Depth Annotation of RNA Folds for Secondary Structure Motif Search

D. Ashlock, J. Schonfeld
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引用次数: 11

Abstract

The biological activity of RNA depends on the way it folds into secondary structures. Presented here is a framework for exploratory motif searching in the space of RNA secondary structures. A collection of RNA sequences, suspected of having a particular biological activity, is fragmented into overlapping pieces of a uniform size. Each piece is folded and the details of the fold are used to annotate the primary structure. Distances between annotated structures are computed. The distance matrix for the structures is then projected into the Euclidean plane for visualization and detection of clusters. A motif is taken to be a cluster in the two dimensional space. An instance of the framework is implemented for testing on a data set containing examples of the Iron Response Element in the following manner. Folding is performed with the Mfold package. A depth-of-fold that records stems and loops onto the primary sequence is used to annotate the pieces of RNA. Dynamic programming is used to find distances between pieces of annotated primary sequence. An evolutionary algorithm is then used to find a one-to-one mapping of pieces of RNA to points in the plane that has acceptable distortion of the distances found with dynamic programming. This one-to-one mapping is a form of non-linear projection that optimizes for fidelity of projected distances to the distances derived from the Iron Response Element data set.
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用于二级结构基序搜索的RNA折叠深度标注
RNA的生物活性取决于它折叠成二级结构的方式。本文提出了一个在RNA二级结构空间中进行探索性基序搜索的框架。一组被怀疑具有特定生物活性的RNA序列被分割成大小一致的重叠片段。每一块都被折叠,折叠的细节被用来注释主要结构。计算标注结构之间的距离。然后将结构的距离矩阵投影到欧几里得平面上,用于可视化和检测聚类。母题被认为是二维空间中的一个簇。在包含铁响应元素示例的数据集上,以以下方式实现该框架的一个实例进行测试。折叠是使用Mfold包执行的。将茎和环记录在初级序列上的折叠深度用于注释RNA片段。动态规划用于查找带注释的主序列片段之间的距离。然后使用一种进化算法来找到RNA片段到平面上点的一对一映射,该映射具有动态规划发现的可接受的距离扭曲。这种一对一的映射是一种非线性投影形式,优化了投影距离与铁响应元素数据集导出的距离的保真度。
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