放射学中基于图像的生成人工智能:全面更新。

IF 4.4 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Korean Journal of Radiology Pub Date : 2024-11-01 DOI:10.3348/kjr.2024.0392
Ha Kyung Jung, Kiduk Kim, Ji Eun Park, Namkug Kim
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引用次数: 0

摘要

图像生成人工智能(AI)已被应用于各种医疗领域的图像质量增强、领域转移和人工智能建模训练数据的扩充。图像生成式人工智能可以生成大量未标注的图像数据,从而为多种下游深度学习任务提供便利。然而,其评估方法和临床实用性尚未得到深入研究。本文总结了常用的生成对抗网络和扩散模型。此外,文章还总结了它们在放射学领域临床任务中的实用性,如直接利用图像、病变检测、分割和诊断。本文旨在通过 1) 回顾图像生成人工智能的基本理论,2) 讨论用于评估生成图像的方法,3) 概述生成图像的临床和研究用途,以及 4) 讨论幻觉问题,为读者使用图像生成人工智能进行放射学实践和研究提供指导。
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Image-Based Generative Artificial Intelligence in Radiology: Comprehensive Updates.

Generative artificial intelligence (AI) has been applied to images for image quality enhancement, domain transfer, and augmentation of training data for AI modeling in various medical fields. Image-generative AI can produce large amounts of unannotated imaging data, which facilitates multiple downstream deep-learning tasks. However, their evaluation methods and clinical utility have not been thoroughly reviewed. This article summarizes commonly used generative adversarial networks and diffusion models. In addition, it summarizes their utility in clinical tasks in the field of radiology, such as direct image utilization, lesion detection, segmentation, and diagnosis. This article aims to guide readers regarding radiology practice and research using image-generative AI by 1) reviewing basic theories of image-generative AI, 2) discussing the methods used to evaluate the generated images, 3) outlining the clinical and research utility of generated images, and 4) discussing the issue of hallucinations.

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来源期刊
Korean Journal of Radiology
Korean Journal of Radiology 医学-核医学
CiteScore
10.60
自引率
12.50%
发文量
141
审稿时长
1.3 months
期刊介绍: The inaugural issue of the Korean J Radiol came out in March 2000. Our journal aims to produce and propagate knowledge on radiologic imaging and related sciences. A unique feature of the articles published in the Journal will be their reflection of global trends in radiology combined with an East-Asian perspective. Geographic differences in disease prevalence will be reflected in the contents of papers, and this will serve to enrich our body of knowledge. World''s outstanding radiologists from many countries are serving as editorial board of our journal.
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