心血管成像和放射学中人工智能患者隐私和数据处理的伦理考虑。

Saba Mehrtabar, Ahmed Marey, Anushka Desai, Abdelrahman M Saad, Vishal Desai, Julian Goñi, Basudha Pal, Muhammad Umair
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引用次数: 0

摘要

人工智能(AI)与心血管成像和放射学的集成为提高诊断准确性、简化工作流程和个性化患者护理提供了潜力。然而,人工智能的快速采用带来了复杂的伦理挑战,特别是在患者隐私、数据处理、知情同意和数据所有权方面。本文通过综合临床、技术和法规方面的文献来探讨这些问题。​我们还强调了云计算、对抗性攻击和商业数据集使用带来的漏洞。比较了道德框架和监管指南,并讨论了联邦学习、区块链和差异隐私等拟议的缓解策略。为了确保道德实施,我们强调临床医生、开发人员、医疗机构和政策制定者之间需要共同承担责任。最终,人工智能在医学成像领域的负责任发展必须优先考虑患者的信任、公平和平等,并以强有力的治理和透明的数据管理为基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ethical Considerations in Patient Privacy and Data Handling for AI in Cardiovascular Imaging and Radiology.

The integration of artificial intelligence (AI) into cardiovascular imaging and radiology offers the potential to enhance diagnostic accuracy, streamline workflows, and personalize patient care. However, the rapid adoption of AI has introduced complex ethical challenges, particularly concerning patient privacy, data handling, informed consent, and data ownership. This narrative review explores these issues by synthesizing literature from clinical, technical, and regulatory perspectives. We examine the tensions between data utility and data protection, the evolving role of transparency and explainable AI, and the disparities in ethical and legal frameworks across jurisdictions such as the European Union, the USA, and emerging players like China. We also highlight the vulnerabilities introduced by cloud computing, adversarial attacks, and the use of commercial datasets. Ethical frameworks and regulatory guidelines are compared, and proposed mitigation strategies such as federated learning, blockchain, and differential privacy are discussed. To ensure ethical implementation, we emphasize the need for shared accountability among clinicians, developers, healthcare institutions, and policymakers. Ultimately, the responsible development of AI in medical imaging must prioritize patient trust, fairness, and equity, underpinned by robust governance and transparent data stewardship.

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