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Opening up the blackbox: an interpretable deep neural network-based classifier for cell-type specific enhancer predictions

机译:打开黑匣子:基于可解释的深度神经网络的分类器用于细胞类型特定的增强子预测

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摘要

BackgroundGene expression is mediated by specialized cis-regulatory modules (CRMs), the most prominent of which are called enhancers. Early experiments indicated that enhancers located far from the gene promoters are often responsible for mediating gene transcription. Knowing their properties, regulatory activity, and genomic targets is crucial to the functional understanding of cellular events, ranging from cellular homeostasis to differentiation. Recent genome-wide investigation of epigenomic marks has indicated that enhancer elements could be enriched for certain epigenomic marks, such as, combinatorial patterns of histone modifications.
机译:BackgroundGene表达是由专门的顺式调控模块(CRM)介导的,其中最突出的称为增强子。早期实验表明,远离基因启动子的增强子通常负责介导基因转录。了解它们的特性,调控活性和基因组靶点对于从细胞稳态到分化等细胞事件的功能性理解至关重要。最近的全基因组研究表观基因组标记表明,增强子元素可以丰富某些表观基因组标记,例如组蛋白修饰的组合模式。

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