Fitness for Purpose of Text-to-Image Generative Artificial Intelligence Image Creation in Medical Imaging.

IF 1 Q4 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Journal of nuclear medicine technology Pub Date : 2025-01-15 DOI:10.2967/jnmt.124.268402
Geoffrey Currie, Johnathan Hewis, Elizabeth Hawk, Hosen Kiat, Eric Rohren
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Abstract

The recent emergence of text-to-image generative artificial intelligence (AI) diffusion models such as DALL-E, Firefly, Stable Diffusion, and Midjourney has been touted with popular hype about the transformative potential in health care. This hype-driven, rapid assimilation comes with few professional guidelines and without regulatory oversight. Despite documented limitations, text-to-image generative AI creations have permeated nuclear medicine and medical imaging. Given the representation of medical imaging professions and potential dangers in misrepresentation and errors from both a reputation and community harm perspective, critical quality assurance of text-to-image generative AI creations is required. Here, tools for evaluating the quality and fitness for purpose of generative AI images in nuclear medicine and imaging are discussed. Generative AI text-to-image creation suffers quality limitations that are generally prohibitive of mainstream use in nuclear medicine and medical imaging. Text-to-image generative AI diffusion models should be used within a framework of critical quality assurance for quality and accuracy.

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医学成像中文本到图像生成人工智能图像创建的适用性。
最近出现的文本到图像生成式人工智能(AI)扩散模型,如DALL-E、Firefly、Stable diffusion和Midjourney,已经被广泛宣传为医疗保健领域的变革潜力。这种炒作驱动的快速同化几乎没有专业指导方针,也没有监管监督。尽管有文献记载的局限性,但文本到图像生成的人工智能创造已经渗透到核医学和医学成像领域。鉴于医学成像专业的代表性以及从声誉和社区危害的角度来看,虚假陈述和错误的潜在危险,需要对文本到图像生成人工智能创作进行关键的质量保证。本文讨论了核医学和成像中生成人工智能图像的质量和适应度评估工具。生成式人工智能文本到图像的创建存在质量限制,通常禁止在核医学和医学成像中主流使用。文本到图像生成的人工智能扩散模型应该在质量和准确性的关键质量保证框架内使用。
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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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