生成医学成像合成数据。

IF 12.1 1区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Radiology Pub Date : 2024-09-01 DOI:10.1148/radiol.232471
Lennart R Koetzier,Jie Wu,Domenico Mastrodicasa,Aline Lutz,Matthew Chung,W Adam Koszek,Jayanth Pratap,Akshay S Chaudhari,Pranav Rajpurkar,Matthew P Lungren,Martin J Willemink
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引用次数: 0

摘要

用于医学成像任务(如分类或分割)的人工智能(AI)模型需要大量不同的图像数据集。然而,由于隐私和伦理问题,以及数据共享基础设施的障碍,这些数据集非常稀缺且难以收集。人工智能从现有数据中生成的合成医学影像数据可以通过增强和匿名化真实影像数据来应对这一挑战。此外,合成数据还能实现新的应用,包括模式转换、对比度合成和放射科医生的专业培训。然而,合成数据的使用也带来了技术和伦理方面的挑战。这些挑战包括确保合成图像的真实性和多样性,同时保持数据的不可识别性,评估在合成数据上训练的模型的性能和可推广性,以及高昂的计算成本。由于现有法规不足以保证合成图像的安全和道德使用,因此显然需要更新法律和更严格的监督。监管机构、医生和人工智能开发人员应合作开发、维护并不断完善合成数据的最佳实践。本综述旨在概述当前医学影像合成数据方面的知识,并强调该领域当前面临的主要挑战,以指导未来的研究与开发。
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Generating Synthetic Data for Medical Imaging.
Artificial intelligence (AI) models for medical imaging tasks, such as classification or segmentation, require large and diverse datasets of images. However, due to privacy and ethical issues, as well as data sharing infrastructure barriers, these datasets are scarce and difficult to assemble. Synthetic medical imaging data generated by AI from existing data could address this challenge by augmenting and anonymizing real imaging data. In addition, synthetic data enable new applications, including modality translation, contrast synthesis, and professional training for radiologists. However, the use of synthetic data also poses technical and ethical challenges. These challenges include ensuring the realism and diversity of the synthesized images while keeping data unidentifiable, evaluating the performance and generalizability of models trained on synthetic data, and high computational costs. Since existing regulations are not sufficient to guarantee the safe and ethical use of synthetic images, it becomes evident that updated laws and more rigorous oversight are needed. Regulatory bodies, physicians, and AI developers should collaborate to develop, maintain, and continually refine best practices for synthetic data. This review aims to provide an overview of the current knowledge of synthetic data in medical imaging and highlights current key challenges in the field to guide future research and development.
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来源期刊
Radiology
Radiology 医学-核医学
CiteScore
35.20
自引率
3.00%
发文量
596
审稿时长
3.6 months
期刊介绍: Published regularly since 1923 by the Radiological Society of North America (RSNA), Radiology has long been recognized as the authoritative reference for the most current, clinically relevant and highest quality research in the field of radiology. Each month the journal publishes approximately 240 pages of peer-reviewed original research, authoritative reviews, well-balanced commentary on significant articles, and expert opinion on new techniques and technologies. Radiology publishes cutting edge and impactful imaging research articles in radiology and medical imaging in order to help improve human health.
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