染色质组织中的深度学习:从超分辨率显微镜到临床应用。

IF 6.2 2区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Mikhail Rotkevich, Carlotta Viana, Maria Victoria Neguembor, Maria Pia Cosma
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引用次数: 0

摘要

基因组的三维组织在调节基因表达、维持细胞身份和介导对环境线索的反应中起着关键作用。超分辨率显微镜和基因组技术的进步使人们对纳米级分辨率的染色质结构有了前所未有的了解。然而,这些技术产生的数据的复杂性和数量需要创新的计算策略来进行有效的分析和解释。在这篇综述中,我们探讨了深度学习在三维基因组组织分析中的变革作用,重点介绍了如何利用深度学习模型来增强染色质研究中的图像重建、分割和动态跟踪。我们概述了深度学习增强的方法,这些方法显着提高了图像的空间和时间分辨率,特别关注单分子定位显微镜。此外,我们还讨论了深度学习对分割精度的贡献,以及它在单细胞水平上用于解剖染色质动力学的单粒子跟踪中的应用。这些进步是由能够多模式整合和可解释性的框架补充的,将染色质生物学的界限推向临床诊断和个性化医疗。最后,我们讨论了基于染色质成像的深度学习模型在疾病分层、药物反应预测和早期癌症检测方面的新兴临床应用。我们还解决了数据稀疏性,模型可解释性的挑战,并提出了更高精度和影响的基因组功能解码的未来方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Deep learning in chromatin organization: from super-resolution microscopy to clinical applications.

Deep learning in chromatin organization: from super-resolution microscopy to clinical applications.

Deep learning in chromatin organization: from super-resolution microscopy to clinical applications.

Deep learning in chromatin organization: from super-resolution microscopy to clinical applications.

The 3D organization of the genome plays a critical role in regulating gene expression, maintaining cellular identity, and mediating responses to environmental cues. Advances in super-resolution microscopy and genomic technologies have enabled unprecedented insights into chromatin architecture at nanoscale resolution. However, the complexity and volume of data generated by these techniques necessitate innovative computational strategies for effective analysis and interpretation. In this review, we explore the transformative role of deep learning in the analysis of 3D genome organization, highlighting how deep learning models are being leveraged to enhance image reconstruction, segmentation, and dynamic tracking in chromatin research. We provide an overview of deep learning-enhanced methodologies that significantly improve spatial and temporal resolution of images, with a special focus on single-molecule localization microscopy. Furthermore, we discuss deep learning's contribution to segmentation accuracy, and its application in single-particle tracking for dissecting chromatin dynamics at the single-cell level. These advances are complemented by frameworks that enable multimodal integration and interpretability, pushing the boundaries of chromatin biology into clinical diagnostics and personalized medicine. Finally, we discuss emerging clinical applications where deep learning models, based on chromatin imaging, aid in disease stratification, drug response prediction, and early cancer detection. We also address the challenges of data sparsity, model interpretability and propose future directions to decode genome function with higher precision and impact.

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来源期刊
Cellular and Molecular Life Sciences
Cellular and Molecular Life Sciences 生物-生化与分子生物学
CiteScore
13.20
自引率
1.20%
发文量
546
审稿时长
1.0 months
期刊介绍: Journal Name: Cellular and Molecular Life Sciences (CMLS) Location: Basel, Switzerland Focus: Multidisciplinary journal Publishes research articles, reviews, multi-author reviews, and visions & reflections articles Coverage: Latest aspects of biological and biomedical research Areas include: Biochemistry and molecular biology Cell biology Molecular and cellular aspects of biomedicine Neuroscience Pharmacology Immunology Additional Features: Welcomes comments on any article published in CMLS Accepts suggestions for topics to be covered
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