3DVascNet:小鼠三维血管网的自动分割和量化软件

IF 7.4 1区 医学 Q1 HEMATOLOGY
Hemaxi Narotamo, Margarida Silveira, Cláudio A Franco
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引用次数: 0

摘要

背景:血管网络分析是揭示血管生理和病理组织调节机制的重要步骤。迄今为止,大多数分析都是使用三维(3D)网络的二维投影进行的,这种方法有几个明显的缺点。例如,它无法捕捉到血管的真实几何形状,并在血管连通性上产生伪影。人工分析三维血管网络是一个费力而复杂的过程,对于大体量的分析来说往往是令人望而却步的:为了克服这些问题,我们开发了基于深度学习的 3DVascNet 软件,用于自动分割和量化三维视网膜血管网络。3DVascNet 基于深度学习模型进行分割,并量化血管形态参数,如血管密度、分支长度、血管半径和分支点密度。我们使用小鼠视网膜血管三维显微图像的大型数据集测试了 3DVascNet 的性能:结果:我们证明了 3DVascNet 能有效地分割三维血管网络,而且血管形态参数能捕捉到二维人工分割和量化检测到的表型。此外,我们还证明,尽管 3DVascNet 是在视网膜图像上进行训练的,但它具有很强的泛化能力,能成功分割来自其他数据集和器官的图像:总之,我们介绍的 3DVascNet 是一款免费提供的软件,其中包括一个用户友好的图形界面,适合没有编程经验的研究人员使用,这将极大地促进研究健康和疾病中三维血管网络的能力。此外,3DVascNet 的源代码是公开的,因此其他用户可以很容易地对其进行扩展,以分析其他三维血管网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3DVascNet: An Automated Software for Segmentation and Quantification of Mouse Vascular Networks in 3D.

Background: Analysis of vascular networks is an essential step to unravel the mechanisms regulating the physiological and pathological organization of blood vessels. So far, most of the analyses are performed using 2-dimensional projections of 3-dimensional (3D) networks, a strategy that has several obvious shortcomings. For instance, it does not capture the true geometry of the vasculature and generates artifacts on vessel connectivity. These limitations are accepted in the field because manual analysis of 3D vascular networks is a laborious and complex process that is often prohibitive for large volumes.

Methods: To overcome these issues, we developed 3DVascNet, a deep learning-based software for automated segmentation and quantification of 3D retinal vascular networks. 3DVascNet performs segmentation based on a deep learning model, and it quantifies vascular morphometric parameters such as vessel density, branch length, vessel radius, and branching point density. We tested the performance of 3DVascNet using a large data set of 3D microscopy images of mouse retinal blood vessels.

Results: We demonstrated that 3DVascNet efficiently segments vascular networks in 3D and that vascular morphometric parameters capture phenotypes detected by using manual segmentation and quantification in 2 dimension. In addition, we showed that, despite being trained on retinal images, 3DVascNet has high generalization capability and successfully segments images originating from other data sets and organs.

Conclusions: Overall, we present 3DVascNet, a freely available software that includes a user-friendly graphical interface for researchers with no programming experience, which will greatly facilitate the ability to study vascular networks in 3D in health and disease. Moreover, the source code of 3DVascNet is publicly available, thus it can be easily extended for the analysis of other 3D vascular networks by other users.

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来源期刊
CiteScore
15.60
自引率
2.30%
发文量
337
审稿时长
2-4 weeks
期刊介绍: The journal "Arteriosclerosis, Thrombosis, and Vascular Biology" (ATVB) is a scientific publication that focuses on the fields of vascular biology, atherosclerosis, and thrombosis. It is a peer-reviewed journal that publishes original research articles, reviews, and other scholarly content related to these areas. The journal is published by the American Heart Association (AHA) and the American Stroke Association (ASA). The journal was published bi-monthly until January 1992, after which it transitioned to a monthly publication schedule. The journal is aimed at a professional audience, including academic cardiologists, vascular biologists, physiologists, pharmacologists and hematologists.
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