SOK:医疗人工智能的安全与隐私风险

Yuanhaur Chang, Han Liu, Evin Jaff, Chenyang Lu, Ning Zhang
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引用次数: 0

摘要

技术与医疗保健的融合开创了一个新时代,由人工智能和机器学习驱动的软件系统已成为医疗产品和服务的重要组成部分。虽然这些进步为提高患者护理和医疗服务效率带来了巨大希望,但也使敏感的医疗数据和系统完整性面临潜在的网络攻击。本文探讨了 AI/ML 在医疗保健领域的应用所带来的安全和隐私威胁。通过深入研究一系列医疗领域的现有研究,我们发现了在理解针对医疗人工智能系统的对抗性攻击方面存在的重大差距。通过概述针对医疗环境的特定对抗性威胁模型和识别易受攻击的应用领域,我们为未来研究人工智能驱动的医疗系统的安全性和适应性奠定了基础。通过我们对不同威胁模型的分析和对不同医疗领域中对抗性攻击的可行性研究,我们提供了令人信服的见解,说明在快速发展的人工智能医疗保健技术领域中网络安全研究的迫切需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SoK: Security and Privacy Risks of Medical AI
The integration of technology and healthcare has ushered in a new era where software systems, powered by artificial intelligence and machine learning, have become essential components of medical products and services. While these advancements hold great promise for enhancing patient care and healthcare delivery efficiency, they also expose sensitive medical data and system integrity to potential cyberattacks. This paper explores the security and privacy threats posed by AI/ML applications in healthcare. Through a thorough examination of existing research across a range of medical domains, we have identified significant gaps in understanding the adversarial attacks targeting medical AI systems. By outlining specific adversarial threat models for medical settings and identifying vulnerable application domains, we lay the groundwork for future research that investigates the security and resilience of AI-driven medical systems. Through our analysis of different threat models and feasibility studies on adversarial attacks in different medical domains, we provide compelling insights into the pressing need for cybersecurity research in the rapidly evolving field of AI healthcare technology.
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