Deep learning has become the mainstream technology in computer vision, and it has received extensive research interest in developing new medical image processing algorithms to support disease detection and diagnosis. As compared to conventional machine learning technologies, the major advantage of deep learning is that models can automatically identify and recognize representative features through the hierarchal model architecture, while avoiding the laborious development of hand-crafted features. In this paper, we reviewed and summarized more than 200 recently published papers to provide a comprehensive overview of applying deep learning methods in various medical image analysis tasks. Especially, we emphasize the latest progress and contributions of state-of-the-art unsupervised and semi-supervised deep learning in medical images, which are summarized based on different application scenarios, including lesion classification, segmentation, detection, and image registration. Additionally, we also discussed the major technical challenges and suggested the possible solutions in future research efforts.
翻译:与传统的机器学习技术相比,深层学习的主要好处是,模型可以通过等级模型结构自动识别和识别代表性特征,同时避免手工制作特征的艰苦发展。在本文件中,我们审查并总结了最近发表的200多篇论文,以全面概述在各种医学图像分析任务中应用深层学习方法的情况。特别是,我们强调医学图像中最先进的、不受监督和半受监督的深层学习的最新进展和贡献,这些进展和贡献是根据不同的应用设想,包括损害分类、分解、检测和图像登记而总结的。此外,我们还讨论了主要的技术挑战,并提出了未来研究工作的可能解决办法。