基于改进平衡优化器的医学2D/3D图像快速配准算法
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国家自然科学基金联合重点项目(U21A20466)


Fast Medical 2D/3D Image Registration Algorithm Based on Improved Equilibrium Optimizer
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    摘要:

    医学三维图像(如CT、MRI等)和二维图像(如X光)的配准技术已经被广泛应用于临床诊断和手术规划中. 医学图像配准的实质为使用优化算法寻找某种空间变换, 使两张图像在空间以及结构上对齐. 配准过程中往往由于优化算法寻优精度不高、易陷入局部极值的问题导致配准质量低. 针对此问题, 提出一种改进的平衡优化器算法(improved equilibrium optimizer based on Logistic-Tent chaos map and Levy flight, LTEO), 首先针对种群初始化容易分布不均匀, 且随机性太高的问题, 引入Logistic-Tent混沌映射对种群进行初始化, 提高种群多样性, 使它们尽可能地分布于搜索空间内; 对迭代函数进行更新, 使得优化算法更注重全局范围的搜索, 提高算法收敛速度并利于找到全局最优解; 引入Levy飞行策略对停滞粒子进行扰动, 防止算法陷入局部极值. 最后将改进的平衡优化器算法用于2D/3D医学图像配准任务, 并对配准过程中数据的频繁传输进行优化, 降低配准耗时. 通过基准函数测试和临床配准实验对算法进行验证, 改进后的平衡优化器可有效提高寻优精度和稳定性, 并提高医学图像配准的质量.

    Abstract:

    The registration technology of medical three-dimensional (3D) images (such as CT, MRI, etc.) and two-dimensional (2D) images (such as X-ray) has been widely used in clinical diagnosis and surgical planning. The essence of medical image registration is to use an optimization algorithm to find some kind of spatial transformation so that two images are aligned in space and structure. Usually, the registration quality is low in the process of registration due to the problem that the optimization algorithm is not accurate and easy to fall into the local extremum. In order to solve this problem, an improved equilibrium optimizer based on the Logistic-Tent chaos map and Levy flight (LTEO) is proposed. First, in order to solve the problem that the population initialization is easy to be unevenly distributed, and the randomness is too high, the Logistic-Tent chaotic map is introduced to initialize the population, increase the diversity of the population, and make them distribute in the search space as much as possible; second, the iterative function is updated to make the optimization algorithm pay more attention to the global search, improve the convergence speed of the algorithm, and help to find the global optimum solution; third, Levy flight strategy is introduced to disturb the stagnant particles and thus prevent the algorithm from falling into local extremum. Finally, LTEO is used for 2D/3D medical image registration tasks, and the frequent transmission of data in the registration process is optimized to reduce the time consumption of registration. The algorithm is verified by benchmark function tests and clinical registration experiments. The LTEO can effectively improve optimization accuracy and stability and enhance the quality of medical image registration.

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孔方琦,徐琦,周迪斌,刘文浩,余晨,聂雨晨.基于改进平衡优化器的医学2D/3D图像快速配准算法.计算机系统应用,2023,32(7):11-22

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  • 收稿日期:2022-12-23
  • 最后修改日期:2023-01-19
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  • 在线发布日期: 2023-04-20
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