Three-Dimensional Visualisation of Blood Vessels in Human Gliomas Using Tissue Clearing and Deep Learning.

IF 3.4 2区 医学 Q1 CLINICAL NEUROLOGY
Xiaodu Yang, Xinyue Wang, Dian He, Feiyang Luo, Chenyang Li, Yunhao Luo, Ting Li, Zhaoyu Ye, Chun Ye, Minglin Zhang, Hei Ming Lai, Yingying Xu, Haitao Sun
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Abstract

Gliomas, with their intricate and aggressive nature, call for a detailed visualisation of their vasculature. Traditional 2D imaging often overlooks the spatial heterogeneity of tumours. Our study overcomes this by combining tissue clearing, 3D-confocal microscopy imaging and deep learning-aided vessel extraction, achieving comprehensive 3D visualisation of glioma vasculature in intact human tissue. Specifically, we treated formalin-fixed thick human glioma tissue sections (500 μm) with OPTIClear for transparency and performed immunofluorescent labelling. Using confocal microscopy, we obtained 3D images of glioma vasculature. For vessel extraction, we employed a specialised 3D U-Net, enriched with image preprocessing and post-processing methods. In addition, we obtained 3D images of astrocytes or glioma cells, cell nuclei and vasculature with vascular basement membrane staining. Our findings indicated that OPTIClear-enabled tissue clearing yielded a holistic 3D representation of immunolabelled vessels and surrounding cells in human glioma samples. Our deep learning technique outperformed the traditional Imaris approach in terms of accuracy and efficiency in vessel extraction. Furthermore, discernible variations in vascular morphological metrics were observed between low- and high-grade gliomas, revealing the spatial heterogeneity of human glioma vessels. Analysis of other markers demonstrated differences in glioma cell morphology and vessel wall disruption across grades. In essence, our innovative blend of tissue clearing and deep learning not only enhances 3D visualisation of human glioma vasculature but also underscores morphological disparities across glioma grades, potentially influencing pathological grading, therapeutic strategies and prognostic evaluations.

利用组织清除和深度学习技术实现人类胶质瘤血管的三维可视化。
胶质瘤具有复杂和侵袭性的性质,需要对其血管系统进行详细的可视化。传统的二维成像常常忽略肿瘤的空间异质性。我们的研究通过结合组织清理、3D共聚焦显微镜成像和深度学习辅助血管提取,克服了这一问题,实现了完整人体组织中胶质瘤血管系统的全面3D可视化。具体来说,我们用OPTIClear处理了福尔马林固定的人胶质瘤厚组织切片(500 μm),以提高透明度,并进行了免疫荧光标记。使用共聚焦显微镜,我们获得了胶质瘤血管系统的三维图像。对于血管提取,我们使用了专门的3D U-Net,丰富了图像预处理和后处理方法。此外,我们还通过血管基底膜染色获得了星形胶质细胞或胶质瘤细胞、细胞核和脉管系统的三维图像。我们的研究结果表明,opticlear支持的组织清除产生了人类胶质瘤样本中免疫标记血管和周围细胞的整体3D表示。我们的深度学习技术在血管提取的准确性和效率方面优于传统的Imaris方法。此外,在低级别和高级别胶质瘤之间观察到血管形态指标的明显变化,揭示了人类胶质瘤血管的空间异质性。其他标记物的分析显示胶质瘤细胞形态和血管壁破坏在不同年级的差异。从本质上讲,我们创新的组织清除和深度学习的结合不仅增强了人类胶质瘤血管系统的3D可视化,而且强调了胶质瘤等级之间的形态学差异,可能影响病理分级、治疗策略和预后评估。
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来源期刊
CiteScore
8.20
自引率
2.00%
发文量
87
审稿时长
6-12 weeks
期刊介绍: Neuropathology and Applied Neurobiology is an international journal for the publication of original papers, both clinical and experimental, on problems and pathological processes in neuropathology and muscle disease. Established in 1974, this reputable and well respected journal is an international journal sponsored by the British Neuropathological Society, one of the world leading societies for Neuropathology, pioneering research and scientific endeavour with a global membership base. Additionally members of the British Neuropathological Society get 50% off the cost of print colour on acceptance of their article.
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