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Multivariate Feature Selection of Image Descriptors Data for Breast Cancer with Computer-Assisted Diagnosis

机译:乳腺癌的计算机辅助诊断图像描述符数据的多元特征选择

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Breast cancer is an important global health problem, and the most common type of cancer among women. Late diagnosis significantly decreases the survival rate of the patient; however, using mammography for early detection has been demonstrated to be a very important tool increasing the survival rate. The purpose of this paper is to obtain a multivariate model to classify benign and malignant tumor lesions using a computer-assisted diagnosis with a genetic algorithm in training and test datasets from mammography image features. A multivariate search was conducted to obtain predictive models with different approaches, in order to compare and validate results. The multivariate models were constructed using: Random Forest, Nearest centroid, and K-Nearest Neighbor (K-NN) strategies as cost function in a genetic algorithm applied to the features in the BCDR public databases. Results suggest that the two texture descriptor features obtained in the multivariate model have a similar or better prediction capability to classify the data outcome compared with the multivariate model composed of all the features, according to their fitness value. This model can help to reduce the workload of radiologists and present a second opinion in the classification of tumor lesions.
机译:乳腺癌是一个重要的全球性健康问题,也是妇女中最常见的癌症类型。晚期诊断会大大降低患者的生存率;然而,已经证明使用乳腺X射线摄影术进行早期检测是提高生存率的非常重要的工具。本文的目的是通过计算机辅助诊断和遗传算法从乳房X线照相术图像特征训练和测试数据集中,获得一个用于对良性和恶性肿瘤病变进行分类的多元模型。为了比较和验证结果,进行了多变量搜索以获得具有不同方法的预测模型。多元模型是使用遗传算法中的随机函数,最近质心和K最近邻(K-NN)策略作为成本函数构建的,该算法适用于BCDR公共数据库中的特征。结果表明,与由所有特征组成的多元模型相比,在多元模型中获得的两个纹理描述符特征根据其适应度值具有相似或更好的预测能力,可以对数据结果进行分类。该模型可以帮助减少放射科医生的工作量,并在肿瘤病变的分类中提出第二意见。

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