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首页> 外文期刊>International journal of biomedical engineering and technology >New methods based on mRMR_LSSVM and mRMR_KNN for diagnosis of breast cancer from microscopic and mammography images of some patients
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New methods based on mRMR_LSSVM and mRMR_KNN for diagnosis of breast cancer from microscopic and mammography images of some patients

机译:基于mRMR_LSSVM和mRMR_KNN的一些患者的显微和乳腺X线摄影图像诊断乳腺癌的新方法

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摘要

The aim of this study is to determine cancerous lesions in lighi microscopic and mammographie images taken from some patients. In this study, 23 features are used. These features obtained 92 features by rotating in variety of angles. Structure of the study composes three steps. These are feature select step, classification step and testing stage. In feature select step, optimal feature subset using minimum redundancy and maximum relevance via mutual information (mRMR) have been found. In classification step, Least Square Support Vector Machine (LSSVM) and fuzzy k-nearest neighbour (KNN) are used. For validation of the proposed methods accuracy rates are found. These accuracy rates, with mRMRKNN, have obtained 100% and 98.33% in microscopic and mammographic images respectively. With mRMR_LSSVM 100% and 96.67% accuracies are obtained in microscopic and mammographic images respectively. When these microscopic and mammography images have been combined, mRMR_KNN and mRMR_LSSVM methods have found 100% and 100% accuracy rate respectively.
机译:这项研究的目的是确定从某些患者拍摄的lighi显微镜和乳腺X线摄影图像中的癌灶。在这项研究中,使用了23个功能。通过以各种角度旋转,这些特征获得了92个特征。研究结构包括三个步骤。这些是特征选择步骤,分类步骤和测试阶段。在特征选择步骤中,找到了使用最小冗余和通过互信息(mRMR)实现最大相关性的最佳特征子集。在分类步骤中,使用最小二乘支持向量机(LSSVM)和模糊k最近邻(KNN)。为了验证所提出的方法,找到了准确率。通过mRMRKNN,这些准确率分别在显微图像和乳腺摄影图像中获得了100%和98.33%。使用mRMR_LSSVM,在显微图像和乳腺X射线照片中分别获得100%和96.67%的准确度。将这些显微图像和乳腺摄影图像结合起来后,mRMR_KNN和mRMR_LSSVM方法的准确率分别为100%和100%。

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