基于深度学习的小样本医学影像分类综述

Kai Wang
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引用次数: 4

摘要

深度学习(DL)已被证明是一种很有前途的图像分析技术,如图像分类和物体识别。与其他领域相比,医学成像中深度学习任务的准确性在很大程度上取决于数据集的大小。然而,DL一直受到医学成像中各种伦理和财务原因导致的小样本数据集问题的困扰。数据增强和迁移学习是增强深度学习算法在医学成像中的实用性的两种最常用的方法。本文讨论了包括图像处理和生成对抗网络在内的数据增强方法。讨论了迁移学习的特征提取和微调方法。最后,文章提到了许多建筑的实际应用,优缺点和未来的工作。
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An Overview of Deep Learning Based Small Sample Medical Imaging Classification
Deep Learning (DL) has been proven to be a promising technique for image analysis tasks such as image classification and object recognition. Compared with other fields, the accuracy of DL tasks in medical imaging depends heavily on the dataset volume. However, DL has been suffering from the problem of small sample datasets caused by a variety of ethical and financial reasons in medical imaging. Data augmentation and transfer learning are the two most commonly used approaches to enhance the practicability of the DL algorithms in medical imaging. This article discusses the data augmentation methods including image manipulation and generative adversarial networks. Feature-extracting and fine-tuning methods of transfer learning are also discussed. Finally, the paper mentions the real-life applications of many architectures, advantages and disadvantages, and future works.
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