College of Informational Science and Engineering, Henan University of Technology, High-Tech Zone, Zhengzhou City, China.
J Appl Clin Med Phys. 2019 Jun;20(6):99-110. doi: 10.1002/acm2.12612. Epub 2019 May 23.
Nonrigid registration of medical images is especially critical in clinical treatment. Mutual information is a popular similarity measure for medical image registration; however, only the intensity statistical characteristics of the global consistency of image are considered in MI, and the spatial information is ignored. In this paper, a novel intensity-based similarity measure combining normalized mutual information with spatial information for nonrigid medical image registration is proposed. The different parameters of Gaussian filtering are defined according to the regional variance, the adaptive Gaussian filtering is introduced into the local structure tensor. Then, the obtained adaptive local structure tensor is used to extract the spatial information and define the weighting function. Finally, normalized mutual information is distributed to each pixel, and the discrete normalized mutual information is multiplied with a weighting term to obtain a new measure. The novel measure fully considers the spatial information of the image neighborhood, gives the location of the strong spatial information a larger weight, and the registration of the strong gradient regions has a priority over the small gradient regions. The simulated brain image with single-modality and multimodality are used for registration validation experiments. The results show that the new similarity measure improves the registration accuracy and robustness compared with the classical registration algorithm, reduces the risk of falling into local extremes during the registration process.
医学图像的非刚性配准在临床治疗中尤为关键。互信息是医学图像配准中常用的相似性度量方法;然而,MI 仅考虑了图像全局一致性的强度统计特征,忽略了空间信息。本文提出了一种新的基于强度的相似性度量方法,将归一化互信息与空间信息相结合,用于非刚性医学图像配准。根据区域方差定义了不同的高斯滤波参数,将自适应高斯滤波引入局部结构张量中。然后,使用获得的自适应局部结构张量提取空间信息并定义加权函数。最后,将归一化互信息分配给每个像素,并将离散的归一化互信息乘以一个加权项,以获得新的度量。新的度量充分考虑了图像邻域的空间信息,对强空间信息的位置赋予更大的权重,强梯度区域的配准优先于小梯度区域。使用单模态和多模态模拟脑图像进行配准验证实验。结果表明,与经典配准算法相比,新的相似性度量提高了配准精度和鲁棒性,降低了在配准过程中陷入局部极值的风险。