MISAE:一种新的调控基序提取方法。

Zhaohui Sun, Jingyi Yang, Jitender S Deogun
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引用次数: 0

摘要

识别共调控基因的调控基序对于理解调控机制至关重要。然而,从一个共调控基因家族的上游非编码DNA序列的给定数据集中自动提取调控基序是困难的,因为调控基序通常是微妙和不精确的。数据集的损坏使这个问题进一步复杂化。提出了一种允许错匹配的概率后缀树基序提取方法(MISAE)。它结合了允许不匹配的概率后缀树(一种概率模型)和局部预测来提取调控基序。所提出的方法在15个共同调节的基因家族中进行了测试,并与其他最先进的方法进行了比较。此外,MISAE在“损坏的”数据集上表现良好。它能够从包含真实基序的序列少于四分之一的“损坏”数据集中提取基序。
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MISAE: a new approach for regulatory motif extraction.

The recognition of regulatory motifs of co-regulated genes is essential for understanding the regulatory mechanisms. However, the automatic extraction of regulatory motifs from a given data set of the upstream non-coding DNA sequences of a family of co-regulated genes is difficult because regulatory motifs are often subtle and inexact. This problem is further complicated by the corruption of the data sets. In this paper, a new approach called Mismatch-allowed Probabilistic Suffix Tree Motif Extraction (MISAE) is proposed. It combines the mismatch-allowed probabilistic suffix tree that is a probabilistic model and local prediction for the extraction of regulatory motifs. The proposed approach is tested on 15 co-regulated gene families and compares favorably with other state-of-the-art approaches. Moreover, MISAE performs well on "corrupted" data sets. It is able to extract the motif from a "corrupted" data set with less than one fourth of the sequences containing the real motif.

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