College of Computer Science and Technology, Changchun Normal University, Changchun, Jilin, 130032, China.
College of Computer Science and Artificial Intelligence, Wenzhou University, Wenzhou, Zhejiang, 325035, China.
Comput Biol Med. 2021 Nov;138:104910. doi: 10.1016/j.compbiomed.2021.104910. Epub 2021 Sep 30.
Breast cancer is one of the most dangerous diseases for women's health, and it is imperative to provide the necessary diagnostic assistance for it. The medical image processing technology is one of the most critical of all complementary diagnostic technologies. Image segmentation is the core step of image processing, where multilevel image segmentation is considered one of the most efficient and straightforward methods. Many multilevel image segmentation methods based on evolutionary and population-based methods have been proposed in recent years, but many have the fatal weakness of poor convergence accuracy and the tendency to fall into local optimum. Therefore, to overcome these weaknesses, this paper proposes a modified differential evolution (MDE) algorithm with a vision based on the slime mould foraging behavior, where the recently proposed slime mould algorithm (SMA) inspires it. Besides, to obtain high-quality breast cancer image segmentation results, this paper also develops an excellent MDE-based multilevel image segmentation model, the core of which is based on non-local means 2D histogram and 2D Kapur's entropy. To effectively validate the performance of the proposed method, a comparison experiment between MDE and its similar algorithms was first carried out on IEEE CEC 2014. Then, an initial validation of the MDE-based multilevel image segmentation model was performed by utilizing a reference image set. Finally, the MDE-based multilevel image segmentation model was compared with peers using breast invasive ductal carcinoma images. A series of experimental results have proved that MDE is an evolutionary algorithm with high convergence accuracy and the ability to jump out of the local optimum, as well as effectively demonstrated that the developed model is a high-quality segmentation method that can provide practical support for further research of breast invasive ductal carcinoma pathological image processing.
乳腺癌是女性健康最危险的疾病之一,为其提供必要的诊断辅助至关重要。医学图像处理技术是所有辅助诊断技术中最重要的技术之一。图像分割是图像处理的核心步骤,其中多层次图像分割被认为是最有效和直接的方法之一。近年来,已经提出了许多基于进化和群体的多层次图像分割方法,但许多方法都存在收敛精度差和容易陷入局部最优的致命弱点。因此,为了克服这些弱点,本文提出了一种基于黏菌觅食行为的改进差分进化(MDE)算法,该算法受到最近提出的黏菌算法(SMA)的启发。此外,为了获得高质量的乳腺癌图像分割结果,本文还开发了一种基于 MDE 的优秀多层次图像分割模型,其核心基于非局部均值 2D 直方图和 2D Kapur 熵。为了有效地验证所提出方法的性能,首先在 IEEE CEC 2014 上对 MDE 及其类似算法进行了比较实验。然后,利用参考图像集对基于 MDE 的多层次图像分割模型进行了初步验证。最后,使用乳腺浸润性导管癌图像将基于 MDE 的多层次图像分割模型与同行进行了比较。一系列实验结果证明了 MDE 是一种具有高收敛精度和跳出局部最优能力的进化算法,同时也有效地证明了所开发的模型是一种高质量的分割方法,可以为乳腺浸润性导管癌病理图像处理的进一步研究提供实际支持。