清除和扩展大尺度组织的子衍射成像

Yawen Zhang, Weiyue Wu, Hongdou Shen, Juan Xu, Qing Jiang*, Xiaodong Han* and Pingqiang Cai*, 
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引用次数: 0

摘要

在生理学、病理学和药物研究等各个领域,分子鉴定中对高空间分辨率的追求至关重要。超分辨显微镜已经超越了阿贝衍射极限,取得了长足进步,但它依赖于复杂的设备,并受到处理样本量的限制。膨胀显微镜这一新兴技术拓宽了亚衍射成像的范围。它通过化学方法大规模保存组织,并将其线性放大 4-20 倍,从而实现超分辨率观察。本综述首先探讨了组织清除的基本概念和该领域的最新方法。然后深入探讨了膨胀显微镜的核心原理,涵盖了一系列方案。综述重点介绍了在增强分辨率、提高标记效率和确保各向同性组织扩张方面取得的进展。最后,综述对膨胀显微镜的发展前景提出了见解。它强调了机器学习在提高图像质量和自主提取数据方面的潜在作用,这将彻底改变我们可视化和理解生物组织的方式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Subdiffraction Imaging of Cleared and Expanded Large-Scale Tissues

The quest for high spatial resolution in molecular identification is critical across various domains, including physiology, pathology, and pharmaceutical research. Super-resolution microscopy has made strides by surpassing the Abbe diffraction limit, but it relies on sophisticated equipment and is limited by the sample size to handle. Expansion microscopy, an emerging technique, has broadened the scope of subdiffraction imaging. It chemically preserves tissues at a large scale and physically enlarges them 4–20 times linearly, enabling super-resolution observation. This review begins by exploring the foundational concepts of tissue clearing and the latest methodologies in the field. It then delves into the core tenets of expansion microscopy, covering a range of protocols. The review spotlights advancements in enhancing resolution, improving labeling efficiency, and ensuring isotropic tissue expansion. Finally, the review offers insights into the prospective evolution of expansion microscopy. It emphasizes the potential role of machine learning in refining image quality and in the autonomous extraction of data, which could revolutionize the way we visualize and understand biological tissues.

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来源期刊
Chemical & Biomedical Imaging
Chemical & Biomedical Imaging 化学与生物成像-
CiteScore
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期刊介绍: Chemical & Biomedical Imaging is a peer-reviewed open access journal devoted to the publication of cutting-edge research papers on all aspects of chemical and biomedical imaging. This interdisciplinary field sits at the intersection of chemistry physics biology materials engineering and medicine. The journal aims to bring together researchers from across these disciplines to address cutting-edge challenges of fundamental research and applications.Topics of particular interest include but are not limited to:Imaging of processes and reactionsImaging of nanoscale microscale and mesoscale materialsImaging of biological interactions and interfacesSingle-molecule and cellular imagingWhole-organ and whole-body imagingMolecular imaging probes and contrast agentsBioluminescence chemiluminescence and electrochemiluminescence imagingNanophotonics and imagingChemical tools for new imaging modalitiesChemical and imaging techniques in diagnosis and therapyImaging-guided drug deliveryAI and machine learning assisted imaging
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