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Classification of Blood Regions in IVUS Images Using Three Dimensional Brushlet Expansions

机译:采用三维毛笔扩展的IVUS图像中血地区的分类

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The presence of non-coherent blood speckle patterns makes the assessment of lumen size in intravascular ultrasound (IVUS) images a challenging problem, especially for images acquired with recent high frequency transducers. In this paper, we present a robust three-dimensional (3D) feature extraction algorithm based on the expansion of IVUS cross-sectional images and pullback directions onto an orthonormal complex brushlet basis. Several features are selected from the projections of low-frequency 3D brushlet coefficients. These representations are used as inputs to a neural network that is trained to classify blood maps on IVUS images. We evaluated the algorithm performance using repeated randomized experiments on sub-samples to validate the quantification of the blood maps when compared to expert manual tracings of 258 frames collected from three patients. Our results demonstrate that the proposed features extracted in the brushlet domain capture well the non-coherent structures of blood speckle, enabling identification of blood pools and enhancement of the lumen area.
机译:的非相干血液散斑图案的存在使得在血管内超声(IVUS)图像管腔大小一个具有挑战性的问题的评估,尤其是对于最近高频换能器获取的图像。在本文中,我们介绍了一种基于IVUS横截面图像的扩展的坚固的三维(3D)特征提取算法以及对正常的复合皮瓣的基础。从低频3D毛笔系数的投影中选择了几个特征。这些表示作为对神经网络的输入,该输入受过培训,以在IVUS图像上对血液映射进行分类。我们评估了使用来自三个患者收集的258帧的专家手动描记器的子样本对子样本的重复随机实验来验证血地图的量化。我们的结果表明,在血管域中提取的提出的特征捕获良好的血液斑点的非相干结构,从而能够识别血液池和内腔区域的增强。

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