Department of Radiology, Policlinico Universitario, Cagliari, Italy.
National Institute of Technology Goa, India.
Eur J Radiol. 2019 May;114:14-24. doi: 10.1016/j.ejrad.2019.02.038. Epub 2019 Mar 2.
The advent of Deep Learning (DL) is poised to dramatically change the delivery of healthcare in the near future. Not only has DL profoundly affected the healthcare industry it has also influenced global businesses. Within a span of very few years, advances such as self-driving cars, robots performing jobs that are hazardous to human, and chat bots talking with human operators have proved that DL has already made large impact on our lives. The open source nature of DL and decreasing prices of computer hardware will further propel such changes. In healthcare, the potential is immense due to the need to automate the processes and evolve error free paradigms. The sheer quantum of DL publications in healthcare has surpassed other domains growing at a very fast pace, particular in radiology. It is therefore imperative for the radiologists to learn about DL and how it differs from other approaches of Artificial Intelligence (AI). The next generation of radiology will see a significant role of DL and will likely serve as the base for augmented radiology (AR). Better clinical judgement by AR will help in improving the quality of life and help in life saving decisions, while lowering healthcare costs. A comprehensive review of DL as well as its implications upon the healthcare is presented in this review. We had analysed 150 articles of DL in healthcare domain from PubMed, Google Scholar, and IEEE EXPLORE focused in medical imagery only. We have further examined the ethic, moral and legal issues surrounding the use of DL in medical imaging.
深度学习(DL)的出现将在不久的将来极大地改变医疗保健的提供方式。DL 不仅深刻地影响了医疗保健行业,也影响了全球业务。在短短几年内,自动驾驶汽车、机器人执行对人类有危险的工作、聊天机器人与人类操作员对话等进展表明,DL 已经对我们的生活产生了重大影响。DL 的开源性质和计算机硬件价格的降低将进一步推动这些变化。在医疗保健领域,由于需要自动化流程并发展无错误的范例,潜力是巨大的。DL 在医疗保健领域的出版物数量已经超过了其他领域,呈快速增长趋势,特别是在放射学领域。因此,放射科医生必须了解 DL 以及它与其他人工智能(AI)方法的区别。下一代放射学将看到 DL 的重要作用,并可能成为增强放射学(AR)的基础。AR 的更好临床判断将有助于提高生活质量并有助于做出救生决策,同时降低医疗保健成本。本文综述了 DL 及其对医疗保健的影响。我们从 PubMed、Google Scholar 和 IEEE EXPLORE 中分析了仅针对医学影像的医疗保健领域的 150 篇关于 DL 的文章。我们进一步研究了围绕在医学成像中使用 DL 的伦理、道德和法律问题。