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Breast Cancer Diagnosis: An Intelligent Detection System Using Wavelet Neural Network

机译:乳腺癌诊断:使用小波神经网络的智能检测系统

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Breast cancer represents the leading cause of fatality among cancers for women and there is still no known way of preventing this pathology. Early detection is the only solution that allows treatment before the cancer spreads to other parts of the body. Diagnosis of breast cancer at the early stage is a very difficult task as the cancerous tumors are embedded in normal breast tissue structures. Aiming to model breast cancer prediction system, we propose a novel machine learning approach based on wavelets. The new model, called wavelet neural network (WNN), extends the existing artificial neural network by considering wavelets as activation function. The texture information in the area of interest provides important diagnostic information about the underlying biological process for the benign or malignant tissue and therefore should be included in the analysis. By exploiting the texture information, a computerized detection algorithm is developed that are not only accurate but also computationally efficient for cancer detection in mammograms. The texture features are fed to the WNN classifier for classification of malignant/benign cancers. An experimental analysis performed on a set of 216 mammograms from screening centres has shown the effectiveness of the proposed method.
机译:乳腺癌代表癌症癌症的致命原因,仍然没有已知的防止这种病理方法。早期检测是允许在癌症蔓延到身体其他部位之前进行治疗的唯一解决方案。早期乳腺癌的诊断是一种非常困难的任务,因为癌症肿瘤嵌入正常的乳房组织结构中。旨在模拟乳腺癌预测系统,我们提出了一种基于小波的新型机器学习方法。新模型称为小波神经网络(WNN),通过考虑小波作为激活功能来扩展现有的人工神经网络。兴趣领域的纹理信息提供有关良性或恶性组织的潜在生物学过程的重要诊断信息,因此应包括在分析中。通过利用纹理信息,开发了一种计算机化检测算法,不仅是准确的,而且还用于乳房X光检查中的癌症检测。纹理功能被馈送到WNN分类器,用于分类恶性/良性癌症。从筛选中心的一组216乳房X线照片上进行的实验分析表明了该方法的有效性。

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