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首页> 外文期刊>International Journal of Computational Intelligence and Applications >NEURAL CLASSIFICATION OF MASS ABNORMALITIES WITH DIFFERENT TYPES OF FEATURES IN DIGITAL MAMMOGRAPHY
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NEURAL CLASSIFICATION OF MASS ABNORMALITIES WITH DIFFERENT TYPES OF FEATURES IN DIGITAL MAMMOGRAPHY

机译:数字化X线摄影术中具有不同特征类型的异常质量的神经分类

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Early detection of breast abnormalities remains the primary prevention against breast cancer despite the advances in breast cancer diagnosis and treatment. Presence of mass in breast tissues is highly indicative of breast cancer. The research work presented in this paper investigates the significance of different types of features using proposed neural network based classification technique to classify mass type of breast abnormalities in digital mammograms into malignant and benign. 14 gray level based features, four BI-RADS features, patient age feature and subtlety value feature have been explored using the proposed research methodology to attain maximum classification on test dataset. The proposed research technique attained a 91% testing classification rate with a 100% training classification rate on digital mammograms taken from the DDSM benchmark database.
机译:尽管乳腺癌的诊断和治疗取得了进步,但早期发现乳腺癌异常仍然是预防乳腺癌的主要方法。乳房组织中肿块的存在高度指示了乳腺癌。本文提出的研究工作使用拟议的基于神经网络的分类技术,将数字化X线摄片中的乳房异常的肿块类型分为恶性和良性,研究了不同类型特征的重要性。使用提出的研究方法探索了14个基于灰度的特征,四个BI-RADS特征,患者年龄特征和微妙价值特征,以在测试数据集上获得最大分类。所提出的研究技术在从DDSM基准数据库中获取的数字乳房X线照片上达到91%的测试分类率和100%的训练分类率。

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