AI Applications for Thoracic Imaging: Considerations for Best Practice.

IF 15.2 1区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Radiology Pub Date : 2025-02-01 DOI:10.1148/radiol.240650
Eui Jin Hwang, Jin Mo Goo, Chang Min Park
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Abstract

Artificial intelligence (AI) technology is rapidly being introduced into thoracic radiology practice. Current representative use cases for AI in thoracic imaging show cumulative evidence of effectiveness. These include AI assistance for reading chest radiographs and low-dose (1.5-mSv) chest CT scans for lung cancer screening and triaging pulmonary embolism on chest CT scans. Other potential use cases are also under investigation, including filtering out normal chest radiographs, monitoring reading errors, and automated opportunistic screening of nontarget diseases. However, implementing AI tools in daily practice requires establishing practical strategies. Practical AI implementation will require objective on-site performance evaluation, institutional information technology infrastructure integration, and postdeployment monitoring. Meanwhile, the remaining challenges of adopting AI technology need to be addressed. These challenges include educating radiologists and radiology trainees, alleviating liability risk, and addressing potential disparities due to the uneven distribution of data and AI technology. Finally, next-generation AI technology represented by large language models (LLMs), including multimodal models, which can interpret both text and images, is expected to innovate the current landscape of AI in thoracic radiology practice. These LLMs offer opportunities ranging from generating text reports from images to explaining examination results to patients. However, these models require more research into their feasibility and efficacy.

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人工智能在胸部成像中的应用:最佳实践的考虑。
人工智能(AI)技术正迅速被引入胸部放射学实践。目前人工智能在胸部成像中的代表性用例显示了其有效性的累积证据。其中包括人工智能辅助阅读胸部x线片和用于肺癌筛查的低剂量(1.5 msv)胸部CT扫描,以及在胸部CT扫描中分诊肺栓塞。其他潜在的用例也在调查中,包括过滤掉正常的胸片,监测读数错误,以及非目标疾病的自动机会筛查。然而,在日常实践中实施人工智能工具需要制定切实可行的策略。实际的人工智能实施将需要客观的现场绩效评估、机构信息技术基础设施集成和部署后监测。与此同时,采用人工智能技术的剩余挑战需要解决。这些挑战包括教育放射科医生和放射学培训生,减轻责任风险,以及解决由于数据和人工智能技术分布不均而造成的潜在差异。最后,以大型语言模型(llm)为代表的下一代人工智能技术,包括可以解释文本和图像的多模态模型,有望创新人工智能在胸部放射学实践中的现状。这些法学硕士提供的机会包括从图像生成文本报告到向患者解释检查结果。然而,这些模型的可行性和有效性还有待进一步的研究。
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
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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