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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >LOGOS: A MODULAR BAYESIAN MODEL FOR DE NOVO MOTIF DETECTION
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LOGOS: A MODULAR BAYESIAN MODEL FOR DE NOVO MOTIF DETECTION

机译:徽标:用于从头检测的模块化贝叶斯模型

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摘要

The complexity of the global organization and internal structure of motifs in higher eukaryotic organisms raises significant challenges for motif detection techniques. To achieve successful de novo motif detection, it is necessary to model the complex dependencies within and among motifs and to incorporate biological prior knowledge. In this paper, we present LOGOS, an integrated LOcal and GlObal motif Sequence model for biopolymer sequences, which provides a principled framework for developing, modularizing, extending and computing expressive motif models for complex biopolymer sequence analysis. LOGOS consists of two interacting submodels: HMDM, a local alignment model capturing biological prior knowledge and positional dependency within the motif local structure; and HMM, a global motif distribution model modeling frequencies and dependencies of motif occurrences. Model parameters can be fit using training motifs within an empirical Bayesian framework. A variational EM algorithm is developed for de novo motif detection. LOGOS improves over existing models that ignore biological priors and dependencies in motif structures and motif occurrences, and demonstrates superior performance on both semi-realistic test data and cis-regulatory sequences from yeast and Drosophila genomes with regard to sensitivity, specificity, flexibility and extensibility.
机译:高等真核生物中基序的全球组织和内部结构的复杂性对基序检测技术提出了重大挑战。为了成功完成从头开始的主题检测,有必要对主题内部和主题之间的复杂依赖性进行建模,并纳入生物学先验知识。在本文中,我们介绍了LOGOS,这是一个针对生物聚合物序列的集成LOcal和GlObal基序序列模型,它为开发,模块化,扩展和计算用于复杂生物聚合物序列分析的表达基序模型提供了原理性框架。 LOGOS由两个相互作用的子模型组成:HMDM,一个局部比对模型,捕获生物学先验知识和基序局部结构内的位置依赖性;和HMM,这是一个全局的主题分布模型,用于建模主题发生频率和相关性。可以使用经验贝叶斯框架内的训练图案来拟合模型参数。开发了用于从头图案检测的变分EM算法。 LOGOS对现有模型进行了改进,该模型忽略了生物学先验以及对基序结构和基序出现的依赖性,并且在半真实性测试数据和来自酵母和果蝇基因组的顺式调控序列方面,在灵敏度,特异性,灵活性和可扩展性方面均表现出优异的性能。

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