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Modeling Gene Transcriptional Regulation by Means of Hyperplanes Genetic Clustering

机译:利用超平面遗传聚类建模基因转录调控

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In the wide context of biological processes regulating gene expression, transcriptional regulation driven by epigenetic activity is among the most effective and intriguing ones. Understanding the complex language of histone modifications and transcription factor bindings is an appealing yet hard task, given the large number of involved features and the specificity of their combinatorial behavior across genes. Genome-wide regression models for predicting mRNA abundance quantifications from epigenetic activity are interesting in an exploratory framework, but their effectiveness is limited as the relative predictive power of epigenetic features is hard to discern at such level of resolution. On the other hand, an investigative analysis cannot rely on prior biological knowledge to perform sensible grouping of genes and locally study epigenetic regulative processes. In this context, we shaped the “gene stratification problem” as a form of epigenetic feature-based hyperplanes clustering, and proposed a genetic algorithm to approach this task, aiming at performing datadriven partitioning of the whole set of protein coding genes of an organism based on the characteristic relation between their expression and the associated epigenetic activity. We observed how, not only the hyperplanes described by the resulting partitions significantly differ from each other, but also how different epigenetic features are of diverse importance in predicting gene expression within each partition. This demonstrates the validity and biological interest of the proposed computational method and the obtained results.
机译:在调节基因表达的生物学过程的广泛背景下,由表观遗传活性驱动的转录调节是最有效和最有趣的方法之一。鉴于大量涉及的特征及其跨基因的组合行为的特异性,了解组蛋白修饰和转录因子结合的复杂语言是一项引人入胜却又艰巨的任务。在探索框架中,用于从表观遗传学活动预测mRNA丰度定量的全基因组回归模型很有趣,但由于在这种分辨率水平上难以辨别表观遗传学特征的相对预测能力,因此其有效性受到限制。另一方面,调查分析不能依靠先验的生物学知识来进行合理的基因分组和局部研究表观遗传调控过程。在这种情况下,我们将“基因分层问题”塑造为基于表观遗传特征的超平面聚类的一种形式,并提出了一种遗传算法来实现这一任务,旨在对基于生物的蛋白质编码基因的整个集合进行数据驱动的划分。它们的表达与相关表观遗传活性之间的特征关系。我们不仅观察到了由此产生的分区所描述的超平面之间的显着差异,而且还观察到不同的表观遗传学特征在预测每个分区内的基因表达中如何具有不同的重要性。这证明了所提出的计算方法和所获得的结果的有效性和生物学意义。

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