Automatic detection and classification of cancerous masses in mammogram

S. P. Ngayarkanni, N. Kamal, V. Thavavel
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引用次数: 7

Abstract

Breast cancer is one of the most common forms of cancer in women. In order to reduce the death rate , early detection of cancerous regions in mammogram images is needed. The existing system is not so accurate and it is time consuming. The Proposed system is mainly used for automatic segmentation of the mammogram images and classifies them as benign, malignant or normal based on the decision tree ID3 algorithm. A hybrid method of data mining technique is used to predict the texture features which play a vital role in classification. The sensitivity, the specificity, positive prediction value and negative prediction value of the proposed algorithm were determined and compared with the existing algorithms. The size and the stages of the tumor is detected using the ellipsoid volume formula which is calculated over the segmented region. Automatic classification of the mammogram MRI images is done through three layered ANN .The weights are adjusted based on the rule extracted from ID3 algorithm .Both qualitative and quantitative methods are used to detect the accuracy of the proposed system.The sensitivity, the specificity, positive prediction value and negative prediction value of the proposed algorithm accounts to 99.78%, 99.9%, 94% and 98.5% which rates very high when compared to the existing algorithms. This paper focuses on the comparative analysis of the existing methods and the proposed technique in terms of sensitivity, specificity, accuracy, time consumption and ROC.
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乳房x光检查中癌性肿块的自动检测与分类
乳腺癌是女性中最常见的癌症之一。为了降低死亡率,需要在乳房x光图像中及早发现癌变区域。现有的系统不太准确,而且耗时。该系统主要用于乳房x光片图像的自动分割,并基于决策树ID3算法对其进行良性、恶性或正常的分类。采用混合数据挖掘技术预测在分类中起重要作用的纹理特征。确定了所提算法的敏感性、特异性、正预测值和负预测值,并与现有算法进行了比较。使用在分割区域上计算的椭球体积公式来检测肿瘤的大小和分期。采用三层人工神经网络对乳房x线MRI图像进行自动分类,并根据ID3算法提取的规则调整权重,采用定性和定量两种方法检测系统的准确性。该算法的灵敏度、特异度、正预测值和负预测值分别达到99.78%、99.9%、94%和98.5%,与现有算法相比具有很高的评价。本文主要从敏感性、特异性、准确性、耗时和ROC等方面对现有方法和新技术进行比较分析。
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