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Characterising RNA secondary structure space using information entropy

机译:利用信息熵表征RNA二级结构空间

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Comparative methods for RNA secondary structure prediction use evolutionary information from RNA alignments to increase prediction accuracy. The model is often described in terms of stochastic context-free grammars (SCFGs), which generate a probability distribution over secondary structures. It is, however, unclear how this probability distribution changes as a function of the input alignment. As prediction programs typically only return a single secondary structure, better characterisation of the underlying probability space of RNA secondary structures is of great interest. In this work, we show how to efficiently compute the information entropy of the probability distribution over RNA secondary structures produced for RNA alignments by a phylo-SCFG, and implement it for the PPfold model. We also discuss interpretations and applications of this quantity, including how it can clarify reasons for low prediction reliability scores. PPfold and its source code are available from http://birc.au.dk/software/ppfold/.
机译:RNA二级结构预测的比较方法使用来自RNA比对的进化信息来提高预测精度。该模型通常用随机上下文无关文法(SCFG)来描述,它在二级结构上生成概率分布。然而,目前尚不清楚这种概率分布是如何随输入对齐而变化的。由于预测程序通常只返回单一的二级结构,因此更好地描述RNA二级结构的潜在概率空间是非常有意义的。在这项工作中,我们展示了如何有效地计算由phylo-SCFG产生的RNA二级结构上概率分布的信息熵,并将其应用于PPfold模型。我们还讨论了这个数量的解释和应用,包括它如何澄清预测可靠性分数低的原因。PPfold及其源代码可从http://birc.au.dk/software/ppfold/.

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