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基于具有梯度分布的有元熵的信息论测度的非刚性医学图像配准

Nonrigid Medical Image Registration Using an Information Theoretic Measure Based on Arimoto Entropy with Gradient Distributions.

作者信息

Li Bicao, Shu Huazhong, Liu Zhoufeng, Shao Zhuhong, Li Chunlei, Huang Min, Huang Jie

机构信息

School of Electronic and Information Engineering, Zhongyuan University of Technology, Zhengzhou 450007, China.

Laboratory of Image Science and Technology, School of Computer Science and Engineering, Southeast University, Nanjing 210096, China.

出版信息

Entropy (Basel). 2019 Feb 18;21(2):189. doi: 10.3390/e21020189.

Abstract

This paper introduces a new nonrigid registration approach for medical images applying an information theoretic measure based on Arimoto entropy with gradient distributions. A normalized dissimilarity measure based on Arimoto entropy is presented, which is employed to measure the independence between two images. In addition, a regularization term is integrated into the cost function to obtain the smooth elastic deformation. To take the spatial information between voxels into account, the distance of gradient distributions is constructed. The goal of nonrigid alignment is to find the optimal solution of a cost function including a dissimilarity measure, a regularization term, and a distance term between the gradient distributions of two images to be registered, which would achieve a minimum value when two misaligned images are perfectly registered using limited-memory Broyden-Fletcher-Goldfarb-Shanno (L-BFGS) optimization scheme. To evaluate the test results of our presented algorithm in non-rigid medical image registration, experiments on simulated three-dimension (3D) brain magnetic resonance imaging (MR) images, real 3D thoracic computed tomography (CT) volumes and 3D cardiac CT volumes were carried out on package. Comparison studies including mutual information (MI) and the approach without considering spatial information were conducted. These results demonstrate a slight improvement in accuracy of non-rigid registration.

摘要

本文介绍了一种新的医学图像非刚性配准方法,该方法应用基于有元熵和梯度分布的信息论度量。提出了一种基于有元熵的归一化差异度量,用于测量两幅图像之间的独立性。此外,将一个正则项集成到代价函数中以获得平滑的弹性变形。为了考虑体素之间的空间信息,构建了梯度分布的距离。非刚性配准的目标是找到一个代价函数的最优解,该代价函数包括一个差异度量、一个正则项以及待配准的两幅图像的梯度分布之间的距离项,当使用有限内存布罗伊登-弗莱彻-戈德法布-沙诺(L-BFGS)优化方案将两幅未对齐的图像完美配准时,该代价函数将达到最小值。为了评估我们提出的算法在非刚性医学图像配准中的测试结果,在软件包上对模拟的三维(3D)脑磁共振成像(MR)图像、真实的3D胸部计算机断层扫描(CT)容积和3D心脏CT容积进行了实验。进行了包括互信息(MI)和不考虑空间信息的方法的比较研究。这些结果表明非刚性配准的准确性略有提高。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6694/7514671/bdc3b1639891/entropy-21-00189-g001.jpg

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