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Voxel-based plaque classification in coronary intravascular optical coherence tomography images using decision trees

机译:基于体素的噬藻斑分类在冠状动脉血管内光学相干断层扫描图像中使用决策树

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Intravascular Optical Coherence Tomography (IVOCT) is a high contrast, 3D microscopic imaging technique that can be used to assess atherosclerosis and guide stent interventions. Despite its advantages, IVOCT image interpretation is challenging and time consuming with over 500 image frames generated in a single pullback volume. We have developed a method to classify voxel plaque types in IVOCT images using machine learning. To train and test the classifier, we have used our unique database of labeled cadaver vessel IVOCT images accurately registered to gold standard cryo-images. This database currently contains 300 images and is growing. Each voxel is labeled as fibrotic, lipid-rich, calcified or other. Optical attenuation, intensity and texture features were extracted for each voxel and were used to build a decision tree classifier for multi-class classification. Five-fold cross-validation across images gave accuracies of 96 % ± 0.01 %, 90 ± 0.02% and 90 % ± 0.01 % for fibrotic, lipid-rich and calcified classes respectively. To rectify performance degradation seen in left out vessel specimens as opposed to left out images, we are adding data and reducing features to limit overfitting. Following spatial noise cleaning, important vascular regions were unambiguous in display. We developed displays that enable physicians to make rapid determination of calcified and lipid regions. This will inform treatment decisions such as the need for devices (e.g., atherectomy or scoring balloon in the case of calcifications) or extended stent lengths to ensure coverage of lipid regions prone to injury at the edge of a stent.
机译:血管内光学相干断层扫描(IVOCT)是一种高对比度,3D微观成像技术可用于评估动脉粥样硬化和引导支架干预。尽管有其优势,但IVOCT图像解释具有在单个回拉卷中产生的超过500个图像帧的挑战性和耗时。我们开发了一种使用机器学习在IVOCT图像中对体素斑块类型进行分类的方法。要培训和测试分类器,我们使用了我们的独特数据库的标记的Cadaver船只Ivoct图像数据库,准确地注册到金标准的Cryo-Images。此数据库当前包含300个图像并正在增长。每个voxel都标记为纤维化,富含脂质,钙化或其他。针对每个体素提取光学衰减,强度和纹理特征,用于构建用于多级分类的决策树分类器。对于纤维化,富含富含血液和钙化类的五倍的图像横跨图像的交叉验证具有96%±0.01%,90±0.02%和90%±0.01%。为了纠正左输出血管标本中看到的性能下降,而不是泄露图像,我们正在添加数据和减少功能以限制过度拟合。在空间噪声清洁之后,重要的血管区域显示出明确。我们开发了显示器,使医生能够快速确定钙化和脂质区域。这将提供通知治疗决策,例如对钙化的装置(例如,晶体切除术或得分球囊)或延伸支架长度,以确保脂质区俯视支架边缘处的损伤。

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