Ughi Giovanni Jacopo, Adriaenssens Tom, Sinnaeve Peter, Desmet Walter, D'hooge Jan
Cardiovascular Diseases, University Hospitals Leuven, and Dept. of Cardiovascular Sciences, KU Leuven, Belgium.
Biomed Opt Express. 2013 Jun 4;4(7):1014-30. doi: 10.1364/BOE.4.001014. Print 2013 Jul 1.
Intravascular optical coherence tomography (IVOCT) is rapidly becoming the method of choice for the in vivo investigation of coronary artery disease. While IVOCT visualizes atherosclerotic plaques with a resolution <20µm, image analysis in terms of tissue composition is currently performed by a time-consuming manual procedure based on the qualitative interpretation of image features. We illustrate an algorithm for the automated and systematic characterization of IVOCT atherosclerotic tissue. The proposed method consists in a supervised classification of image pixels according to textural features combined with the estimated value of the optical attenuation coefficient. IVOCT images of 64 plaques, from 49 in vivo IVOCT data sets, constituted the algorithm's training and testing data sets. Validation was obtained by comparing automated analysis results to the manual assessment of atherosclerotic plaques. An overall pixel-wise accuracy of 81.5% with a classification feasibility of 76.5% and per-class accuracy of 89.5%, 72.1% and 79.5% for fibrotic, calcified and lipid-rich tissue respectively, was found. Moreover, measured optical properties were in agreement with previous results reported in literature. As such, an algorithm for automated tissue characterization was developed and validated using in vivo human data, suggesting that it can be applied to clinical IVOCT data. This might be an important step towards the integration of IVOCT in cardiovascular research and routine clinical practice.
血管内光学相干断层扫描(IVOCT)正迅速成为冠状动脉疾病体内研究的首选方法。虽然IVOCT能够以小于20微米的分辨率可视化动脉粥样硬化斑块,但目前基于图像特征定性解释的耗时手动程序来进行组织成分方面的图像分析。我们阐述了一种用于IVOCT动脉粥样硬化组织自动和系统表征的算法。所提出的方法包括根据纹理特征结合光学衰减系数估计值对图像像素进行监督分类。来自49个体内IVOCT数据集的64个斑块的IVOCT图像构成了该算法的训练和测试数据集。通过将自动分析结果与动脉粥样硬化斑块的手动评估进行比较来获得验证。发现总体像素级准确率为81.5%,分类可行性为76.5%,纤维化、钙化和富含脂质组织的类准确率分别为89.5%、72.1%和79.5%。此外,测量的光学特性与文献中先前报道的结果一致。因此,利用体内人体数据开发并验证了一种用于自动组织表征的算法,表明它可应用于临床IVOCT数据。这可能是朝着将IVOCT整合到心血管研究和常规临床实践中迈出的重要一步。