FuzzyDeepNets based feature extraction for classification of mammograms

Jyoti Dabass , Manju Dabass , Bhupender Singh Dabass
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Abstract

Breast cancer is one of the most aggressive tumors that claims the lives of women each year. Radiologists recommend mammography to detect cancer at the early stages. Masses, micro-calcifications, and distortion in mammography indicate breast cancer. This paper proposes FuzzyDeepNets for extracting the features and the Hanman transform classifier for the classification of mammograms. In this work, mammograms are categorized based on abnormality present, type of abnormality, and the characteristics of the abnormality present. FuzzyDeepNets allows us to skip the layers thereby reducing the computational complexity of the deep learning architectures. Principal component analysis helps in reducing the dimensionality of the selected features. The results achieved using proposed method on publicly available mini-MIAS, DDSM, INbreast and private database surpasses the results of the state-of-the-art techniques used for comparison. Results of the proposed method are clinically relevant as they are validated by expert radiologists.

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基于模糊深度网络的乳房x线照片分类特征提取
乳腺癌是每年夺去女性生命的最具侵略性的肿瘤之一。放射科医生建议在早期阶段进行乳房x光检查以发现癌症。乳房x光检查中的肿块、微钙化和变形提示乳腺癌。本文提出了模糊深度网络用于特征提取,汉曼变换分类器用于乳房x线照片分类。在这项工作中,乳房x线照片是根据异常的存在,异常的类型,以及异常的特征来分类的。FuzzyDeepNets允许我们跳过层,从而降低深度学习架构的计算复杂性。主成分分析有助于降低所选特征的维数。在公开提供的迷你mias、DDSM、INbreast和私人数据库上使用拟议方法取得的结果超过了用于比较的最先进技术的结果。所提出的方法的结果是临床相关的,因为他们是由专家放射科医生验证。
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来源期刊
Intelligence-based medicine
Intelligence-based medicine Health Informatics
CiteScore
5.00
自引率
0.00%
发文量
0
审稿时长
187 days
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