Generative Artificial Intelligence in Nuclear Medicine Education.

IF 1 Q4 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Geoffrey M Currie
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Abstract

Generative artificial intelligence (genAI) has become assimilated into the education, research, and clinical domains of nuclear medicine and health care. Understanding the principles, limitations, and applications of genAI is important for capitalizing on its transformative potential in student education and impact on sustainability within both the education and the clinical sectors. In this article, the fundamental principles and applications of artificial intelligence are explored from the context of nuclear medicine. GenAI technologies are defined and capabilities outlined. A detailed investigation of the potential and limitations of both text-to-text and text-to-image genAI based in empiric and anecdotal research is provided. Specific examples of applications of text-to-text and text-to-image genAI are provided. GenAI has the potential to reinvigorate nuclear medicine education by supporting and enriching student learning and to be transformative in nuclear medicine education, but at the time of writing, both text-to-text and text-to-image genAI are far from revolutionary. Nonetheless, the horizon promises transformative education applications of genAI. GenAI can enhance nuclear medicine education and student learning and provide economies to improve sustainability in the education and clinical sectors. Although there are some limitations to current capabilities, this rapidly evolving space will soon offer potential benefits to education.

核医学教育中的生成式人工智能。
生成式人工智能(genAI)已经融入到核医学和卫生保健的教育、研究和临床领域。了解基因人工智能的原理、局限性和应用对于充分利用其在学生教育中的变革潜力以及对教育和临床部门可持续性的影响至关重要。本文从核医学的角度探讨了人工智能的基本原理和应用。定义了GenAI技术并概述了其功能。基于经验和轶事研究的文本到文本和文本到图像基因的潜力和局限性的详细调查提供。提供了文本到文本和文本到图像genAI的具体应用实例。GenAI有潜力通过支持和丰富学生的学习来重振核医学教育,并在核医学教育方面具有变革性,但在撰写本文时,文本到文本和文本到图像的GenAI都远未达到革命性的程度。尽管如此,基因人工智能在教育领域的应用仍有望带来变革。GenAI可以加强核医学教育和学生学习,并提供经济以改善教育和临床部门的可持续性。尽管目前的能力有一些限制,但这个快速发展的空间将很快为教育提供潜在的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of nuclear medicine technology
Journal of nuclear medicine technology RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
1.90
自引率
15.40%
发文量
57
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