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Intellectual detection and validation of automated mammogram breast cancer images by multi-class SVM using deep learning classification

机译:使用深度学习分类,多级SVM自动检测和验证自动乳腺乳腺乳腺癌图像

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Breast cancer is an important cause of death in females. Early recognition of this disease with the assistance of mammography reduces the death rate. Deep learning (DL) is an approach being utilized and requested by radiologists to assist in making an accurate diagnosis, and it can help to improve outcome predictions. This paper includes a new approach, applied on the Mini-MIAS dataset of 322 images, involving a pre-processing method and inbuilt feature extraction using K-means clustering for Speed-Up Robust Features (SURF) selection. A new layer is added at the classification level, which carries out a ratio of 70% training to 30% testing of the deep neural network and Multiclass Support Vector Machine (MSVM). The outcome described herein demonstrates that the accuracy rate of the proposed automated DL method using K-means clustering with MSVM is improved as compared with a decision tree model. Experimental results show that the average accuracy (ACC) rates of the three classes, i.e., normal, benign and malignant cancer, using the proposed method, are 95%, 94% and 98%, respectively. The increased sensitivity rate is 3%, specificity is 2%, and Receiver Operating Characteristics (ROC) area is 0.99 using SVM compared to the Multi-Layer Perceptron (MLP) and J48+K-mean clustering WEKA manual approach. A 10-fold cross validation was used, and the obtained results for the Support Vector Machine (SVM), K-nearest neighbour (KNN), linear discriminant analysis (LDA) and Decision Tree were 96.9%, 93.8%, 89.7% and 88.7%, respectively.
机译:乳腺癌是女性死亡的重要原因。利用乳房X线摄影的援助,早期识别这种疾病降低了死亡率。深度学习(DL)是放射科医生使用和要求的方法,以协助进行准确的诊断,并有助于改善结果预测。本文包括一种新的方法,应用于322图像的Mini-MiS数据集,涉及使用K-means聚类进行加速鲁棒特征(冲浪)选择的预处理方法和内置特征提取。在分类级别添加了一个新层,该层执行了70%训练的比率为深度神经网络和多字母支持向量机(MSVM)的30%测试。与决策树模型相比,本文描述的结果表明,使用K-means群体使用K-means聚类的提出的自动化DL方法的精度率提高。实验结果表明,使用该方法的三类,即正常,良性和恶性癌症的平均精度(ACC)率分别为95%,94%和98%。增加的灵敏度率为3%,特异性为2%,与多层Perceptron(MLP)和J48 + k均值聚类的Weka手册方法相比,使用SVM,接收器操作特性(ROC)区域为0.99。使用了10倍的交叉验证,并获得了支持向量机(SVM),K最近邻居(KNN),线性判别分析(LDA)和决策树的得到结果为96.9%,93.8%,89.7%和88.7 %, 分别。

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