2021年关于深度学习癌症图像分析的最新进展

IF 6.4 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
N. Kurian, A. Sethi, Anil Reddy Konduru, A. Mahajan, S. Rane
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引用次数: 8

摘要

基于深度学习(DL)的医学图像解释已经达到了将外部研究项目扩展到翻译项目的关键时刻,并准备好进入诊所。过去十年中,数据可用性、深度学习技术以及计算能力的进步加速了这一进程。通过这段旅程,今天我们对在临床护理中广泛采用深度学习的挑战和陷阱有了更好的了解,我们认为,这应该并且将在未来几年内推动这一领域的进步。这些挑战中最重要的是医疗机构缺乏适当的数字化环境,缺乏足够的开放和代表性数据集,可以在其上训练和测试DL算法,以及广泛使用的DL训练算法对医学图像和存储库的某些普遍病理特征缺乏鲁棒性。在这篇综述中,我们概述了成像在肿瘤学中的作用,不同的技术正在塑造DL算法为临床使用做准备的方式,以及在DL技术在临床中找到一个家之前DL技术仍然需要解决的问题。最后,我们还总结了深度学习如何潜在地推动数字病理学、供应商中立档案、图片存档和通信系统的采用。我们提醒,各自的研究人员可能会发现他们自己领域的覆盖率处于高水平。这是经过设计的,因为这种形式的目的是只介绍那些从深度学习和医学研究之外的人,分别了解这两个领域的主要关注点和局限性,而不是告诉他们一些关于他们自己的新东西。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A 2021 update on cancer image analytics with deep learning
Deep learning (DL)‐based interpretation of medical images has reached a critical juncture of expanding outside research projects into translational ones, and is ready to make its way to the clinics. Advances over the last decade in data availability, DL techniques, as well as computing capabilities have accelerated this journey. Through this journey, today we have a better understanding of the challenges to and pitfalls of wider adoption of DL into clinical care, which, according to us, should and will drive the advances in this field in the next few years. The most important among these challenges are the lack of an appropriately digitized environment within healthcare institutions, the lack of adequate open and representative datasets on which DL algorithms can be trained and tested, and the lack of robustness of widely used DL training algorithms to certain pervasive pathological characteristics of medical images and repositories. In this review, we provide an overview of the role of imaging in oncology, the different techniques that are shaping the way DL algorithms are being made ready for clinical use, and also the problems that DL techniques still need to address before DL can find a home in clinics. Finally, we also provide a summary of how DL can potentially drive the adoption of digital pathology, vendor neutral archives, and picture archival and communication systems. We caution that the respective researchers may find the coverage of their own fields to be at a high‐level. This is so by design as this format is meant to only introduce those looking in from outside of deep learning and medical research, respectively, to gain an appreciation for the main concerns and limitations of these two fields instead of telling them something new about their own.
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来源期刊
Wiley Interdisciplinary Reviews-Data Mining and Knowledge Discovery
Wiley Interdisciplinary Reviews-Data Mining and Knowledge Discovery COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, THEORY & METHODS
CiteScore
22.70
自引率
2.60%
发文量
39
审稿时长
>12 weeks
期刊介绍: The goals of Wiley Interdisciplinary Reviews-Data Mining and Knowledge Discovery (WIREs DMKD) are multifaceted. Firstly, the journal aims to provide a comprehensive overview of the current state of data mining and knowledge discovery by featuring ongoing reviews authored by leading researchers. Secondly, it seeks to highlight the interdisciplinary nature of the field by presenting articles from diverse perspectives, covering various application areas such as technology, business, healthcare, education, government, society, and culture. Thirdly, WIREs DMKD endeavors to keep pace with the rapid advancements in data mining and knowledge discovery through regular content updates. Lastly, the journal strives to promote active engagement in the field by presenting its accomplishments and challenges in an accessible manner to a broad audience. The content of WIREs DMKD is intended to benefit upper-level undergraduate and postgraduate students, teaching and research professors in academic programs, as well as scientists and research managers in industry.
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