Classification of Ultrasound Breast Images Using Fused Ensemble of Deep Learning Classifiers

E. A. Nehary, S. Rajan
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Abstract

Ultrasound (US) imaging is an affordable, radiation-free screening that has been successfully used for early stage breast cancer screening. Deep learning-based classifiers are currently being used to classify breast cancer. Deep learning requires large amount of dataset for training. However, currently available databases of breast cancer US images are small and the images have tumors of different sizes. Therefore, the deep learning-based classifiers are unable to provide good generalization. To address these challenges, we propose a fusion of three models namely transfer learning, multi-scale and autoencoder. Transfer learning model is based on VGG16 and is used to overcome the issue of limited data. Convolutional autoencoders extract features that can represent even noisy images. We propose a novel multi-scale deep learning model to address learning of US images with tumors of various sizes and shapes. These three models are trained independently and then their classification outputs are fused using differential evolution (DE) algorithm to get the final classification results. The proposed novel fused ensemble of deep learning-based classifiers is evaluated using two publicly available US datasets. Transfer learning, autoencoder, and multi-scale models individually achieve an accuracy of 88%, 85%, and 89% respectively. The fusion of the outputs of the three models using DE algorithm provides a classification accuracy with an accuracy of 93%. The source code available at https://github.com/EbrahimAli1989/Breast-Cancer-classification-.git.
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基于深度学习分类器融合集成的超声乳房图像分类
超声(US)成像是一种负担得起的、无辐射的筛查,已成功地用于早期乳腺癌筛查。基于深度学习的分类器目前被用于对乳腺癌进行分类。深度学习需要大量的数据集进行训练。然而,目前可用的乳腺癌图像数据库很小,图像中肿瘤大小不一。因此,基于深度学习的分类器无法提供良好的泛化。为了解决这些挑战,我们提出了迁移学习、多尺度和自编码器三种模型的融合。迁移学习模型基于VGG16,用于克服数据有限的问题。卷积自编码器提取的特征甚至可以表示有噪声的图像。我们提出了一种新的多尺度深度学习模型来解决具有不同大小和形状肿瘤的美国图像的学习问题。对这三个模型进行独立训练,然后使用差分进化(DE)算法将它们的分类输出融合,得到最终的分类结果。提出的基于深度学习的分类器的新型融合集成使用两个公开可用的美国数据集进行评估。迁移学习、自动编码器和多尺度模型分别达到88%、85%和89%的准确率。使用DE算法对三种模型的输出进行融合,分类准确率达到93%。源代码可从https://github.com/EbrahimAli1989/Breast-Cancer-classification-.git获得。
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