放射学中的对抗性人工智能:攻击、防御和未来考虑。

IF 4.9 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Nicholas Dietrich, Bo Gong, Michael N Patlas
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引用次数: 0

摘要

人工智能(AI)正在迅速改变放射学,其应用涵盖疾病检测、病灶分割、工作流程优化和报告生成。随着这些工具越来越多地融入临床实践,新的担忧出现了,即它们容易受到对抗性攻击。这篇综述提供了对放射学中对抗性人工智能的深入概述,这是一个在研究和临床领域日益相关的话题。它首先概述了使机器学习系统特别容易受到对抗性操纵的基本概念和模型特征。提出了攻击类型的结构化分类,包括基于攻击者知识、目标、时间和计算频率的区别。然后通过关键的放射学任务检查这些攻击的临床意义,文献强调疾病分类,图像分割和重建以及报告生成的风险。潜在的下游后果,如病人的伤害,操作中断和信任的丧失进行了讨论。回顾了当前的缓解策略,包括输入级防御、模型训练修改和经过认证的鲁棒性方法。同时,还考虑了更广泛的生命周期和保障策略的作用。通过整合技术和临床领域的现有知识,本综述有助于确定差距,为未来的研究重点提供信息,并指导放射学中强大、值得信赖的人工智能系统的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adversarial artificial intelligence in radiology: Attacks, defenses, and future considerations.

Artificial intelligence (AI) is rapidly transforming radiology, with applications spanning disease detection, lesion segmentation, workflow optimization, and report generation. As these tools become more integrated into clinical practice, new concerns have emerged regarding their vulnerability to adversarial attacks. This review provides an in-depth overview of adversarial AI in radiology, a topic of growing relevance in both research and clinical domains. It begins by outlining the foundational concepts and model characteristics that make machine learning systems particularly susceptible to adversarial manipulation. A structured taxonomy of attack types is presented, including distinctions based on attacker knowledge, goals, timing, and computational frequency. The clinical implications of these attacks are then examined across key radiology tasks, with literature highlighting risks to disease classification, image segmentation and reconstruction, and report generation. Potential downstream consequences such as patient harm, operational disruption, and loss of trust are discussed. Current mitigation strategies are reviewed, spanning input-level defenses, model training modifications, and certified robustness approaches. In parallel, the role of broader lifecycle and safeguard strategies are considered. By consolidating current knowledge across technical and clinical domains, this review helps identify gaps, inform future research priorities, and guide the development of robust, trustworthy AI systems in radiology.

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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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