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Registration of Free-Hand Ultrasound and MRI of Carotid Arteries through Combination of Point-Based and Intensity-Based Algorithms

机译:通过基于点和强度的算法的组合注册颈动脉释放超声和MRI

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We propose a methodology to register medical images of carotid arteries from tracked freehand sweep B-Mode ultrasound (US) and magnetic resonance imaging (MRI) acquisitions. Successful registration of US and MR images will allow a multimodal analysis of atherosclerotic plaque in the carotid artery. The main challenge is the difference in the positions of the patient's neck during the examinations. While in MRI the patient's neck remains in a natural position, in US the neck is slightly bent and rotated. Moreover, the image characteristics of US and MRI around the carotid artery are very different. Our technique uses the estimated centerlines of the common, internal and external carotid arteries in each modality as landmarks for registration. For US, we used an algorithm based on a rough lumen segmentation obtained by robust ellipse fitting to estimate the lumen centerline. In MRI, we extract the centerline using a minimum cost path approach in which the cost is defined by medialness and an intensity based similarity term. The two centerlines are aligned by an iterative closest point (ICP) algorithm, using rigid and thin-plate spline transformation models. The resulting point correspondences are used as a soft constraint in a subsequent intensity-based registration, optimizing a weighted sum of mutual information between the US and MRI and the Euclidean distance between corresponding points. Rigid and B-spline transformation models were used in this stage. Experiments were performed on datasets from five healthy volunteers. We compared different registration approaches, in order to evaluate the necessity of each step, and to establish the optimum algorithm configuration. For the validation, we used the Dice similarity index to measure the overlap between lumen segmentations in US and MRI.
机译:我们提出了一种方法来注册来自追踪的自写扫描B模式超声(US)和磁共振成像(MRI)采集的颈动脉的医学图像。美国和MR图像的成功注册将允许在颈动脉中的动脉粥样硬化斑块进行多峰分析。主要挑战是患者颈部在考试期间的位置差异。而在MRI患者的颈部仍然处于自然位置,在美国颈部略微弯曲并旋转。此外,颈动脉周围的US和MRI的图像特征非常不同。我们的技术使用每个码头中的常见,内部和外部颈动脉的估计中心线作为登记的地标。对于我们,我们使用了一种基于粗糙的椭圆拟合获得的粗糙腔分段的算法来估算腔中心线。在MRI中,我们使用最小成本路径方法提取中心线,其中成本由内侧和基于强度的相似性术语定义。两个中心线通过迭代最接近点(ICP)算法对齐,使用刚性和薄板样条转换模型。结果点对应关系在随后的基于强度的配准中用作软约束,优化了美国和MRI之间的相互信息的加权和,并且对应点之间的欧几里德距离。在该阶段使用刚性和B样条转换模型。在5个健康志愿者的数据集上进行实验。我们比较了不同的登记方法,以评估每个步骤的必要性,并建立最佳算法配置。对于验证,我们使用了骰子相似性指数来测量美国和MRI中的内腔分段之间的重叠。

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