基于概率分割模型的调控元素检测。

H J Bussemaker, H Li, E D Siggia
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引用次数: 0

摘要

对于基因组完全测序的生物体,全基因组mRNA表达数据的可用性提供了一个独特的数据集,从中可以破译转录是如何由基因的上游控制区调节的。提出了一种将DNA序列分解成最可能的基序或词“字典”的新算法。词的识别是基于一个概率分割模型,在这个模型中,长词的重要性是由不同长度的短词的频率推断出来的。这消除了对一组单独的参考数据来定义概率的需要,因此全基因组应用是可能的。在酵母基因组的6000个上游调控区域中,从1200个字典中筛选出的500个最强的基序与顺式调控元件数据库的显著性水平为15个标准差。对一系列基因的分析,例如在产孢过程中上调的基因,除了确定先前已知的位点外,还揭示了许多新的假定的调控位点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regulatory element detection using a probabilistic segmentation model.

The availability of genome-wide mRNA expression data for organisms whose genome is fully sequenced provides a unique data set from which to decipher how transcription is regulated by the upstream control region of a gene. A new algorithm is presented which decomposes DNA sequence into the most probable "dictionary" of motifs or words. Identification of words is based on a probabilistic segmentation model in which the significance of longer words is deduced from the frequency of shorter words of various length. This eliminates the need for a separate set of reference data to define probabilities, and genome-wide applications are therefore possible. For the 6,000 upstream regulatory regions in the yeast genome, the 500 strongest motifs from a dictionary of size 1,200 match at a significance level of 15 standard deviations to a database of cis-regulatory elements. Analysis of sets of genes such as those up-regulated during sporulation reveals many new putative regulatory sites in addition to identifying previously known sites.

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