包含假结的RNA二级结构快速预测算法

F. Tahi, S. Engelen, M. Régnier
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引用次数: 12

摘要

许多重要的RNA分子含有假结,二级结构的定义通常将其排除在外,主要是由于计算原因。然而,大多数现有的二级结构预测算法在结果和复杂性上都不令人满意,即使在不允许假节的情况下也是如此。我们提出了一种称为P-DCFold的算法,用于预测包括各种假结在内的RNA二级结构。它是基于比较的方法。使用“分而治之”的方法,从“可能性”越高到“可能性”越低,递归地搜索螺旋。这种允许限制搜索量的方法在只搜索非交错的螺旋时是可行的。因此,伪结在几个步骤中搜索,每个假结的螺旋在不同的步骤中被选择。P-DCFold已应用于tmRNA和RnaseP序列。在不到两秒钟的时间里,它们各自的二级结构,包括它们的假结,都被非常有效地恢复了。
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A fast algorithm for RNA secondary structure prediction including pseudoknots
Many important RNA molecules contain pseudoknots, which are generally excluded by the definition of the secondary structure, mainly for computational reasons. Still, most existing algorithms for secondary structure prediction are not satisfactory in results and complexities, even when pseudoknots are not allowed. We present an algorithm, called P-DCFold, for the prediction of RNA secondary structures including all kinds of pseudoknots. It is based on the comparative approach. The helices are searched recursively, from more "likely" to less "likely", using the "Divide and Conquer" approach. This approach, which allows to limit the amount of searching, is possible when only non-interleaved helices are searched for. The pseudoknots are therefore searched in several steps, each helix of the pseudoknot being selected in a different step. P-DCFold has been applied to tmRNA and RnaseP sequences. In less than two seconds, their respective secondary structures, including their pseudoknots, have been recovered very efficiently.
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