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info-gibbs: a motif discovery algorithm that directly optimizes information content during sampling

机译:info-gibbs:主题发现算法,可在采样过程中直接优化信息内容

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Motivation: Discovering cis-regulatory elements in genome sequence remains a challenging issue. Several methods rely on the optimization of some target scoring function. The information content (IC) or relative entropy of the motif has proven to be a good estimator of transcription factor DNA binding affinity. However, these information-based metrics are usually used as a posteriori statistics rather than during the motif search process itself.Results: We introduce here info-gibbs, a Gibbs sampling algorithm that efficiently optimizes the IC or the log-likelihood ratio (LLR) of the motif while keeping computation time low. The method compares well with existing methods like MEME, BioProspector, Gibbs or GAME on both synthetic and biological datasets. Our study shows that motif discovery techniques can be enhanced by directly focusing the search on the motif IC or the motif LLR.
机译:动机:发现基因组序列中的顺式调控元件仍然是一个具有挑战性的问题。有几种方法依赖于某些目标评分功能的优化。事实证明,基序的信息含量(IC)或相对熵是转录因子DNA结合亲和力的良好估计。但是,这些基于信息的度量通常用作后验统计,而不是在基序搜索过程中使用。结果:我们在此介绍info-gibbs,这是一种Gibbs采样算法,可有效优化IC或对数似然比(LLR)同时保持较低的计算时间。该方法与合成和生物学数据集上的现有方法(如MEME,BioProspector,Gibbs或GAME)相比较很好。我们的研究表明,可以通过直接将搜索集中在主题IC或主题LLR上来增强主题发现技术。

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