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An Efficient Segmentation and Classification System in Medical Images Using Intuitionist Possibilistic Fuzzy C-Mean Clustering and Fuzzy SVM Algorithm

机译:使用直觉可能性模糊C均值聚类和模糊SVM算法的医学图像中有效的分割和分类系统

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摘要

The herpesvirus, polyomavirus, papillomavirus, and retrovirus families are associated with breast cancer. More effort is needed to assess the role of these viruses in the detection and diagnosis of breast cancer cases in women. The aim of this paper is to propose an efficient segmentation and classification system in the Mammography Image Analysis Society (MIAS) images of medical images. Segmentation became challenging for medical images because they are not illuminated in the correct way. The role of segmentation is essential in concern with detecting syndromes in human. This research work is on the segmentation of medical images based on intuitionistic possibilistic fuzzy c-mean (IPFCM) clustering. Intuitionist fuzzy c-mean (IFCM) and possibilistic fuzzy c-mean (PFCM) algorithms are hybridised to deal with problems of fuzzy c-mean. The introduced clustering methodology, in this article, retains the positive points of PFCM which helps to overcome the problem of the coincident clusters, thus the noise and less sensitivity to the outlier. The IPFCM improves the fundamentals of fuzzy c-mean by using intuitionist fuzzy sets. For the clustering of mammogram images for breast cancer detector of abnormal images, IPFCM technique has been applied. The proposed method has been compared with other available fuzzy clustering methods to prove the efficacy of the proposed approach. We compared support vector machine (SVM), decision tree (DT), rough set data analysis (RSDA) and Fuzzy-SVM classification algorithms for achieving an optimal classification result. The outcomes of the studies show that the proposed approach is highly effective with clustering and also with classification of breast cancer. The performance average segmentation accuracy for MIAS images with different noise level 5%, 7% and 9% of IPFCM is 91.25%, 87.50% and 85.30% accordingly. The average classification accuracy rates of the methods (Otsu, Fuzzy c-mean, IFCM, PFCM and IPFCM) for Fuzzy-SVM are 79.69%, 92.19%, 93.13%, 95.00%, and 98.85%, respectively.
机译:Herpesvirus,Polyomavirus,乳头瘤病毒和逆转录病毒家庭与乳腺癌有关。需要更多努力来评估这些病毒在妇女乳腺癌病例的检测和诊断中的作用。本文的目的是提出在医学图像的乳房摄影图像分析学会(MIS)图像中有效的分割和分类系统。分割成为医学图像的具有挑战性,因为它们没有以正确的方式照亮。分割的作用对于检测人类的综合症来说是至关重要的。这项研究工作是基于直觉可能性模糊C均值(IPFCM)聚类的医学图像的分割。直觉截图模糊C型(IFCM)和可能的模糊C均值(PFCM)算法杂交,以处理模糊C均值的问题。在本文中,引入的聚类方法保留了PFCM的正点,有助于克服重合簇的问题,从而噪音和对异常值的敏感性较小。 IPFCM通过使用直觉模糊套来改善模糊C-yan的基础。对于乳腺X型图像的乳腺X线图像图像的簇聚类,IPFCM技术已经应用。该方法已经与其他可用的模糊聚类方法进行了比较,以证明提出的方法的功效。我们比较了支持向量机(SVM),决策树(DT),粗糙集数据分析(RSDA)和模糊SVM分类算法,以实现最佳分类结果。研究结果表明,该方法对聚类和乳腺癌分类非常有效。具有不同噪声级别的均衡图像的性能平均分割精度为5%,7%和9%的IPFCM,相应地为91.25%,87.50%和85.30%。用于模糊SVM的方法(OTSU,模糊C型,IFCM,PFCM和IPFCM)的平均分类精度率分别为79.69%,92.19%,93.13%,95.00%和98.85%。

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