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Using a Wavelet-Based and Fine-Tuned Convolutional Neural Network for Classification of Breast Density in Mammographic Images

机译:利用基于小波和微调卷积神经网络进行乳房X线图中乳房密度的分类

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Classification of breast density is significantly important during the process of breast diagnosis. The purpose of this study was to develop a useful computer-ized tool to help radiologists determine the patient’s breast density category on the mammogram. In this article, we presented a model for automatically classi-fying breast densities by employing a wavelet transform-based and fine-tuned convolutional neural network (CNN). We modified a pre-trained AlexNet model by removing the last two fully connected (FC) layers and appending two newly created layers to the remaining structure. Unlike the common CNN-based methods that use original or pre-processed images as inputs, we adopted the use of redundant wavelet coefficients at level 1 as inputs to the CNN model. Our study mainly focused on discriminating between scattered density and heterogeneously dense which are the two most difficult density cat-egories to differentiate for radiologists. The proposed system achieved 88.3% overall accuracy. In order to demonstrate the effectiveness and usefulness of the proposed method, the results obtained from a conventional fine-tuning CNN model was compared with that from the proposed method. The results demon-strate that the proposed technique is very promising to help radiologists and serve as a second eye for them to classify breast density categories in breast cancer screening.
机译:在乳房诊断过程中,乳房密度的分类显着重要。本研究的目的是开发一种有用的计算机Ized工具,以帮助放射科医生确定乳房X光检查的患者的乳房密度类别。在本文中,我们通过采用基于小波变换和微调卷积神经网络(CNN)来提出了一种自动分类的乳房密度的模型。我们通过删除最后两个完全连接(FC)层并将两个新创建的图层附加到剩余结构来修改预先训练的亚思网模型。与使用原始或预处理图像的基于CNN的基于CNN的方法不同,我们采用在CNN模型中使用级别1的冗余小波系数。我们的研究主要集中在散射密度和异质地密集之间的鉴别,这是用于区分放射科医生的两个最困难的密度猫造香机。所提出的系统总体准确性达到了88.3%。为了证明所提出的方法的有效性和有用性,将从传统的微调CNN模型获得的结果与来自所提出的方法进行比较。结果表明,拟议的技术非常有前途,帮助放射科医师作为第二只眼睛,以对他们分类乳腺癌筛查中的乳房密度类别。

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