Department of Medical Physics, School of Medicine, University of Patras, Rion, GR 265 04, Greece.
Med Phys. 2012 Jan;39(1):503-13. doi: 10.1118/1.3673067.
Optical coherence tomography (OCT) is a catheter-based imaging method that employs near-infrared light to produce high-resolution cross-sectional intravascular images. The authors propose a segmentation technique for automatic lumen area extraction and stent strut detection in intravascular OCT images for the purpose of quantitative analysis of neointimal hyperplasia (NIH).
A clinical dataset of frequency-domain OCT scans of the human femoral artery was analyzed. First, a segmentation method based on the Markov random field (MRF) model was employed for lumen area identification. Second, textural and edge information derived from local intensity distribution and continuous wavelet transform (CWT) analysis were integrated to extract the inner luminal contour. Finally, the stent strut positions were detected via the introduction of each strut wavelet response across scales into a feature extraction and classification scheme in order to optimize the strut position detection.
The inner lumen contour and the position of stent strut were extracted with very high accuracy. Compared with manual segmentation by an expert vascular physician the automatic segmentation had an average overlap value of 0.937 ± 0.045 for all OCT images included in the study. The strut detection accuracy had an area under the curve (AUC) value of 0.95, together with sensitivity and specificity average values of 0.91 and 0.96, respectively.
A robust automatic segmentation technique integrating textural and edge information for vessel lumen border extraction and strut detection in intravascular OCT images was designed and presented. The proposed algorithm may be employed for automated quantitative morphological analysis of in-stent neointimal hyperplasia.
光学相干断层扫描(OCT)是一种基于导管的成像方法,采用近红外光产生高分辨率的血管内横截面图像。作者提出了一种自动提取管腔面积和支架支柱检测的分割技术,用于血管内 OCT 图像中新生内膜增生(NIH)的定量分析。
分析了一组来自人体股动脉的频域 OCT 扫描的临床数据集。首先,采用基于马尔可夫随机场(MRF)模型的分割方法进行管腔面积识别。其次,从局部强度分布和连续小波变换(CWT)分析中提取纹理和边缘信息,以提取内腔轮廓。最后,通过将每个支柱的小波响应引入特征提取和分类方案中,检测支架支柱的位置,以优化支柱位置检测。
内腔轮廓和支架支柱的位置提取具有非常高的准确性。与专家血管医师的手动分割相比,自动分割在研究中包含的所有 OCT 图像上的平均重叠值为 0.937±0.045。支柱检测的准确度具有曲线下面积(AUC)值为 0.95,同时平均灵敏度和特异性分别为 0.91 和 0.96。
设计并提出了一种用于血管内 OCT 图像中血管内腔边界提取和支架支柱检测的基于纹理和边缘信息的鲁棒自动分割技术。该算法可用于支架内新生内膜增生的自动定量形态分析。