Application of Feature Extraction and clustering in mammogram classification using Support Vector Machine

R. Aarthi, K. Divya, N. Komala, S. Kavitha
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引用次数: 27

Abstract

Medicine is one of the major fields where the application of artificial intelligence primarily deals with construction of programs that perform diagnosis and make therapy recommendations. In digital mammography, data mining techniques are used to detect and characterize abnormalities in images and clinical reports. In the existing approaches, the mammogram image classification is done in either clinical data or statistical features of an image using neural networks and Support Vector Machine (SVM) classifier. This paper is proposed to evaluate the Application of Feature Extraction by means of combining the clinical and image features for clustering and classification in mammogram images. Initially, mammogram dataset is divided into training and test set. For the training and test sets, preprocessing techniques like noise removal and background removal are done to the images and Region of Interest (ROI) is identified. The statistical features are extracted from the ROI and the clinical data are obtained from the dataset. The feature set is clustered using k-means algorithm followed by SVM classification to classify the image as benign or malignant. The accuracy obtained from the proposed approach of clustering followed by classification is 86.11% which is higher than the direct classification approach where the accuracy is 80.0%. From the above results, the superiority of the proposed approach in terms of accuracy is justified.
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特征提取与聚类在支持向量机乳腺影像分类中的应用
医学是人工智能应用的主要领域之一,其中人工智能主要用于构建执行诊断和提出治疗建议的程序。在数字乳房x线照相术中,数据挖掘技术用于检测和描述图像和临床报告中的异常。在现有的方法中,使用神经网络和支持向量机(SVM)分类器对临床数据或图像的统计特征进行乳房x光图像分类。本文提出将临床特征与影像特征相结合,评价特征提取在乳腺x线图像聚类分类中的应用。最初,乳房x光数据集分为训练集和测试集。对于训练集和测试集,对图像进行去噪、去背景等预处理,识别感兴趣区域(ROI)。从ROI中提取统计特征,并从数据集中获得临床数据。使用k-means算法对特征集进行聚类,然后使用SVM分类对图像进行良性或恶性分类。本文提出的先聚类后分类方法的准确率为86.11%,高于直接分类方法的准确率80.0%。以上结果证明了该方法在精度方面的优越性。
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