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Registration of Untracked 2D Laparoscopic Ultrasound Liver Images to CT Using Content-Based Retrieval and Kinematic Priors

机译:使用基于内容的检索和运动学先验将未跟踪的2D腹腔镜超声肝图像配准到CT

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Laparoscopic Ultrasound (LUS) can enhance the safety of laparoscopic liver resection by providing information on the location of major blood vessels and tumours. Since many tumours are not visible in ultrasound, registration to a pre-operative CT has been proposed as a guidance method. In addition to being multi-modal, this registration problem is greatly affected by the differences in field of view between CT and LUS, and thus requires an accurate initialisation. We propose a novel method of registering smaller field of view slices to a larger volume globally using a Content-based retrieval framework. This problem is under-constrained for a single slice registration, resulting in non-unique solutions. Therefore, we introduce kinematic priors in a Bayesian framework in order to jointly register groups of ultrasound images. Our method then produces an estimate of the most likely sequence of CT images to represent the ultrasound acquisition and does not require tracking information nor an accurate initialisation. We demonstrate the feasibility of this approach in multiple LUS acquisitions taken from three sets of clinical data.
机译:腹腔镜超声(LUS)可通过提供有关主要血管和肿瘤位置的信息来提高腹腔镜肝切除术的安全性。由于许多肿瘤在超声中不可见,因此建议将术前CT定位作为指导方法。除了是多模式的之外,该配准问题还受到CT和LUS之间视场差异的极大影响,因此需要精确的初始化。我们提出了一种新的方法,该方法使用基于内容的检索框架将较小的视场切片全局注册为较大的体积。对于单个切片注册,此问题的约束不足,从而导致解决方案不唯一。因此,我们在贝叶斯框架中引入了运动先验,以便共同注册超声图像组。然后,我们的方法将产生最可能的CT图像序列估计值,以代表超声采集,并且不需要跟踪信息也不需要准确的初始化。我们从三套临床数据中证明了这种方法在多次LUS采集中的可行性。

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