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首页> 外文期刊>IEICE transactions on information and systems >A Local Multi-Layer Model for Tissue Classification of in-vivo Atherosclerotic Plaques in Intravascular Optical Coherence Tomography
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A Local Multi-Layer Model for Tissue Classification of in-vivo Atherosclerotic Plaques in Intravascular Optical Coherence Tomography

机译:血管内光学相干断层扫描中体内动脉粥样硬化斑块组织分类的局部多层模型

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Clinical researches show that the morbidity of coronary artery disease (CAD) is gradually increasing in many countries every year, and it causes hundreds of thousands of people all over the world dying for each year. As the optical coherence tomography with high resolution and better contrast applied to the lesion tissue investigation of human vessel, many more micro-structures of the vessel could be easily and clearly visible to doctors, which help to improve the CAD treatment effect. Manual qualitative analysis and classification of vessel lesion tissue are time-consuming to doctors because a single-time intravascular optical coherence (IVOCT) data set of a patient usually contains hundreds of in-vivo vessel images. To overcome this problem, we focus on the investigation of the superficial layer of the lesion region and propose a model based on local multi-layer region for vessel lesion components (lipid, fibrous and calcified plaque) features characterization and extraction. At the pre-processing stage, we applied two novel automatic methods to remove the catheter and guide-wire respectively. Based on the detected lumen boundary, the multi-layer model in the proximity lumen boundary region (PLBR) was built. In the multi-layer model, features extracted from the A-line sub-region (ALSR) of each layer was employed to characterize the type of the tissue existing in the ALSR. We used 7 human datasets containing total 490 OCT images to assess our tissue classification method. Validation was obtained by comparing the manual assessment with the automatic results derived by our method. The proposed automatic tissue classification method achieved an average accuracy of 89.53%, 93.81% and 91.78% for fibrous, calcified and lipid plaque respectively.
机译:临床研究表明,冠状动脉疾病(CAD)的发病率每年在许多国家中都在逐步增加,并且每年导致全世界成千上万的人死亡。随着高分辨率和更好的对比度的光学相干层析成像技术应用于人体血管病变组织的研究,医生可以轻松,清晰地看到更多的血管微结构,从而有助于提高CAD治疗效果。手工对血管病变组织进行定性分析和分类对医生而言非常耗时,因为患者的一次性血管内光学相干性(IVOCT)数据集通常包含数百个体内血管图像。为了克服这个问题,我们着重研究病变区域的表层,并提出了基于局部多层区域的模型,用于表征和提取血管病变成分(脂质,纤维和钙化斑块)。在预处理阶段,我们应用了两种新颖的自动方法分别去除导管和导丝。基于检测到的管腔边界,在邻近管腔边界区域(PLBR)中建立了多层模型。在多层模型中,从每层的A线子区域(ALSR)提取的特征用于表征ALSR中存在的组织类型。我们使用包含总共490张OCT图像的7个人类数据集来评估我们的组织分类方法。通过将手动评估与通过我们的方法得出的自动结果进行比较来获得验证。提出的自动组织分类方法对纤维斑,钙化斑和脂质斑的平均准确度分别为89.53%,93.81%和91.78%。

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