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Neural network feature selection for breast cancer diagnosis

机译:神经网络特征选择在乳腺癌诊断中的应用

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Abstract: More than 50 million women over the age of 40 are currently at risk for breast cancer in the United States. Computer-aided diagnosis, as a second opinion to radiologists, will aid in decreasing the number of false readings of mammograms. Neural network benefits are exploited at both the classification and feature selection stages in the development of a computer-aided breast cancer diagnostic system. The multilayer perceptron is used to classify and contrast three features (angular second moment, eigenmasses, and wavelets) developed to distinguish benign from malignant lesion in a database of 94 difficult-to-diagnose digitized microcalcification cases. System performance of 74 percent correct classifications is achieved. Feature selection techniques are presented which further improve performance. Neural and decision boundary-based methods are implemented, compared, and validated to isolate and remove useless features. The contribution from this analysis is an increase to 88 percent correct classification in system performance. These feature selection techniques can also process risk factor data. !18
机译:摘要:目前,美国有超过5000万名40岁以上的女性有患乳腺癌的风险。作为放射科医生的第二种意见,计算机辅助诊断将有助于减少乳房X线照片的误读次数。在计算机辅助乳腺癌诊断系统的开发中,在分类和特征选择阶段都利用了神经网络的优势。在94个难以诊断的数字化微钙化病例数据库中,多层感知器用于分类和对比三个特征(角秒矩,特征量和小波),以区分良性和恶性病变。达到74%正确分类的系统性能。提出了进一步提高性能的特征选择技术。实现,比较和验证了基于神经和决策边界的方法,以隔离和删除无用的功能。此分析的贡献是将系统性能的正确分类提高到88%。这些功能选择技术还可以处理风险因素数据。 !18

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