Department of Molecular Pathology, Graduate School of Medicine, The University of Tokyo, 7-3-1 Hongo, Bunkyo-ku, Tokyo, 113-0033, Japan.
Laboratory of Medical Statistics, Pharmaceutical Science, Faculty of Pharmacy, Kobe Pharmaceutical University, 4-19-1 Motoyama-Kitamachi, Higashi-Nada-ku, Kobe, Hyogo, 658-8558, Japan.
Nat Commun. 2022 Sep 12;13(1):5239. doi: 10.1038/s41467-022-32848-2.
The blood and lymphatic vasculature networks are not yet fully understood even in mouse because of the inherent limitations of imaging systems and quantification methods. This study aims to evaluate the usefulness of the tissue-clearing technology for visualizing blood and lymphatic vessels in adult mouse. Clear, unobstructed brain/body imaging cocktails and computational analysis (CUBIC) enables us to capture the high-resolution 3D images of organ- or area-specific vascular structures. To evaluate these 3D structural images, signals are first classified from the original captured images by machine learning at pixel base. Then, these classified target signals are subjected to topological data analysis and non-homogeneous Poisson process model to extract geometric features. Consequently, the structural difference of vasculatures is successfully evaluated in mouse disease models. In conclusion, this study demonstrates the utility of CUBIC for analysis of vascular structures and presents its feasibility as an analysis modality in combination with 3D images and mathematical frameworks.
即使在小鼠中,由于成像系统和量化方法的固有局限性,血液和淋巴脉管系统也尚未得到充分了解。本研究旨在评估组织透明化技术在显示成年小鼠血液和淋巴管中的有用性。透明、无阻碍的脑/体成像鸡尾酒和计算分析(CUBIC)使我们能够捕获器官或特定区域血管结构的高分辨率 3D 图像。为了评估这些 3D 结构图像,首先通过机器学习在像素基础上对原始捕获图像中的信号进行分类。然后,将这些分类的目标信号进行拓扑数据分析和非均匀泊松过程模型处理,以提取几何特征。因此,成功地在小鼠疾病模型中评估了脉管系统的结构差异。总之,本研究证明了 CUBIC 用于血管结构分析的效用,并提出了将其与 3D 图像和数学框架相结合作为分析方式的可行性。