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Breast cancer detection using deep convolutional neural networks and support vector machines

机译:使用深度卷积神经网络和支持向量机进行乳腺癌检测

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摘要

It is important to detect breast cancer as early as possible. In this manuscript, a new methodology for classifying breast cancer using deep learning and some segmentation techniques are introduced. A new computer aided detection (CAD) system is proposed for classifying benign and malignant mass tumors in breast mammography images. In this CAD system, two segmentation approaches are used. The first approach involves determining the region of interest (ROI) manually, while the second approach uses the technique of threshold and region based. The deep convolutional neural network (DCNN) is used for feature extraction. A well-known DCNN architecture named AlexNet is used and is fine-tuned to classify two classes instead of 1,000 classes. The last fully connected (fc) layer is connected to the support vector machine (SVM) classifier to obtain better accuracy. The results are obtained using the following publicly available datasets (1) the digital database for screening mammography (DDSM); and (2) the Curated Breast Imaging Subset of DDSM (CBIS-DDSM). Training on a large number of data gives high accuracy rate. Nevertheless, the biomedical datasets contain a relatively small number of samples due to limited patient volume. Accordingly, data augmentation is a method for increasing the size of the input data by generating new data from the original input data. There are many forms for the data augmentation; the one used here is the rotation. The accuracy of the new-trained DCNN architecture is 71.01% when cropping the ROI manually from the mammogram. The highest area under the curve (AUC) achieved was 0.88 (88%) for the samples obtained from both segmentation techniques. Moreover, when using the samples obtained from the CBIS-DDSM, the accuracy of the DCNN is increased to 73.6%. Consequently, the SVM accuracy becomes 87.2% with an AUC equaling to 0.94 (94%). This is the highest AUC value compared to previous work using the same conditions.
机译:尽早发现乳腺癌很重要。在此手稿中,介绍了一种使用深度学习和某些分割技术对乳腺癌进行分类的新方法。提出了一种新的计算机辅助检测(CAD)系统,用于对乳房X光检查图像中的良性和恶性肿块进行分类。在此CAD系统中,使用了两种分割方法。第一种方法涉及手动确定感兴趣区域(ROI),而第二种方法则使用基于阈值和区域的技术。深度卷积神经网络(DCNN)用于特征提取。使用了一种称为AlexNet的著名DCNN架构,并对其进行了微调以对两个类进行分类,而不是对1,000个类进行分类。最后一个完全连接(fc)层连接到支持向量机(SVM)分类器,以获得更好的准确性。使用以下可公开获得的数据集获得结果(1)乳腺钼靶筛查数字数据库(DDSM); (2)DDSM的乳腺影像学子集(CBIS-DDSM)。对大量数据进行训练可提供较高的准确率。尽管如此,由于患者数量有限,生物医学数据集包含的样本数量相对较少。因此,数据扩充是一种用于通过从原始输入数据生成新数据来增加输入数据的大小的方法。数据扩充有多种形式。这里使用的是旋转。从乳房X线照片手动裁剪ROI时,新训练的DCNN架构的准确性为71.01%。两种分割技术获得的样品的曲线下面积(AUC)最高,为0.88(88%)。此外,当使用从CBIS-DDSM获得的样本时,DCNN的准确性提高到73.6%。因此,在AUC等于0.94(94%)的情况下,SVM精度变为87.2%。与在相同条件下的先前工作相比,这是最高的AUC值。

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