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NEAR REAL-TIME ROBUST NON-RIGID REGISTRATION OF VOLUMETRIC ULTRASOUND IMAGES FOR NEUROSURGERY

机译:神经外科手术的超声图像的近实时鲁棒非刚性配准

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Ultrasound images are acquired before and after the resection of brain tumors to help the surgeon to localize the tumor and its extent and to minimize the amount of residual tumor after the resection. Because the brain undergoes large deformation between these two acquisitions, deformable image-based registration of these data sets is of substantial clinical importance. In this work, we present an algorithm for non-rigid registration of ultrasound images (RESOUND) that models the deformation with free-form cubic B-splines. We formulate a regularized cost function that uses normalized cross-correlation as the similarity metric. To optimize the cost function, we calculate its analytic derivative and use the stochastic gradient descent technique to achieve near real-time performance. We further propose a robust technique to minimize the effect of non-corresponding regions such as the resected tumor and possible hemorrhage in the post-resection image. Using manually labeled corresponding landmarks in the pre- and post-resection ultrasound volumes, we illustrate that our registration algorithm reduces the mean target registration error from an initial value of 3.7 to 1.5 mm. We also compare RESOUND with the previous work of Mercier et al. (2013) and illustrate that it has three important advantages: (i) it is fully automatic and does not require a manual segmentation of the tumor, (ii) it produces smaller registration errors and (iii) it is about 30 times faster. The clinical data set is available online on the BITE database website. (E-mail: hrivaz@ece.concordia.ca) (C) 2015 World Federation for Ultrasound in Medicine & Biology.
机译:在脑肿瘤切除术之前和之后采集超声图像,以帮助外科医生定位肿瘤及其范围,并最大程度地减少切除后残留的肿瘤数量。由于大脑在这两次采集之间经历了很大的变形,因此这些数据集基于可变形图像的配准具有重要的临床意义。在这项工作中,我们提出了一种用于超声图像非刚性配准的算法(RESOUND),该算法使用自由形式的三次B样条曲线对变形进行建模。我们制定了使用归一化互相关作为相似性度量的正则化成本函数。为了优化成本函数,我们计算了其解析导数,并使用随机梯度下降技术来实现近实时性能。我们进一步提出了一种鲁棒的技术,以最大程度地减少切除后图像中非对应区域(如切除的肿瘤)和可能出血的影响。在切除前和切除后的超声体积中使用手动标记的对应标志,我们说明了我们的配准算法将平均目标配准误差从初始值3.7降低到了1.5 mm。我们还将RESOUND与Mercier等人的先前工作进行了比较。 (2013)并说明它具有三个重要的优点:(i)它是全自动的并且不需要手动分割肿瘤;(ii)它产生较小的配准错误;(iii)它快约30倍。临床数据集可在BITE数据库网站上在线获得。 (电子邮件:hrivaz@ece.concordia.ca)(C)2015年世界医学和生物学超声联合会。

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