction with pseudoknots

机译:双目标整数规划用于假结RNA二级结构预测

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RNA structure prediction is an important field in bioinformatics, and numerous methods and tools have been proposed. Pseudoknots are specific motifs of RNA secondary structures that are difficult to predict. Almost all existing methods are based on a single model and return one solution, often missing the real structure. An alternative approach would be to combine different models and return a (small) set of solutions, maximizing its quality and diversity in order to increase the probability that it contains the real structure. We propose here an original method for predicting RNA secondary structures with pseudoknots, based on integer programming. We developed a generic bi-objective integer programming algorithm allowing to return optimal and sub-optimal solutions optimizing simultaneously two models. This algorithm was then applied to the combination of two known models of RNA secondary structure prediction, namely MEA and MFE. The resulting tool, called BiokoP, is compared with the other methods in the literature. The results show that the best solution (structure with the highest F1-score) is, in most cases, given by BiokoP. Moreover, the results of BiokoP are homogeneous, regardless of the pseudoknot type or the presence or not of pseudoknots. Indeed, the F1-scores are always higher than 70% for any number of solutions returned. The results obtained by BiokoP show that combining the MEA and the MFE models, as well as returning several optimal and several sub-optimal solutions, allow to improve the prediction of secondary structures. One perspective of our work is to combine better mono-criterion models, in particular to combine a model based on the comparative approach with the MEA and the MFE models. This leads to develop in the future a new multi-objective algorithm to combine more than two models. BiokoP is available on the EvryRNA platform: https://EvryRNA.ibisc.univ-evry.fr .
机译:RNA结构预测是生物信息学中的一个重要领域,已经提出了许多方法和工具。假结是RNA二级结构的特定基序,很难预测。几乎所有现有方法都基于单一模型并返回一个解决方案,通常缺少实际结构。一种替代方法是组合不同的模型并返回一组(少量)解决方案,以最大化其质量和多样性,从而增加其包含实际结构的可能性。我们在这里提出一种基于整数编程来预测带有假结的RNA二级结构的原始方法。我们开发了一种通用的双目标整数规划算法,允许同时返回优化两个模型的最优和次优解决方案。然后将该算法应用于两个已知的RNA二级结构预测模型MEA和MFE的组合。所产生的称为BiokoP的工具与文献中的其他方法进行了比较。结果表明,大多数情况下,BiokoP给出了最佳解决方案(具有最高F1分数的结构)。此外,BiokoP的结果是均质的,无论假结类型或假结的存在与否。实际上,对于任何返回的解决方案,F1分数始终高于70%。 BiokoP获得的结果表明,结合MEA和MFE模型,以及返回几个最优和几个次优解决方案,可以改善对二级结构的预测。我们工作的一个观点是将更好的单一标准模型结合起来,特别是将基于比较方法的模型与MEA和MFE模型结合起来。这导致将来开发一种新的多目标算法,以结合两个以上的模型。 BiokoP在EvryRNA平台上可用:https://EvryRNA.ibisc.univ-evry.fr。

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