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Feature Study on Catheter Detection in Three-Dimensional Ultrasound

机译:三维超声中导管检测特征研究

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The usage of three-dimensional ultrasound (3D US) during image-guided interventions for e.g. cardiac catheter-ization has increased recently. To accurately and consistently detect and track catheters or guidewires in the US image during the intervention, additional training of the sonographer or physician is needed. As a result, image-based catheter detection can be beneficial to the sonographer to interpret the position and orientation of a catheter in the 3D US volume. However, due to the limited spatial resolution of 3D cardiac US and complex anatomical structures inside the heart, image-based catheter detection is challenging. In this paper, we study 3D image features for image-based catheter detection using supervised learning methods. To better describe the catheter in 3D US, we extend the Frangi vesselness feature into a multi-scale Objectness feature and a Hessian element feature, which extract more discriminative information about catheter voxels in a 3D US volume. In addition, we introduce a multi-scale statistical 3D feature to enrich and enhance the information for voxel-based classification. Extensive experiments on several in-vitro and ex-vivo datasets show that our proposed features improve the precision to at least 69% when compared to the traditional multi-scale Frangi features (from 45% to 76% at a high recall rate 75%). As for clinical application, the high accuracy of voxel-based classification enables more robust catheter detection in complex anatomical structures.
机译:在图像引导干预期间使用三维超声(3D US)的用法。心脏导管 - 最近增加了。在干预期间,在美国图像中准确且一致地检测和追踪导管或导管,需要额外的超声师或医生培训。结果,基于图像的导管检测可以有利于超声波赫解释3D US体积中导管的位置和取向。然而,由于3D心脏的空间分辨率有限,心脏内部的复杂解剖结构,基于图像的导管检测是具有挑战性的。在本文中,我们研究了使用监督学习方法的基于图像的导管检测的3D图像特征。为了更好地描述在美国3D导管,我们扩展了FRANGI血管性特征划分为多尺度对象性功能和黑森州元素的功能,它提取有关在3D容积美国导管体素更有辨别力的信息。此外,我们介绍了一种多尺度统计3D特征来丰富和增强基于体素的分类信息。在几种体外和前体内数据集上的广泛实验表明,与传统的多尺度纤维特征相比,我们所提出的功能将精度提高到至少69%(以75%的高召回率为75%) 。至于临床应用,基于体素的分类的高精度使得在复杂的解剖结构中能够更加鲁棒的导管检测。

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