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Machine Learning Methods for Exploring Sequence Determinants of 3D Genome Organization

Muyu Yang, Jian Ma

2022Journal of Molecular Biology29 citationsDOIOpen Access PDF

Abstract

In higher eukaryotic cells, chromosomes are folded inside the nucleus. Recent advances in whole-genome mapping technologies have revealed the multiscale features of 3D genome organization that are intertwined with fundamental genome functions. However, DNA sequence determinants that modulate the formation of 3D genome organization remain poorly characterized. In the past few years, predicting 3D genome organization based on DNA sequence features has become an active area of research. Here, we review the recent progress in computational approaches to unraveling important sequence elements for 3D genome organization. In particular, we discuss the rapid development of machine learning-based methods that facilitate the connections between DNA sequence features and 3D genome architectures at different scales. While much progress has been made in developing predictive models for revealing important sequence features for 3D genome organization, new research is urgently needed to incorporate multi-omic data and enhance model interpretability, further advancing our understanding of gene regulation mechanisms through the lens of 3D genome organization.

Topics & Concepts

GenomeInterpretabilityComputational biologyDNA sequencingGenomic organizationSequence (biology)BiologyWhole genome sequencingGenome projectDNAGeneGeneticsComputer scienceArtificial intelligenceGenomics and Chromatin DynamicsGenomics and Phylogenetic StudiesRNA and protein synthesis mechanisms
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