Advances in Deep Learning-Based Medical Image Analysis.

Health data science Pub Date : 2021-05-19 eCollection Date: 2021-01-01 DOI:10.34133/2021/8786793
Xiaoqing Liu, Kunlun Gao, Bo Liu, Chengwei Pan, Kongming Liang, Lifeng Yan, Jiechao Ma, Fujin He, Shu Zhang, Siyuan Pan, Yizhou Yu
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Abstract

Importance. With the booming growth of artificial intelligence (AI), especially the recent advancements of deep learning, utilizing advanced deep learning-based methods for medical image analysis has become an active research area both in medical industry and academia. This paper reviewed the recent progress of deep learning research in medical image analysis and clinical applications. It also discussed the existing problems in the field and provided possible solutions and future directions.Highlights. This paper reviewed the advancement of convolutional neural network-based techniques in clinical applications. More specifically, state-of-the-art clinical applications include four major human body systems: the nervous system, the cardiovascular system, the digestive system, and the skeletal system. Overall, according to the best available evidence, deep learning models performed well in medical image analysis, but what cannot be ignored are the algorithms derived from small-scale medical datasets impeding the clinical applicability. Future direction could include federated learning, benchmark dataset collection, and utilizing domain subject knowledge as priors.Conclusion. Recent advanced deep learning technologies have achieved great success in medical image analysis with high accuracy, efficiency, stability, and scalability. Technological advancements that can alleviate the high demands on high-quality large-scale datasets could be one of the future developments in this area.

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基于深度学习的医学图像分析研究进展
重要性随着人工智能(AI)的蓬勃发展,特别是深度学习的最新进展,利用先进的基于深度学习的方法进行医学图像分析已成为医学界和学术界的一个活跃研究领域。本文综述了深度学习在医学图像分析和临床应用方面的研究进展。它还讨论了该领域存在的问题,并提供了可能的解决方案和未来的方向。亮点。本文综述了卷积神经网络技术在临床应用中的进展。更具体地说,最先进的临床应用包括四个主要的人体系统:神经系统、心血管系统、消化系统和骨骼系统。总体而言,根据现有的最佳证据,深度学习模型在医学图像分析中表现良好,但不可忽视的是,来自小规模医学数据集的算法阻碍了临床应用。未来的方向可能包括联合学习、基准数据集收集和利用领域主题知识作为先验。结论最近先进的深度学习技术在医学图像分析中取得了巨大成功,具有高精度、高效率、稳定性和可扩展性。技术进步可以缓解对高质量大规模数据集的高需求,这可能是该领域未来的发展之一。
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