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Predicting RNA secondary structure by the comparative approach: how to select the homologous sequences

机译:通过比较方法预测RNA二级结构:如何选择同源序列

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Background The secondary structure of an RNA must be known before the relationship between its structure and function can be determined. One way to predict the secondary structure of an RNA is to identify covarying residues that maintain the pairings (Watson-Crick, Wobble and non-canonical pairings). This "comparative approach" consists of identifying mutations from homologous sequence alignments. The sequences must covary enough for compensatory mutations to be revealed, but comparison is difficult if they are too different. Thus the choice of homologous sequences is critical. While many possible combinations of homologous sequences may be used for prediction, only a few will give good structure predictions. This can be due to poor quality alignment in stems or to the variability of certain sequences. This problem of sequence selection is currently unsolved. Results This paper describes an algorithm, SSCA , which measures the suitability of sequences for the comparative approach. It is based on evolutionary models with structure constraints, particularly those on sequence variations and stem alignment. We propose three models, based on different constraints on sequence alignments. We show the results of the SSCA algorithm for predicting the secondary structure of several RNAs. SSCA enabled us to choose sets of homologous sequences that gave better predictions than arbitrarily chosen sets of homologous sequences. Conclusion SSCA is an algorithm for selecting combinations of RNA homologous sequences suitable for secondary structure predictions with the comparative approach.
机译:背景技术必须先知道RNA的二级结构,然后才能确定其结构与功能之间的关系。预测RNA二级结构的一种方法是鉴定维持配对的共变残基(Watson-Crick,Wobble和非规范配对)。这种“比较方法”包括从同源序列比对中鉴定突变。序列必须足够变短才能显示出补偿性突变,但是如果它们之间的差异太大,则很难进行比较。因此,同源序列的选择是至关重要的。虽然同源序列的许多可能组合可以用于预测,但是只有少数将给出良好的结构预测。这可能是由于茎中的质量比对不良或某些序列的变异性所致。目前尚未解决序列选择的问题。结果本文描述了一种算法SSCA,该算法可测量序列是否适合比较方法。它基于具有结构约束的进化模型,尤其是那些基于序列变异和茎比对的模型。我们基于对序列比对的不同约束,提出了三个模型。我们展示了SSCA算法预测几种RNA二级结构的结果。 SSCA使我们能够选择比任意选择的同源序列集更好的预测的同源序列集。结论SSCA是一种使用比较方法选择适合二级结构预测的RNA同源序列组合的算法。

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