Churkin Alexander, Weinbrand Lina, Barash Danny
Department of Computer Science, Ben-Gurion University, 653, Beer-Sheva, 84105, Israel.
Methods Mol Biol. 2015;1269:3-16. doi: 10.1007/978-1-4939-2291-8_1.
Determining the RNA secondary structure from sequence data by computational predictions is a long-standing problem. Its solution has been approached in two distinctive ways. If a multiple sequence alignment of a collection of homologous sequences is available, the comparative method uses phylogeny to determine conserved base pairs that are more likely to form as a result of billions of years of evolution than by chance. In the case of single sequences, recursive algorithms that compute free energy structures by using empirically derived energy parameters have been developed. This latter approach of RNA folding prediction by energy minimization is widely used to predict RNA secondary structure from sequence. For a significant number of RNA molecules, the secondary structure of the RNA molecule is indicative of its function and its computational prediction by minimizing its free energy is important for its functional analysis. A general method for free energy minimization to predict RNA secondary structures is dynamic programming, although other optimization methods have been developed as well along with empirically derived energy parameters. In this chapter, we introduce and illustrate by examples the approach of free energy minimization to predict RNA secondary structures.
通过计算预测从序列数据确定RNA二级结构是一个长期存在的问题。其解决方案主要有两种不同的方法。如果有一组同源序列的多序列比对,比较方法利用系统发育来确定保守碱基对,这些碱基对比偶然形成的更有可能是数十亿年进化的结果。对于单序列,已经开发了通过使用经验推导的能量参数来计算自由能结构的递归算法。这种通过能量最小化进行RNA折叠预测的后一种方法被广泛用于从序列预测RNA二级结构。对于大量的RNA分子,RNA分子的二级结构表明其功能,通过最小化其自由能进行计算预测对其功能分析很重要。自由能最小化预测RNA二级结构的一般方法是动态规划,尽管也开发了其他优化方法以及经验推导的能量参数。在本章中,我们通过示例介绍并说明自由能最小化预测RNA二级结构的方法。