Stefan Sabina, Lee Jonghwan
Center for Biomedical Engineering, School of Engineering, Brown University, Providence, RI 02912, USA.
Carney Institute for Brain Science, Brown University, Providence, RI 02912, USA.
Biomed Opt Express. 2020 Nov 24;11(12):7325-7342. doi: 10.1364/BOE.405763. eCollection 2020 Dec 1.
Optical coherence tomography angiography (OCTA) is becoming increasingly popular for neuroscientific study, but it remains challenging to objectively quantify angioarchitectural properties from 3D OCTA images. This is mainly due to projection artifacts or "tails" underneath vessels caused by multiple-scattering, as well as the relatively low signal-to-noise ratio compared to fluorescence-based imaging modalities. Here, we propose a set of deep learning approaches based on convolutional neural networks (CNNs) to automated enhancement, segmentation and gap-correction of OCTA images, especially of those obtained from the rodent cortex. Additionally, we present a strategy for skeletonizing the segmented OCTA and extracting the underlying vascular graph, which enables the quantitative assessment of various angioarchitectural properties, including individual vessel lengths and tortuosity. These tools, including the trained CNNs, are made publicly available as a user-friendly toolbox for researchers to input their OCTA images and subsequently receive the underlying vascular network graph with the associated angioarchitectural properties.
光学相干断层扫描血管造影术(OCTA)在神经科学研究中越来越受欢迎,但从三维OCTA图像中客观量化血管结构特性仍然具有挑战性。这主要是由于多次散射导致血管下方出现投影伪影或“尾巴”,以及与基于荧光的成像方式相比相对较低的信噪比。在此,我们提出了一套基于卷积神经网络(CNN)的深度学习方法,用于对OCTA图像,特别是从啮齿动物皮层获得的图像进行自动增强、分割和间隙校正。此外,我们提出了一种对分割后的OCTA进行骨架化并提取基础血管图的策略,这能够对包括单个血管长度和曲折度在内的各种血管结构特性进行定量评估。这些工具,包括经过训练的CNN,作为一个用户友好的工具箱公开提供,供研究人员输入他们的OCTA图像,随后接收具有相关血管结构特性的基础血管网络图。