Zheng Sun, Fei Yang, Jian Sun
Department of Electronic and Communication Engineering, North China Electric Power University, Baoding 071003, Hebei, China.
Hebei Key Laboratory of Power Internet of Things Technology, North China Electric Power University, Baoding 071003, Hebei, China.
Biomed Opt Express. 2021 Mar 8;12(4):1882-1904. doi: 10.1364/BOE.420094. eCollection 2021 Apr 1.
Catheter-based intravascular optical coherence tomography (IVOCT) is a powerful imaging modality for visualization of atherosclerosis with high resolution. Quantitative characterization of various tissue types by attenuation coefficient (AC) extraction has been proven to be a potentially significant application of OCT attenuation imaging. However, existing methods for AC extraction from OCT suffer from the challenge of variability in complex tissue types in IVOCT pullback data such as healthy vessel wall, mixed atherosclerotic plaques, plaques with a single component and stent struts, etc. This challenge leads to the ineffectiveness in the tissue differentiation by AC representation based on single scattering model of OCT signal. In this paper, we propose a novel method based on multiple scattering model for parametric imaging of optical attenuation by AC retrieval from IVOCT images conventionally acquired during cardiac catheterization. The OCT signal characterized by the AC is physically modeled by Monte Carlo simulation. Then, the pixel-wise AC retrieval is achieved by iteratively minimizing an error function regarding the modeled and measured backscattered signal. This method provides a general scheme for AC extraction from IVOCT without the premise of complete attenuation of the incident light through the imaging depths. Results of computer-simulated and clinical images demonstrate that the method can avoid overestimation at the end of the depth profile in comparison with the approaches based on the depth-resolved (DR) model. The energy error depth and structural similarity are improved by about 30% and 10% respectively compared with DR. It provides a useful way to differentiate and characterize arterial tissue types in IVOCT images.
基于导管的血管内光学相干断层扫描(IVOCT)是一种用于高分辨率可视化动脉粥样硬化的强大成像方式。通过提取衰减系数(AC)对各种组织类型进行定量表征已被证明是OCT衰减成像的一个潜在重要应用。然而,现有的从OCT中提取AC的方法面临着IVOCT回撤数据中复杂组织类型变异性的挑战,如健康血管壁、混合性动脉粥样硬化斑块、单一成分斑块和支架支柱等。这一挑战导致基于OCT信号单散射模型的AC表征在组织分化方面无效。在本文中,我们提出了一种基于多重散射模型的新方法,用于从心脏导管插入术期间常规采集的IVOCT图像中通过AC检索进行光学衰减的参数成像。以AC为特征的OCT信号通过蒙特卡罗模拟进行物理建模。然后,通过迭代最小化关于建模和测量的后向散射信号的误差函数来实现逐像素的AC检索。该方法提供了一种从IVOCT中提取AC的通用方案,而无需入射光在成像深度上完全衰减的前提。计算机模拟和临床图像结果表明,与基于深度分辨(DR)模型的方法相比,该方法可以避免在深度剖面末端出现高估。与DR相比,能量误差深度和结构相似性分别提高了约30%和10%。它为在IVOCT图像中区分和表征动脉组织类型提供了一种有用的方法。