Non-Rigid Image Registration based on Parameterized Surfaces: Application to 3D Cardiac Motion Image Analysis

S. K. Shah
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Abstract

This paper describes the Fast Radial Basis Function (RBF) method for cardiac motion tracking in 3D CT using non-rigid medical image registration based on parameterized (regular) surfaces. The technique is a point-based registration evaluation algorithm which does register 3D MR or CT images in real time. We first extract the surface of the whole heart 3D CT and its contrast enhanced part (left ventricle (LV) blood cavity) of each dataset with a semiautomatic contouring and a fully-automatic triangulation method followed by a global surface parameterization and optimization algorithm. In second step, a set of registration experiments are run to calculate the deformation field at various phases of cardiac motion or cycle from CT images, which results into significant deformation during each phase of a cycle. The surface points of the whole heart and LV are used to register the source systole image to various diastole target images taken at different phases during a heart beat. Our registration accuracy improves with the increase in number of salient feature points (i.e. optimized parameterized surfaces) and it has no effect on the speed of the algorithm (i.e. still less than a second). The results show that the target registration error is less than 3[Formula: see text]mm (2.53) and the performance of the Fast RBF algorithm is less than a second using a whole heart CT dataset of a single patient taken over the course of the entire cardiac cycle. At the end, the results for recovery (or analysis) of bigger deformation in heart CT images using the Fast RBF algorithm is compared to the state-of-the-art Free Form Deformation (FFD) registration technique. It is proved that the Fast RBF method is performing better in speed and slightly less accurate than the FFD (when measured in terms of NMI) due to iterative nature of the latter.
基于参数化曲面的非刚性图像配准:在三维心脏运动图像分析中的应用
本文提出了基于参数化(规则)曲面的非刚性医学图像配准的快速径向基函数(RBF)方法,用于三维CT心脏运动跟踪。该技术是一种基于点的配准评估算法,可以实现三维MR或CT图像的实时配准。首先采用半自动等高线和全自动三角剖分方法提取每个数据集的全心3D CT表面及其对比度增强部分(左心室(LV)血腔),然后采用全局表面参数化和优化算法。第二步,通过一组配准实验,从CT图像中计算心脏运动或周期各阶段的变形场,得到一个周期各阶段的明显变形。整个心脏和左室的表面点用于将源收缩期图像与心跳期间不同阶段拍摄的各种舒张期目标图像进行配准。我们的配准精度随着显著特征点(即优化的参数化曲面)数量的增加而提高,并且它对算法的速度没有影响(即仍然少于一秒)。结果表明,目标配准误差小于3 mm(2.53),使用单个患者整个心脏周期的整个心脏CT数据集,Fast RBF算法的性能小于1秒。最后,使用Fast RBF算法对心脏CT图像中较大变形的恢复(或分析)结果与最先进的自由形式变形(FFD)配准技术进行比较。事实证明,由于FFD的迭代特性,Fast RBF方法在速度上表现得更好,但精度略低于FFD(当以NMI来测量时)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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