Computation intelligence method to find generic non-coding RNA search models

Jennifer A. Smith
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引用次数: 2

Abstract

Fairly effective methods exist for finding new non-coding RNA genes using search models based on known families of ncRNA genes (for example covariance models). However, these models only find new members of the existing families and are not useful in finding potential members of novel ncRNA families. Other problems with family-specific search include large processing requirements, ambiguity in defining which sequences form a family and lack of sufficient numbers of known sequences to properly estimate model parameters. An ncRNA search model is proposed which includes a collection of non-overlapping RNA hairpin structure covariance models. The hairpin models are chosen from a hairpin-model list compiled from many families in the Rfam non-coding RNA families database. The specific hairpin models included and the overall score threshold for the search model is determined through the use of a genetic algorithm.
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通用非编码RNA搜索模型的计算智能方法
已有相当有效的方法利用基于已知ncRNA基因家族的搜索模型(如协方差模型)来寻找新的非编码RNA基因。然而,这些模型只能找到现有家族的新成员,而不能用于寻找新的ncRNA家族的潜在成员。特定家族搜索的其他问题包括处理要求大,定义哪些序列构成家族的模糊性以及缺乏足够数量的已知序列来正确估计模型参数。提出了一种包含非重叠RNA发夹结构协方差模型的ncRNA搜索模型。发夹模型是从Rfam非编码RNA家族数据库中许多家族的发夹模型列表中选择的。通过遗传算法确定具体的发夹模型和搜索模型的总得分阈值。
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