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Classification of Breast Ultrasound Images Based on Convolutional Neural Networks - A Comparative Study

机译:基于卷积神经网络的乳房超声图像分类 - 比较研究

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Computer aided diagnosis (CAD) helps physicians towards an early characterization of tumors in different biomedical tissues, including Breast. Deep learning (DL) based image classification, especially convolutional neural networks (CNNs), has achieved a noticeable success in automatic differentiation of breast ultrasound (BUS) images through the last few years. In this paper: ten well-known pretrained CNNs classification models (ResNet18, ResNet50, ResNet101, InceptionV3, InceptionResNetV2, GoogleNet, MobilenetV2, SqueezeNet, DenseNet201, and Xception) have been utilized to classify BUS images by transfer learning (TL). A dataset of 780 BUS images (133 normal, 437 benign, and 210 malignant) has been utilized in training and validation. A selected 375 BUS images from the dataset have been utilized to evaluate the classification's accuracy of each CNN model after TL process. Ultrasound's speckle noise effect on classification has been studied by applying a simulated multiplicative speckle noise to the mentioned 375 BUS images before being classified by the ten CNN models. Three restoration approaches have been applied to treat speckled BUS images before being classified. Accuracy evaluation results have represented different values for each CNN model over all 375 BUS images through different studied circumstances. The best accuracy's value was for: ResNet101 when the input images were clear with high resolution, SqueezeNet in case of speckled input images, and InceptionResNetV2 in case of restored images using the three applied restoration schemes. So, in case of speckled BUS images, it is recommended to utilize a proper preprocessing step for image enhancement before applying a CNN based classification model (InceptionResNetV2 is preferred). Ten modified and trained CNNs models for BUS images' classification (input image size: 128 by 128 by 3) utilized in this study are available to researchers at: https://www.kaggle.com/mohammedtgadallah/ten-cnns-for-breast-us-images-classification
机译:计算机辅助诊断(CAD)有助于医生迈向不同生物医学组织中肿瘤的早期表征,包括乳房。基于深度学习(DL)的图像分类,尤其是卷积神经网络(CNNS),在过去几年中,在乳房超声(总线)图像的自动分化中取得了显着的成功。在本文中:十个众所周知的佩带CNNS分类模型(Reset18,Reset50,Reset101,Inceplenet,MobileNetv2,Screezenet,DenSenet201和Xcepion)已经利用来通过传输学习(TL)来分类总线图像。在培训和验证方面已经使用了780母线图像的数据集(133正常,437个良性和210个恶性)。已经利用来自数据集的选定的375总线图像来评估TL过程之后每个CNN模型的分类的准确性。通过将模拟的乘法散斑噪声应用于所提到的375总线图像之前,研究了超声波对分类的噪声效应。三种恢复方法已应用于在分类之前处理斑点的总线图像。通过不同的研究环境,精度评估结果对所有375个总线图像上的每个CNN模型表示不同的值。最佳精度的值为:Resnet101当输入图像以高分辨率清晰时清晰,在使用三个应用恢复方案的恢复图像的情况下,IncepionResNetv2。因此,在斑点总线图像的情况下,建议在应用基于CNN的分类模型之前利用适当的预处理步骤来进行图像增强(InceptionResNetv2是优选的)。本研究中使用的10个用于总线图像的分类(输入图像尺寸:128到3)的10个修改和训练的CNNS模型可用于研究人员:https://www.kaggle.com/mohammedtgadallah/ten-cnns-母乳 - 美国 - 图像分类

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