Multi-threshold image segmentation using a boosted whale optimization: case study of breast invasive ductal carcinomas

Jinge Shi, Yi Chen, Zhennao Cai, Ali Asghar Heidari, Huiling Chen, Qiuxiang He
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Abstract

Medical imaging is essential in modern healthcare because it assists physicians in the diagnosis of cancer. Various tissues and features in medical imaging can be recognized using image segmentation algorithms. This feature makes it possible to pinpoint and define particular areas, which makes it easier to precisely locate and characterize anomalities or lesions for cancer diagnosis. Among cancers affecting women, breast cancer is particularly prevalent, underscoring the urgent need to improve the accuracy of image segmentation for breast cancer in order to assist medical practitioners. Multi-threshold image segmentation is widely acknowledged for its direct and effective characteristics. In this context, this paper suggests a refined whale optimization algorithm to improve the segmentation accuracy of breast cancer data. This algorithm optimizes performance by combining a quantum phase interference mechanism and an enhanced solution quality strategy. This work compares the method with classical, homogeneous, state-of-the-art algorithms and runs experiments on the IEEE CEC2017 benchmark to validate its practical optimization performance. Furthermore, a multi-threshold image segmentation algorithm-based image segmentation technique is presented in this study. The Berkeley segmentation dataset and the breast invasive ductal carcinomas segmentation dataset are segmented using the approach using a non-local means two-dimensional histogram and Renyi’s entropy. Experimental results demonstrate the excellent performance of this segmentation method in image segmentation applications across both low and high threshold levels. As a result, it emerges as a valuable image segmentation technique with practical applications.

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使用提升鲸鱼优化法进行多阈值图像分割:乳腺浸润性导管癌案例研究
医学成像在现代医疗保健中至关重要,因为它能帮助医生诊断癌症。医学成像中的各种组织和特征可通过图像分割算法进行识别。这一特点使得精确定位和定义特定区域成为可能,从而更容易精确定位和描述异常或病变以诊断癌症。在女性癌症中,乳腺癌的发病率尤其高,因此迫切需要提高乳腺癌图像分割的准确性,以帮助医疗从业人员。多阈值图像分割因其直接有效的特点而得到广泛认可。在此背景下,本文提出了一种改进的鲸鱼优化算法,以提高乳腺癌数据的分割精度。该算法结合了量子相位干扰机制和增强解质量策略,从而优化了性能。这项工作将该方法与经典、同质、最先进的算法进行了比较,并在 IEEE CEC2017 基准上进行了实验,以验证其实际优化性能。此外,本研究还提出了一种基于多阈值图像分割算法的图像分割技术。伯克利分割数据集和乳腺浸润性导管癌分割数据集采用该方法,使用非局部均值二维直方图和仁义熵进行分割。实验结果表明,这种分割方法在低阈值和高阈值的图像分割应用中均表现出色。因此,它是一种具有实际应用价值的图像分割技术。
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