Li Ang, You Jiang, Du Congwu, Pan Yingtian
Department of Biomedical Engineering, Stony Brook University, Stony Brook, NY 11794, USA.
Biomed Opt Express. 2017 Nov 14;8(12):5604-5616. doi: 10.1364/BOE.8.005604. eCollection 2017 Dec 1.
Angiogenesis is recognized as a crucial component of many neurovascular diseases such as stroke, carcinogenesis, and neurotoxicity of abused drug. The ability to track angiogenesis will facilitate a better understanding of disease progression and assessment of therapeutical effects. Optical coherence angiography (OCTA) is a promising tool to assess 3D microvascular networks due to its micron-level resolution, high sensitivity, and relatively large field of view. However, quantitative OCTA image analysis for characterization of microvascular network changes, including accurately tracking the progression of angiogenesis, remains a challenge. In this paper, we proposed an angiogenesis tracking algorithm which combines improved vessel segmentation and brain boundary detection methods to significantly enhance time-lapse OCTA images for quantification of microvascular network changes. Specifically, top-hat enhancement and optimally oriented flux (OOF) algorithms facilitated accurate segmentation of cerebrovascular networks (including capillaries); graph-search based brain boundary detection enabled coregistration of 3D OCTA data sets from different time points for accurate vessel density assessment and analysis of their changes in various cortical layers. Results show that this algorithm significantly enhanced the accuracy of vessel segmentation compared to Hessian method. Application to chronic cocaine intoxication study shows effectively reduced errors in chronic tracking of microvasculature and more accurate assessment of vessel density changes induced by angiogenesis.
血管生成被认为是许多神经血管疾病的关键组成部分,如中风、癌症发生以及滥用药物的神经毒性。追踪血管生成的能力将有助于更好地理解疾病进展并评估治疗效果。光学相干血管造影(OCTA)由于其微米级分辨率、高灵敏度和相对较大的视野,是评估三维微血管网络的一种有前景的工具。然而,对微血管网络变化进行定量的OCTA图像分析,包括准确追踪血管生成的进展,仍然是一个挑战。在本文中,我们提出了一种血管生成追踪算法,该算法结合了改进的血管分割和脑边界检测方法,以显著增强时间推移OCTA图像,用于微血管网络变化的量化。具体而言,顶帽增强和最优方向通量(OOF)算法有助于准确分割脑血管网络(包括毛细血管);基于图搜索的脑边界检测实现了不同时间点的三维OCTA数据集的配准,以便进行准确的血管密度评估和分析其在各皮质层的变化。结果表明,与Hessian方法相比,该算法显著提高了血管分割的准确性。应用于慢性可卡因中毒研究表明,有效地减少了微血管长期追踪中的误差,并更准确地评估了血管生成引起的血管密度变化。