预测三维基因组组织的机器学习和深度学习方法

Brydon P. G. Wall, My Nguyen, J. Chuck Harrell, Mikhail G. Dozmorov
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引用次数: 0

摘要

三维(3D)染色质相互作用,如增强子-启动子相互作用(EPIs)、环路、拓扑关联区(TADs)和A/B区,通过调控基因表达在广泛的细胞过程中发挥着关键作用。染色质构象捕获技术的最新发展使得各种三维结构的全基因组剖析成为可能,即使是单细胞也不例外。然而,由于技术、工具和数据分辨率的差异,目前的三维结构目录仍然不完整、不可靠。机器学习方法已成为获取缺失的三维相互作用和/或提高分辨率的替代方法。这类方法通常使用基因组注释数据(ChIP-seq、DNAse-seq 等)、DNA 测序信息(k-mers、转录因子结合位点(TFBS)motifs)和其他基因组属性来学习基因组特征与染色质相互作用之间的关联。在这篇综述中,我们讨论了预测三种三维相互作用(EPIs、染色质相互作用、TAD边界)的计算工具,并分析了它们的优缺点。我们还指出了三维相互作用计算预测的障碍,并提出了未来的研究方向。
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Machine and deep learning methods for predicting 3D genome organization
Three-Dimensional (3D) chromatin interactions, such as enhancer-promoter interactions (EPIs), loops, Topologically Associating Domains (TADs), and A/B compartments play critical roles in a wide range of cellular processes by regulating gene expression. Recent development of chromatin conformation capture technologies has enabled genome-wide profiling of various 3D structures, even with single cells. However, current catalogs of 3D structures remain incomplete and unreliable due to differences in technology, tools, and low data resolution. Machine learning methods have emerged as an alternative to obtain missing 3D interactions and/or improve resolution. Such methods frequently use genome annotation data (ChIP-seq, DNAse-seq, etc.), DNA sequencing information (k-mers, Transcription Factor Binding Site (TFBS) motifs), and other genomic properties to learn the associations between genomic features and chromatin interactions. In this review, we discuss computational tools for predicting three types of 3D interactions (EPIs, chromatin interactions, TAD boundaries) and analyze their pros and cons. We also point out obstacles of computational prediction of 3D interactions and suggest future research directions.
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