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Predicting enhancers in mammalian genomes using supervised hidden Markov models

机译:使用监督隐马尔可夫模型预测哺乳动物基因组中的增强子

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摘要

BackgroundEukaryotic gene regulation is a complex process comprising the dynamic interaction of enhancers and promoters in order to activate gene expression. In recent years, research in regulatory genomics has contributed to a better understanding of the characteristics of promoter elements and for most sequenced model organism genomes there exist comprehensive and reliable promoter annotations. For enhancers, however, a reliable description of their characteristics and location has so far proven to be elusive. With the development of high-throughput methods such as ChIP-seq, large amounts of data about epigenetic conditions have become available, and many existing methods use the information on chromatin accessibility or histone modifications to train classifiers in order to segment the genome into functional groups such as enhancers and promoters. However, these methods often do not consider prior biological knowledge about enhancers such as their diverse lengths or molecular structure.
机译:背景真核基因调控是一个复杂的过程,包括增强子和启动子的动态相互作用以激活基因表达。近年来,对调节基因组学的研究有助于更好地理解启动子元件的特性,并且对于大多数测序模型生物基因组而言,存在全面而可靠的启动子注释。然而,对于增强剂,到目前为止,对增强剂的特性和位置的可靠描述已被证明是难以捉摸的。随着诸如ChIP-seq之类的高通量方法的发展,已经获得了大量有关表观遗传条件的数据,许多现有方法使用染色质可及性或组蛋白修饰的信息来训练分类器,以便将基因组划分为功能组。例如增强子和启动子。然而,这些方法通常不考虑关于增强子的先验生物学知识,例如它们的不同长度或分子结构。

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