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Healthy Vessel Wall Detection Using U-Net in Optical Coherence Tomography

机译:在光学相干断层扫描中使用U-Net进行健康的血管壁检测

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Intravascular optical coherence tomography can be applied for high-resolution imaging in the coronary arteries with ischemic heart disease. The differentiation of the healthy and diseased vessel wall can be used to assess the extent and severity of coronary artery disease, and to guide therapeutic interventions. The aim of this study is to develop a recognition framework that can be potentially used for real-time intraoperative application. Structures in an image were labeled into five categories: diseased, healthy, luminal, guide-wire, and others. A U-net was implemented to directly take Cartesian images as input without any additional processing steps. A sigmoid activation and binary cross-entropy loss were applied to perform multi-labeling segmentation. Three transformations were specifically proposed in the polar domain for data augmentation. For evaluation of the proposed framework, 200 images from 20 patients were used and a triple-leave-2-out cross validation was carried out. Performance was evaluated using the average loss in the validation dataset, and the Dice scores were reported as well. Results showed that the proposed framework can perform the segmentation generally with an average performance of 0.88 ± 0.02 in Dice scores. These preliminary results suggest that the proposed framework can be potentially applied for assisting diagnosis in real-time. In the future, we intend to include more data, also take into consideration artifacts such as bad flushing, more deformed lumen, and side-branches.
机译:血管内光学相干断层扫描可用于缺血性心脏病冠状动脉的高分辨率成像。健康和患病血管壁的分化可用于评估冠状动脉疾病的程度和严重程度,并指导治疗干预。这项研究的目的是开发一种可潜在用于实时术中应用的识别框架。图像中的结构分为五类:患病,健康,内腔,导丝和其他类别。实现了一个U-net,直接将笛卡尔图像作为输入,而无需任何其他处理步骤。乙状结肠激活和二进制交叉熵损失被应用于执行多标签分割。极地域中特别提出了三种转换方法,用于数据扩充。为了评估所提出的框架,使用了来自20位患者的200张图像,并进行了三叶2出交叉验证。使用验证数据集中的平均损失评估性能,并报告Dice分数。结果表明,所提出的框架可以进行分割,Dice评分的平均表现为0.88±0.02。这些初步结果表明,提出的框架可以潜在地应用于实时辅助诊断。将来,我们打算包含更多数据,同时还要考虑到人为因素,例如冲洗不良,管腔变形更多和侧支。

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