A novel fused convolutional neural network for biomedical image classification

被引:0
作者
Shuchao Pang
Anan Du
Mehmet A. Orgun
Zhezhou Yu
机构
[1] Jilin University,Department of Computational Intelligence, College of Computer Science and Technology
[2] Macquarie University,Department of Computing
[3] China Mobile (HangZhou) Information Technology Co.,undefined
[4] Ltd,undefined
来源
Medical & Biological Engineering & Computing | 2019年 / 57卷
关键词
Biomedical image classification; Convolutional neural networks; Deep learning; Deep feature; Shallow feature;
D O I
暂无
中图分类号
学科分类号
摘要
With the advent of biomedical imaging technology, the number of captured and stored biomedical images is rapidly increasing day by day in hospitals, imaging laboratories and biomedical institutions. Therefore, more robust biomedical image analysis technology is needed to meet the requirement of the diagnosis and classification of various kinds of diseases using biomedical images. However, the current biomedical image classification methods and general non-biomedical image classifiers cannot extract more compact biomedical image features or capture the tiny differences between similar images with different types of diseases from the same category. In this paper, we propose a novel fused convolutional neural network to develop a more accurate and highly efficient classifier for biomedical images, which combines shallow layer features and deep layer features from the proposed deep neural network architecture. In the analysis, it was observed that the shallow layers provided more detailed local features, which could distinguish different diseases in the same category, while the deep layers could convey more high-level semantic information used to classify the diseases among the various categories. A detailed comparison of our approach with traditional classification algorithms and popular deep classifiers across several public biomedical image datasets showed the superior performance of our proposed method for biomedical image classification. In addition, we also evaluated the performance of our method in modality classification of medical images using the ImageCLEFmed dataset.
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页码:107 / 121
页数:14
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