University Hospitals Leuven, Department of Cardiovascular Diseases, and KU Leuven, Department of Cardiovascular Sciences, Herestraat 49, B3000 Leuven, Belgium.
J Biomed Opt. 2014 Feb;19(2):21104. doi: 10.1117/1.JBO.19.2.021104.
Intravascular optical coherence tomography (IVOCT) is rapidly becoming the method of choice for assessing vessel healing after stent implantation due to its unique axial resolution <20 μm. The amount of neointimal coverage is an important parameter. In addition, the characterization of neointimal tissue maturity is also of importance for an accurate analysis, especially in the case of drug-eluting and bioresorbable stent devices. Previous studies indicated that well-organized mature neointimal tissue appears as a high-intensity, smooth, and homogeneous region in IVOCT images, while lower-intensity signal areas might correspond to immature tissue mainly composed of acellular material. A new method for automatic neointimal tissue characterization, based on statistical texture analysis and a supervised classification technique, is presented. Algorithm training and validation were obtained through the use of 53 IVOCT images supported by histology data from atherosclerotic New Zealand White rabbits. A pixel-wise classification accuracy of 87% and a two-dimensional region-based analysis accuracy of 92% (with sensitivity and specificity of 91% and 93%, respectively) were found, suggesting that a reliable automatic characterization of neointimal tissue was achieved. This may potentially expand the clinical value of IVOCT in assessing the completeness of stent healing and speed up the current analysis methodologies (which are, due to their time- and energy-consuming character, not suitable for application in large clinical trials and clinical practice), potentially allowing for a wider use of IVOCT technology.
血管内光学相干断层扫描(IVOCT)由于其独特的轴向分辨率<20 μm,正在迅速成为评估支架植入后血管愈合的首选方法。新生内膜覆盖量是一个重要的参数。此外,新生内膜组织成熟度的特征对于准确分析也很重要,尤其是在药物洗脱和生物可吸收支架器械的情况下。先前的研究表明,在 IVOCT 图像中,结构良好的成熟新生内膜组织呈现高强度、光滑和均匀的区域,而低强度信号区域可能对应于主要由无细胞物质组成的不成熟组织。提出了一种基于统计纹理分析和有监督分类技术的自动新生内膜组织特征化新方法。通过使用 53 个支持新西兰白兔动脉粥样硬化组织学数据的 IVOCT 图像进行算法训练和验证。发现像素分类准确率为 87%,二维区域分析准确率为 92%(敏感性和特异性分别为 91%和 93%),这表明实现了可靠的自动新生内膜组织特征化。这可能潜在地扩大 IVOCT 在评估支架愈合完整性方面的临床价值,并加速当前的分析方法(由于其耗时和耗能的特点,不适合在大型临床试验和临床实践中应用),从而可能更广泛地应用 IVOCT 技术。