Hu Fangyao, Morhard Robert, Murphy Helen A, Zhu Caigang, Ramanujam Nimmi
Department of Biomedical Engineering, Duke University, Durham, NC 27708, USA.
Biomed Opt Express. 2016 Aug 5;7(9):3247-3261. doi: 10.1364/BOE.7.003247. eCollection 2016 Sep 1.
In this study, we propose a low-cost cross-polarized dark field microscopy system for vascular imaging to detect head and neck cancer. A simple-to-use Gabor-filter-based image processing technique was developed to objectively and automatically quantify several important vascular features, including tortuosity, length, diameter and area fraction, from vascular images. Simulations were performed to evaluate the accuracies of vessel segmentation and feature extraction for our algorithm. Sensitivity and specificity for vessel segmentation of the Gabor masks both remained above 80% at all contrast levels when compared to gold-standard masks. Errors for vascular feature extraction were under 5%. Moreover, vascular contrast and vessel diameter were identified to be the two primary factors which affected the segmentation accuracies. After our algorithm was validated, we monitored the blood vessels in an inducible hamster cheek pouch carcinogen model over 17 weeks and quantified vascular features during carcinogenesis. A significant increase in vascular tortuosity and a significant decrease in vessel length were observed during carcinogenesis.
在本研究中,我们提出了一种用于血管成像以检测头颈癌的低成本交叉极化暗场显微镜系统。开发了一种基于伽柏滤波器的简单易用的图像处理技术,以从血管图像中客观自动地量化几个重要的血管特征,包括曲折度、长度、直径和面积分数。进行了模拟以评估我们算法的血管分割和特征提取的准确性。与金标准掩码相比,伽柏掩码在所有对比度水平下的血管分割灵敏度和特异性均保持在80%以上。血管特征提取的误差在5%以下。此外,血管对比度和血管直径被确定为影响分割准确性的两个主要因素。在我们的算法得到验证后,我们在一个可诱导的仓鼠颊囊致癌物模型中监测血管17周,并在致癌过程中量化血管特征。在致癌过程中观察到血管曲折度显著增加,血管长度显著减少。