RNA Biology and Bioinformatics, Institute of Biomedical Genetics, University of Stuttgart, Stuttgart, Germany.
Methods Mol Biol. 2024;2726:125-141. doi: 10.1007/978-1-0716-3519-3_6.
Analysis of the folding space of RNA generally suffers from its exponential size. With classified Dynamic Programming algorithms, it is possible to alleviate this burden and to analyse the folding space of RNA in great depth. Key to classified DP is that the search space is partitioned into classes based on an on-the-fly computed feature. A class-wise evaluation is then used to compute class-wide properties, such as the lowest free energy structure for each class, or aggregate properties, such as the class' probability. In this paper we describe the well-known shape and hishape abstraction of RNA structures, their power to help better understand RNA function and related methods that are based on these abstractions.
RNA 的折叠空间分析通常受到其指数大小的限制。通过分类动态规划算法,可以减轻这种负担,并深入分析 RNA 的折叠空间。分类 DP 的关键是根据实时计算的特征将搜索空间划分为不同的类别。然后使用类别评估来计算类别的属性,例如每个类别的最低自由能结构,或聚合属性,例如类的概率。在本文中,我们描述了 RNA 结构的著名形状和 hishape 抽象及其帮助更好地理解 RNA 功能的作用,以及基于这些抽象的相关方法。