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首页> 外文期刊>IEEE Transactions on Medical Imaging >Classification of mass and normal breast tissue: a convolution neural network classifier with spatial domain and texture images
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Classification of mass and normal breast tissue: a convolution neural network classifier with spatial domain and texture images

机译:乳腺组织和正常组织的分类:具有空间域和纹理图像的卷积神经网络分类器

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摘要

The authors investigated the classification of regions of interest (ROI's) on mammograms as either mass or normal tissue using a convolution neural network (CNN). A CNN is a backpropagation neural network with two-dimensional (2-D) weight kernels that operate on images. A generalized, fast and stable implementation of the CNN was developed. The input images to the CNN were obtained from the ROI's using two techniques. The first technique employed averaging and subsampling. The second technique employed texture feature extraction methods applied to small subregions inside the ROI. Features computed over different subregions were arranged as texture images, which were subsequently used as CNN inputs. The effects of CNN architecture and texture feature parameters on classification accuracy were studied. Receiver operating characteristic (ROC) methodology was used to evaluate the classification accuracy. A data set consisting of 168 ROIs containing biopsy-proven masses and 504 ROI's containing normal breast tissue was extracted from 168 mammograms by radiologists experienced in mammography. This data set was used for training and testing the CNN. With the best combination of CNN architecture and texture feature parameters, the area under the test ROC curve reached 0.87, which corresponded to a true-positive fraction of 90% at a false positive fraction of 31%. The authors' results demonstrate the feasibility of using a CNN for classification of masses and normal tissue on mammograms.
机译:作者使用卷积神经网络(CNN)研究了乳房X线照片上感兴趣区域(ROI's)是质量组织还是正常组织的分类。 CNN是一种反向传播神经网络,具有在图像上运行的二维(2-D)权重内核。开发了CNN的通用,快速和稳定的实现。 CNN的输入图像是使用两种技术从ROI获得的。第一种技术采用平均和二次采样。第二种技术是将纹理特征提取方法应用于ROI内部的小区域。将在不同子区域上计算出的特征安排为纹理图像,然后将其用作CNN输入。研究了CNN体系结构和纹理特征参数对分类精度的影响。接收器工作特性(ROC)方法用于评估分类准确性。乳房X线摄影经验丰富的放射线医师从168幅乳房X线照片中提取出包含168个ROI(包含活检证实的肿块)和504个ROI(包含正常乳腺组织)的数据集。该数据集用于训练和测试CNN。使用CNN架构和纹理特征参数的最佳组合,测试ROC曲线下的面积达到0.87,对应于90%的真阳性分数和31%的假阳性分数。作者的结果证明了使用CNN在乳房X线照片上对肿块和正常组织进行分类的可行性。

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