Artificial intelligence in interventional radiology: Current concepts and future trends.

IF 4.9 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Diagnostic and Interventional Imaging Pub Date : 2024-09-10 DOI:10.1016/j.diii.2024.08.004
Armelle Lesaunier,Julien Khlaut,Corentin Dancette,Lambros Tselikas,Baptiste Bonnet,Tom Boeken
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Abstract

While artificial intelligence (AI) is already well established in diagnostic radiology, it is beginning to make its mark in interventional radiology. AI has the potential to dramatically change the daily practice of interventional radiology at several levels. In the preoperative setting, recent advances in deep learning models, particularly foundation models, enable effective management of multimodality and increased autonomy through their ability to function minimally without supervision. Multimodality is at the heart of patient-tailored management and in interventional radiology, this translates into the development of innovative models for patient selection and outcome prediction. In the perioperative setting, AI is manifesting itself in applications that assist radiologists in image analysis and real-time decision making, thereby improving the efficiency, accuracy, and safety of interventions. In synergy with advances in robotic technologies, AI is laying the groundwork for an increased autonomy. From a research perspective, the development of artificial health data, such as AI-based data augmentation, offers an innovative solution to this central issue and promises to stimulate research in this area. This review aims to provide the medical community with the most important current and future applications of AI in interventional radiology.
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介入放射学中的人工智能:当前概念和未来趋势。
人工智能(AI)已在放射诊断领域得到广泛应用,而在介入放射学领域也开始崭露头角。人工智能有可能在多个层面上显著改变介入放射学的日常实践。在术前环境中,深度学习模型(尤其是基础模型)的最新进展可实现多模态的有效管理,并通过其在无需监督的情况下发挥最小功能的能力提高自主性。多模态是为患者量身定制管理的核心,而在介入放射学中,这就转化为开发用于患者选择和结果预测的创新模型。在围术期环境中,人工智能正体现在协助放射医师进行图像分析和实时决策的应用中,从而提高介入治疗的效率、准确性和安全性。在与机器人技术进步的协同作用下,人工智能正在为提高自主性奠定基础。从研究的角度来看,人工健康数据的开发,如基于人工智能的数据增强,为这一核心问题提供了创新的解决方案,并有望促进这一领域的研究。本综述旨在为医学界提供人工智能在介入放射学中当前和未来最重要的应用。
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来源期刊
Diagnostic and Interventional Imaging
Diagnostic and Interventional Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
8.50
自引率
29.10%
发文量
126
审稿时长
11 days
期刊介绍: Diagnostic and Interventional Imaging accepts publications originating from any part of the world based only on their scientific merit. The Journal focuses on illustrated articles with great iconographic topics and aims at aiding sharpening clinical decision-making skills as well as following high research topics. All articles are published in English. Diagnostic and Interventional Imaging publishes editorials, technical notes, letters, original and review articles on abdominal, breast, cancer, cardiac, emergency, forensic medicine, head and neck, musculoskeletal, gastrointestinal, genitourinary, interventional, obstetric, pediatric, thoracic and vascular imaging, neuroradiology, nuclear medicine, as well as contrast material, computer developments, health policies and practice, and medical physics relevant to imaging.
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