基于模糊c均值算法的混合蝙蝠优化乳腺癌分析

Pub Date : 2021-11-01 DOI:10.4103/2468-8827.330652
Chocko Valliappa, Reenadevi Rajendran, Sathiyabhama Balasubramaniam, Sankar Sennan, Sathiya Thanikachalam, Yuvarajan Velmurugan, Nirmalesh K. Sampath Kumar
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引用次数: 4

摘要

背景:乳腺癌是女性中最常见的癌症类型之一,早期发现可以大大降低死亡率。特征选择是乳腺癌分析过程中的重要任务之一。已经实现了几种类型的特征选择算法来选择最适合乳腺癌分析的特征。然而,它们必须花费更长的时间来收敛,过度拟合问题和提供更低的准确性。为此,提出了一种结合混沌映射和模糊c均值聚类算法(BSCFC)的混合蝙蝠优化算法进行特征选择。目的与目标:提出一种结合混沌映射和模糊c均值聚类算法(BSCFC)的集成优化蝙蝠优化算法,确定相关特征。材料和方法:使用乳腺癌迷你乳房x线图像分析学会数据库(MIAS)数据集进行分析。利用中值滤波器进行预处理,利用感兴趣区域(ROI)进行分割,利用灰度共生矩阵(GLCM)和纹理分析进行特征提取。提出了一种结合混沌映射和模糊c均值聚类算法(BSCFC)的混合蝙蝠优化算法进行特征选择。使用K近邻(KNN)分类器进行分类。结果:采用标准指标对系统性能进行评价,与蝙蝠、混沌蝙蝠、混沌乌鸦搜索、蚁狮优化、混沌蚁狮优化算法等相关算法相比,系统的准确率为98.2%,特异度为97.3%,灵敏度为98.3%。结论:BSCFC算法采用正弦、正弦、高斯、logistic和tent五种混沌映射,提高了算法的收敛速度,控制了勘探和开采率之间的平衡。结果表明,带正弦图的BSCFC可以显著提高BSCFC算法对特征约简的乳腺癌图像的分类性能,从而优化放射科医生的判读时间。
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Hybrid-based bat optimization with fuzzy C-means algorithm for breast cancer analysis
Background: Breast cancer is one of the most frequent types of cancer among women and early identification can reduce the mortality rate drastically. Feature selection is one of the significant tasks in the breast cancer analysis process. Several types of feature selection algorithms have been implemented to select the most appropriate feature for breast cancer analysis. However, they have to take a longer time to converge, over-fitting problems and providing less accuracy. Hence, a hybrid bat optimization algorithm combined with chaotic maps and fuzzy C-means clustering algorithm (BSCFC) is proposed for feature selection. Aims and Objectives: An integrated optimized bat optimization algorithm combined with chaotic maps and fuzzy C-means clustering algorithm (BSCFC) is proposed to determine the relevant feature. Materials and Methods: Breast cancer mini-Mammographic Image Analysis Society database (MIAS) dataset is used for analysis. Further, median filters are used for preprocessing, Region of Interest (ROI) was utilized for segmentation, gray level co-occurrence matrix (GLCM), and texture analysis are utilized in the feature extraction process. A hybrid bat optimization algorithm combined with chaotic maps and fuzzy C-means clustering algorithm (BSCFC) is proposed for feature selection. K nearest neighbor (KNN) classifier is used for classification. Results: Performance of the proposed system is evaluated using standard measures and achieved the highest accuracy rate of (98.2%), specificity of (97.3%), and sensitivity of (98.3%) as compared to other relevant methods such as bat, chaotic bat, chaotic crow search, ant lion optimization, and chaotic ant lion optimization algorithm. Conclusion: The proposed BSCFC algorithm is designed to improve the performance of convergence speed and control balance between exploration and exploitation rate using five types of chaotic maps namely sinusoidal, sine, gauss, logistic, and tent maps. The results show that the BSCFC with sinusoidal maps can significantly boost the classification performance of the BSCFC algorithm in classifying the breast cancer images with reduced features, which in turn optimizes the radiologists' time for their interpretation.
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