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Automatic registration between 3D intra-operative ultrasound and pre-operative CT images of the liver based on robust edge matching

机译:基于鲁棒边缘匹配的3D术中超声和肝脏术前CT图像之间的自动配准

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摘要

The registration of a three-dimensional (3D) ultrasound (US) image with a computed tomography (CT) or magnetic resonance image is beneficial in various clinical applications such as diagnosis and image-guided intervention of the liver. However, conventional methods usually require a time-consuming and inconvenient manual process for pre-alignment, and the success of this process strongly depends on the proper selection of initial transformation parameters. In this paper, we present an automatic feature-based affine registration procedure of 3D intra-operative US and pre-operative CT images of the liver. In the registration procedure, we first segment vessel lumens and the liver surface from a 3D B-mode US image. We then automatically estimate an initial registration transformation by using the proposed edge matching algorithm. The algorithm finds the most likely correspondences between the vessel centerlines of both images in a non-iterative manner based on a modified Viterbi algorithm. Finally, the registration is iteratively refined on the basis of the global affine transformation by jointly using the vessel and liver surface information. The proposed registration algorithm is validated on synthesized datasets and 20 clinical datasets, through both qualitative and quantitative evaluations. Experimental results show that automatic registration can be successfully achieved between 3D B-mode US and CT images even with a large initial misalignment.
机译:将三维(3D)超声(US)图像与计算机断层扫描(CT)或磁共振图像进行配准在各种临床应用(例如肝脏的诊断和图像引导的干预)中是有益的。然而,常规方法通常需要费时且不便的手动过程进行预对准,并且该过程的成功很大程度上取决于对初始转换参数的正确选择。在本文中,我们介绍了一种基于特征的自动仿射配准程序,该程序基于3D术中US和肝脏术前CT图像。在配准程序中,我们首先从3D B模式US图像中分割血管腔和肝脏表面。然后,我们通过使用提出的边缘匹配算法自动估计初始配准变换。该算法基于改进的维特比算法,以非迭代的方式找到两个图像的血管中心线之间最可能的对应关系。最后,在全局仿射变换的基础上,通过联合使用血管和肝脏表面信息来迭代完善注册。通过定性和定量评估,在合成数据集和20个临床数据集上验证了提出的配准算法。实验结果表明,即使初始偏移较大,也可以在3D B模式US图像和CT图像之间成功实现自动配准。

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