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Measuring covariation in RNA alignments: physical realism improves information measures

机译:测量RNA比对中的协变:真实感可以改善信息量度

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Motivation: The importance of non-coding RNAs is becoming increasingly evident, and often the function of these molecules depends on the structure. It is common to use alignments of related RNA sequences to deduce the consensus secondary structure by detecting patterns of co-evolution. A central part of such an analysis is to measure covariation between two positions in an alignment. Here, we rank various measures ranging from simple mutual information to more advanced covariation measures. Results: Mutual information is still used for secondary structure prediction, but the results of this study indicate which measures are useful. Incorporating more structural information by considering e.g. indels and stacking improves accuracy, suggesting that physically realistic measures yield improved predictions. This can be used to improve both current and future programs for secondary structure prediction. The best measure tested is the RNAalifold covariation measure modified to include stacking.
机译:动机:非编码RNA的重要性日益明显,这些分子的功能通常取决于结构。通常使用相关RNA序列的比对通过检测共进化模式来推断共有二级结构。这种分析的中心部分是测量路线中两个位置之间的协方差。在这里,我们对从简单的互信息到更高级的协变度量的各种度量进行排名。结果:互信息仍用于二级结构预测,但这项研究的结果表明哪些措施是有用的。通过考虑例如合并更多的结构信息插入/插入可以提高准确性,这表明物理上可行的量度可以提高预测效果。这可以用于改进当前和将来的二级结构预测程序。测试的最佳度量是将RNAalifold协方差度量修改为包括叠加。

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