医学图像分析的计算机视觉和机器学习:最新进展、挑战和前进方向

Eyad Elyan, Pattaramon Vuttipittayamongkol, Pamela Johnston, Kyle Martin, Kyle McPherson, C. Moreno-García, Chrisina Jayne, Md. Mostafa Kamal Sarker
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引用次数: 30

摘要

深度学习和深度卷积神经网络领域的最新发展显著地推动了计算机视觉(CV)和图像分析与理解领域的发展。复杂的任务,如分类和分割医学图像,定位和识别感兴趣的对象,已经变得不那么具有挑战性了。这一进展有可能加速利用CV的众多医学应用的研究和部署。然而,在现实中,实际部署到一线卫生设施的实例有限。在本文中,我们研究了应用于医学领域的CV技术的现状。我们讨论了CV和智能数据驱动医疗应用中的主要挑战,并提出了加快CV应用在卫生实践中的研究、开发和部署的未来方向。首先,我们批判性地回顾了CV领域解决复杂视觉任务的现有文献,包括:医学图像分类;从图像中识别形状和物体;还有医疗细分。其次,我们深入讨论了各种挑战,这些挑战被认为是加速智能CV方法在现实医疗应用和医院中的研究、开发和部署的障碍。最后,我们讨论了未来的发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer vision and machine learning for medical image analysis: recent advances, challenges, and way forward
The recent development in the areas of deep learning and deep convolutional neural networks has significantly progressed and advanced the field of computer vision (CV) and image analysis and understanding. Complex tasks such as classifying and segmenting medical images and localising and recognising objects of interest have become much less challenging. This progress has the potential of accelerating research and deployment of multitudes of medical applications that utilise CV. However, in reality, there are limited practical examples being physically deployed into front-line health facilities. In this paper, we examine the current state of the art in CV as applied to the medical domain. We discuss the main challenges in CV and intelligent data-driven medical applications and suggest future directions to accelerate research, development, and deployment of CV applications in health practices. First, we critically review existing literature in the CV domain that addresses complex vision tasks, including: medical image classification; shape and object recognition from images; and medical segmentation. Second, we present an in-depth discussion of the various challenges that are considered barriers to accelerating research, development, and deployment of intelligent CV methods in real-life medical applications and hospitals. Finally, we conclude by discussing future directions.
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