Non-rigid registration of multimodal images (Ultrasound and CT) of Liver using gradient orientation information

Romel Bhattacharjee, Ashish Verma, Neeraj Sharma, Shiru Sharma
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引用次数: 0

Abstract

Image registration is considered as a highly challenging task which is used in various medical applications such as diagnosis and image guided interventions. Registration is performed with medical images captured via different modalities and labeled as moving and fixed images. The transformation of the moving image is achieved by minimizing an objective function through updating the parameters of transformation. The existing techniques have some drawbacks in terms of speed, performance level and accuracy. Considering the limits, a new algorithm for non-rigid registration is proposed in this paper which is executed using the Ultrasound (US) and Computed Tomography (CT) images of Liver. The algorithm includes segmentation of liver surface, selection of best matched slice using similarity measure, calculation of objective function and estimation of transformation. The proposed method is applied to three clinical datasets and quantitative evaluations are conducted. Visual examinations and experimental results verifies a lower level of registration error and a higher level of accuracy which makes the algorithm acceptable for clinical applications.
基于梯度方向信息的肝脏多模态图像(超声和CT)非刚性配准
图像配准被认为是一项极具挑战性的任务,它被用于各种医学应用,如诊断和图像引导干预。对通过不同方式捕获的医学图像进行配准,并标记为移动和固定图像。运动图像的变换是通过更新变换参数使目标函数最小化来实现的。现有的技术在速度、性能水平和准确性方面存在一些不足。考虑到这些局限性,本文提出了一种新的非刚性配准算法,该算法利用肝脏超声(US)和CT (computer Tomography, CT)图像进行配准。该算法包括肝表面分割、利用相似度度量选择最佳匹配切片、目标函数计算和变换估计。将该方法应用于三个临床数据集,并进行了定量评价。视觉检查和实验结果验证了较低的配准误差和较高的准确性,使该算法可用于临床应用。
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