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Automatic stent strut detection in intravascular ultrasound using feature extraction and classification technique

机译:利用特征提取和分类技术自动检测血管内超声中的支架

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The Bioabsorbable Vascular Scaffold (BVS)is a temporary stent, which provides support to the vascular lumens and then gradually resorbs over time to improve the recovery of blood flow in the blocked vessel. The recognition of BVS after implant is a widely used procedure in the clinical management of coronary artery disease to estimate the effects of the treatment. However, manual recognition process is time consuming, tedious and prone to human errors. This paper proposes a new computer aided solution to automatically identify and mark the stent strut in intravascular ultrasound images. We use AdaBoost based ensemble learning approach to accommodate various classifiers from different methods to enhance the performance. We can use simple features to filter, and there is no over-fit phenomenon. Moreover, Support Vector Machines (SVM)algorithm performs high efficiency, and significantly improves the learning accuracy. During the training process, images are normalized and feature extraction is carried out to train a cascaded AdaBoost classifier and a SVM classifier. Then the recognition images are output with identified objects in the testing process by using features and classifiers obtained from training. The proposed approach significantly guarantees both the precision and computational efficiency, and can be widely applied in the clinic to facilitate stent recognition and visualization potentially, adding stent implantation.
机译:生物可吸收血管支架(BVS)是一种临时支架,可为血管腔提供支撑,然后随着时间的推移逐渐吸收,以改善阻塞血管中的血流恢复。植入后对BVS的识别是冠状动脉疾病临床治疗中用来评估治疗效果的一种广泛使用的程序。但是,手动识别过程很耗时,乏味并且容易发生人为错误。本文提出了一种新的计算机辅助解决方案,可以自动识别和标记血管内超声图像中的支架撑杆。我们使用基于AdaBoost的集成学习方法来容纳来自不同方法的各种分类器,以提高性能。我们可以使用简单的功能进行过滤,并且不会出现过拟合现象。此外,支持向量机(SVM)算法具有很高的效率,并显着提高了学习准确性。在训练过程中,将图像标准化并进行特征提取,以训练级联的AdaBoost分类器和SVM分类器。然后,通过使用从训练中获得的特征和分类器,在测试过程中将识别图像与已识别的对象一起输出。所提出的方法显着地保证了精度和计算效率,并且可以广泛地应用于临床中以潜在地促进支架的识别和可视化,并增加支架植入。

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