A grammar based methodology for structural motif finding in ncRNA database search.

Daniel Quest, William Tapprich, Hesham Ali
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引用次数: 0

Abstract

In recent years, sequence database searching has been conducted through local alignment heuristics, pattern-matching, and comparison of short statistically significant patterns. While these approaches have unlocked many clues as to sequence relationships, they are limited in that they do not provide context-sensitive searching capabilities (e.g. considering pseudoknots, protein binding positions, and complementary base pairs). Stochastic grammars (hidden Markov models HMMs and stochastic context-free grammars SCFG) do allow for flexibility in terms of local context, but the context comes at the cost of increased computational complexity. In this paper we introduce a new grammar based method for searching for RNA motifs that exist within a conserved RNA structure. Our method constrains computational complexity by using a chain of topology elements. Through the use of a case study we present the algorithmic approach and benchmark our approach against traditional methods.

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基于语法的ncRNA数据库结构基序查找方法。
近年来,序列数据库搜索主要通过局部比对启发式、模式匹配、短模式比较等方式进行。虽然这些方法已经解开了许多关于序列关系的线索,但它们的局限性在于它们不提供上下文敏感的搜索功能(例如考虑假结,蛋白质结合位置和互补碱基对)。随机语法(隐马尔可夫模型hmm和随机上下文无关语法SCFG)确实允许在局部上下文方面具有灵活性,但是上下文的代价是增加了计算复杂性。在本文中,我们介绍了一种新的基于语法的方法来搜索存在于保守RNA结构中的RNA基序。我们的方法通过使用拓扑元素链来限制计算复杂度。通过案例研究,我们提出了算法方法,并将我们的方法与传统方法进行了比较。
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