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KIDNEY DETECTION AND REAL-TIME SEGMENTATION IN 3D CONTRAST-ENHANCED ULTRASOUND IMAGES

机译:3D对比度增强超声图像中的肾脏检测与实时分割

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In this paper, we present an automatic method to segment the kidney in 3D contrast-enhanced ultrasound (CEUS) images. This modality has lately benefited of an increasing interest for diagnosis and intervention planning, as it allows to visualize blood flow in real-time harmlessly for the patient. Our method is composed of two steps: first, the kidney is automatically localized by a novel robust ellipsoid detector; then, segmentation is obtained through the deformation of this ellipsoid with a model-based approach. To cope with low image quality and strong organ variability induced by pathologies, the algorithm allows the user to refine the result by real-time interactions. Our method has been validated on a representative clinical database.
机译:在本文中,我们介绍了一种在3D对比度增强超声(CEUS)图像中分段肾脏的自动方法。这种方式最终利益对诊断和干预计划的兴趣越来越令人利益,因为它允许对患者无害地无害地可视化血液流动。我们的方法由两个步骤组成:首先,肾脏自动通过新颖的鲁棒椭圆探测器本地化;然后,通过以基于模型的方法的这种椭圆形的变形来获得分割。为了应对低图像质量和通过病理引起的强器官变异性,该算法允许用户通过实时交互来优化结果。我们的方法已在代表性临床数据库上验证。

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