Faculty of Computers and Informatics, Department of Operations Research, Zagazig University, Zagazig, Egypt.
Faculty of Information Systems and Computer Science, October 6 University Cairo, Cairo, Egypt.
J Med Syst. 2017 Nov 3;41(12):197. doi: 10.1007/s10916-017-0846-9.
Image registration is an important aspect in medical image analysis, and kinds use in a variety of medical applications. Examples include diagnosis, pre/post surgery guidance, comparing/merging/integrating images from multi-modal like Magnetic Resonance Imaging (MRI), and Computed Tomography (CT). Whether registering images across modalities for a single patient or registering across patients for a single modality, registration is an effective way to combine information from different images into a normalized frame for reference. Registered datasets can be used for providing information relating to the structure, function, and pathology of the organ or individual being imaged. In this paper a hybrid approach for medical images registration has been developed. It employs a modified Mutual Information (MI) as a similarity metric and Particle Swarm Optimization (PSO) method. Computation of mutual information is modified using a weighted linear combination of image intensity and image gradient vector flow (GVF) intensity. In this manner, statistical as well as spatial image information is included into the image registration process. Maximization of the modified mutual information is effected using the versatile Particle Swarm Optimization which is developed easily with adjusted less parameter. The developed approach has been tested and verified successfully on a number of medical image data sets that include images with missing parts, noise contamination, and/or of different modalities (CT, MRI). The registration results indicate the proposed model as accurate and effective, and show the posture contribution in inclusion of both statistical and spatial image data to the developed approach.
图像配准是医学图像分析中的一个重要方面,在各种医学应用中都有广泛的应用。例如,诊断、手术前后的指导、比较/合并/整合来自多模态的图像,如磁共振成像(MRI)和计算机断层扫描(CT)。无论是为单个患者跨模态注册图像,还是为单个模态跨患者注册图像,配准都是将来自不同图像的信息组合到标准化框架中以供参考的有效方法。注册的数据集可用于提供与正在成像的器官或个体的结构、功能和病理学相关的信息。在本文中,开发了一种用于医学图像配准的混合方法。它采用了改进的互信息(MI)作为相似性度量和粒子群优化(PSO)方法。通过对图像强度和图像梯度向量流(GVF)强度进行加权线性组合来修改互信息的计算。通过这种方式,将统计和空间图像信息包含到图像配准过程中。使用多功能的粒子群优化来最大化改进的互信息,该优化易于调整较少的参数。所开发的方法已经在许多医学图像数据集上进行了测试和验证,这些数据集包括有缺失部分、噪声污染和/或不同模态(CT、MRI)的图像。配准结果表明,所提出的模型准确有效,并表明在将统计和空间图像数据纳入所开发的方法中,姿势贡献。