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aliFreeFold: an alignment-free approach to predict secondary structure from homologous RNA sequences

机译:AlifReefold:一种可对准的方法来预测来自同源RNA序列的二次结构

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Motivation: Predicting the conserved secondary structure of homologous ribonucleic acid (RNA) sequences is crucial for understanding RNA functions. However, fast and accurate RNA structure prediction is challenging, especially when the number and the divergence of homologous RNA increases. To address this challenge, we propose aliFreeFold, based on a novel alignment-free approach which computes a representative structure from a set of homologous RNA sequences using sub-optimal secondary structures generated for each sequence. It is based on a vector representation of sub-optimal structures capturing structure conservation signals by weighting structural motifs according to their conservation across the sub-optimal structures.
机译:动机:预测同源核糖核酸(RNA)序列的保守的二级结构对于了解RNA功能至关重要。 然而,快速和准确的RNA结构预测是具有挑战性的,特别是当同源RNA的数量和差异增加时。 为了解决这一挑战,我们提出了基于一种新的对准方法,该方法基于使用每种序列产生的次优二次结构来计算来自一组同源RNA序列的代表性结构。 它基于通过在次最优结构上的节省的保护基础上捕获结构守恒信号的次优结构的矢量表示。

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