Department of Cardiovascular Diseases, Catholic University Leuven, Leuven, Belgium.
Int J Cardiovasc Imaging. 2012 Feb;28(2):229-41. doi: 10.1007/s10554-011-9824-3. Epub 2011 Feb 24.
The implantation of intracoronary stents is currently the standard approach for the treatment of coronary atherosclerotic disease. The widespread adoption of this technology has boosted an intensive research activity in this domain, with continuous improvements in the design of these devices, aiming at reducing problems of restenosis (re-narrowing of the stented segment) and thrombosis (sudden occlusion due to thrombus formation). Recently, a new, light-based intracoronary imaging modality, optical coherence tomography (OCT), was developed and introduced into clinical practice. Due to its very high axial resolution (10-15 μm), it allows for in vivo evaluation of both stent strut apposition and neointima coverage (a marker of healing of the treated segment). As such, it provides valuable information on proper stent deployment, on the behaviour of different stent types in-vivo and on the effect of new types of stents (e.g. drug-eluting stents) on vessel wall healing. However, the major drawback of the current OCT methodology is that analysis of these images requires a tremendous amount of-currently manual-post-processing. In this manuscript, an algorithm is presented that allows for fully automated analysis of stent strut apposition and coverage in coronary arteries. The vessel lumen and stent struts are automatically detected and segmented through analysis of the intensity profiles of the A-lines. From these data, apposition and coverage can then be measured automatically. The algorithm was validated using manual assessments by two experienced operators as a reference. High Pearson's correlation coefficients were found (R = 0.96-0.97) between the automated and manual measurements while Bland-Altman analysis showed no significant bias with good limits of agreement. As such, it was shown that the presented algorithm provides a robust and fast tool to automatically estimate apposition and coverage of stent struts in in-vivo OCT pullbacks. This will be important for the integration of this technology in clinical routine and for the analysis of datasets of larger clinical trials.
目前,冠状动脉内支架植入术是治疗冠状动脉粥样硬化性疾病的标准方法。这项技术的广泛应用促进了该领域的密集研究活动,不断改进这些设备的设计,旨在减少再狭窄(支架段再狭窄)和血栓形成(由于血栓形成导致的突然闭塞)等问题。最近,一种新的基于光的冠状动脉内成像方式,即光学相干断层扫描(OCT),已被开发并引入临床实践。由于其非常高的轴向分辨率(10-15μm),它可以在体内评估支架支柱的贴壁情况和新生内膜的覆盖情况(治疗段愈合的标志物)。因此,它提供了关于支架正确放置、不同支架类型在体内的行为以及新型支架(例如药物洗脱支架)对血管壁愈合的影响的有价值的信息。然而,目前 OCT 方法的主要缺点是,这些图像的分析需要大量的——目前是手动的——后处理。在本文中,提出了一种算法,该算法允许对冠状动脉中的支架支柱贴壁和覆盖情况进行全自动分析。通过分析 A 线的强度轮廓,自动检测和分割血管腔和支架支柱。然后,可以从这些数据中自动测量贴壁和覆盖情况。该算法使用两位经验丰富的操作人员的手动评估作为参考进行了验证。在自动测量和手动测量之间发现了高度的 Pearson 相关系数(R=0.96-0.97),而 Bland-Altman 分析表明没有显著的偏差,且具有良好的一致性界限。因此,结果表明,所提出的算法为自动估计体内 OCT 回拉中支架支柱的贴壁和覆盖情况提供了一种稳健、快速的工具。这对于该技术在临床常规中的整合以及对更大临床试验数据集的分析都非常重要。