Sharma Suvita Rani, Alshathri Samah, Singh Birmohan, Kaur Manpreet, Mostafa Reham R, El-Shafai Walid
Department of Computer Science and Engineering, Sant Longowal Institute of Technology and Engineering, Longowal, Sangrur 148106, Punjab, India.
Department of Information Technology, College of Computer and Information Sciences, Princess Nourah Bint Abdulrahman University, P.O. Box 84428, Riyadh 11671, Saudi Arabia.
Diagnostics (Basel). 2023 Mar 1;13(5):925. doi: 10.3390/diagnostics13050925.
A brain tumor is an abnormal growth of tissues inside the skull that can interfere with the normal functioning of the neurological system and the body, and it is responsible for the deaths of many individuals every year. Magnetic Resonance Imaging (MRI) techniques are widely used for detection of brain cancers. Segmentation of brain MRI is a foundational process with numerous clinical applications in neurology, including quantitative analysis, operational planning, and functional imaging. The segmentation process classifies the pixel values of the image into different groups based on the intensity levels of the pixels and a selected threshold value. The quality of the medical image segmentation extensively depends on the method which selects the threshold values of the image for the segmentation process. The traditional multilevel thresholding methods are computationally expensive since these methods thoroughly search for the best threshold values to maximize the accuracy of the segmentation process. Metaheuristic optimization algorithms are widely used for solving such problems. However, these algorithms suffer from the problem of local optima stagnation and slow convergence speed. In this work, the original Bald Eagle Search (BES) algorithm problems are resolved in the proposed Dynamic Opposite Bald Eagle Search (DOBES) algorithm by employing Dynamic Opposition Learning (DOL) at the initial, as well as exploitation, phases. Using the DOBES algorithm, a hybrid multilevel thresholding image segmentation approach has been developed for MRI image segmentation. The hybrid approach is divided into two phases. In the first phase, the proposed DOBES optimization algorithm is used for the multilevel thresholding. After the selection of the thresholds for the image segmentation, the morphological operations have been utilized in the second phase to remove the unwanted area present in the segmented image. The performance efficiency of the proposed DOBES based multilevel thresholding algorithm with respect to BES has been verified using the five benchmark images. The proposed DOBES based multilevel thresholding algorithm attains higher Peak Signal-to-Noise ratio (PSNR) and Structured Similarity Index Measure (SSIM) value in comparison to the BES algorithm for the benchmark images. Additionally, the proposed hybrid multilevel thresholding segmentation approach has been compared with the existing segmentation algorithms to validate its significance. The results show that the proposed algorithm performs better for tumor segmentation in MRI images as the SSIM value attained using the proposed hybrid segmentation approach is nearer to 1 when compared with ground truth images.
脑肿瘤是颅骨内组织的异常生长,会干扰神经系统和身体的正常功能,每年导致许多人死亡。磁共振成像(MRI)技术被广泛用于脑癌检测。脑MRI分割是一个基础过程,在神经学中有许多临床应用,包括定量分析、手术规划和功能成像。分割过程根据像素的强度水平和选定的阈值将图像的像素值分类为不同的组。医学图像分割的质量在很大程度上取决于为分割过程选择图像阈值的方法。传统的多级阈值方法计算成本高昂,因为这些方法会全面搜索最佳阈值以最大化分割过程的准确性。元启发式优化算法被广泛用于解决此类问题。然而,这些算法存在局部最优停滞和收敛速度慢的问题。在这项工作中,通过在初始阶段以及开发阶段采用动态反向学习(DOL),在所提出的动态反向秃鹰搜索(DOBES)算法中解决了原始秃鹰搜索(BES)算法的问题。使用DOBES算法,开发了一种用于MRI图像分割的混合多级阈值图像分割方法。该混合方法分为两个阶段。在第一阶段,所提出的DOBES优化算法用于多级阈值处理。在为图像分割选择阈值之后,在第二阶段利用形态学操作去除分割图像中存在的不需要的区域。使用五幅基准图像验证了所提出的基于DOBES的多级阈值算法相对于BES的性能效率。与基准图像的BES算法相比,所提出的基于DOBES的多级阈值算法获得了更高的峰值信噪比(PSNR)和结构相似性指数测量(SSIM)值。此外,将所提出的混合多级阈值分割方法与现有分割算法进行了比较,以验证其重要性。结果表明,所提出的算法在MRI图像中的肿瘤分割方面表现更好,因为与真实图像相比,使用所提出的混合分割方法获得的SSIM值更接近1。