A Novel Method for Detecting Breast Cancer Location Based on Growing GA-FCM Approach

Milad Abaspoor, S. Meshgini, T. Y. Rezaii, A. Farzamnia
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Abstract

The main idea of this article is to provide a numerical diagnostic method for breast cancer diagnosis of the MRI images. To achieve this goal, we used the region’s growth method to identify the target area. In the area’s growth method, based on the similarity or homogeneity of the adjacent pixels, the image is subdivided into distinct areas according to the criteria used for homogeneity analysis to determine their belonging to the corresponding region. In this paper, we used manual methods and use of FCM as the function of genetic algorithm fitness. The presented algorithm is performed for 212 healthy and 110 patients. Results show that GA-FCM method have better performance than hand method to select initial points. The sensitivity of presented method is 0.67. The results of the comparison of the fuzzy fitness function in the genetic algorithm with other technique show that the proposed model is better suited to the Jaccard index with the highest Jaccard values and the lowest Jaccard distance. Among the techniques, the presented works well because of the similarity of techniques and the lowest Jaccard distance. Values close to 0.9 are close to 0.8.
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一种基于生长GA-FCM的乳腺癌定位检测新方法
本文的主要思想是为乳腺癌的MRI图像诊断提供一种数值诊断方法。为了实现这一目标,我们使用区域的增长方法来确定目标区域。在区域生长法中,基于相邻像素的相似性或同质性,根据同质性分析所用的准则将图像细分为不同的区域,以确定它们属于相应的区域。在本文中,我们采用手工方法,并使用FCM作为遗传算法适应度的函数。本算法在212名健康患者和110名患者中执行。结果表明,GA-FCM方法在初始点的选取上优于手工方法。该方法的灵敏度为0.67。将遗传算法中的模糊适应度函数与其他方法进行了比较,结果表明所提模型更适合于具有最高Jaccard值和最小Jaccard距离的Jaccard指数。其中,由于技术的相似性和最小的Jaccard距离,所提出的方法效果较好。接近0.9的值接近0.8。
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