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An Unbiased Adaptive Sampling Algorithm for the Exploration of RNA Mutational Landscapes under Evolutionary Pressure

机译:进化压力下探索RNA变异景观的无偏自适应采样算法

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The analysis of the impact of mutations on folding properties of RNAs is essential to decipher principles driving molecular evolution and to design new molecules. We recently introduced an algorithm called RNAmutants which samples RNA sequence-structure maps in polynomial time and space. However, since the mutation probabilities depend of the free energy of the structures, RNAmutants is bias toward G+C-rich regions of the mutational landscape. In this paper we introduce an unbiased adaptive sampling algorithm that enables RNAmutants to sample regions of the mutational landscape poorly covered by previous techniques. We applied the method to sample mutations in complete RNA sequence-structures maps of sizes up to 40 nucleotides. Our results indicate that the G+C-content has a strong influence on the evolutionary accessible structural ensembles. In particular, we show that low G+C-contents favor the apparition of internal loops, while high G+C-contents reduce the size of the evolutionary accessible mutational landscapes.
机译:突变对RNA折叠特性的影响的分析对于破译驱动分子进化的原理和设计新分子至关重要。我们最近推出了一种称为RNA突变的算法,该算法可在多项式时空中对RNA序列结构图进行采样。但是,由于突变概率取决于结构的自由能,因此RNA突变体偏向于突变景观中富含G + C的区域。在本文中,我们介绍了一种无偏自适应采样算法,该算法可使RNA突变体对以前技术难以覆盖的突变景观区域进行采样。我们将这种方法应用于大小不超过40个核苷酸的完整RNA序列结构图中的突变样本。我们的结果表明,G + C含量对进化可及的结构体有很强的影响。特别是,我们显示出低的G + C含量有利于内部循环的出现,而高的G + C含量则减小了可进化的进化突变景观的大小。

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