Department of Information Systems and Business Analytics, College of Business, Florida International University, Miami, FL, United States.
J Med Internet Res. 2024 Mar 8;26:e53008. doi: 10.2196/53008.
As advances in artificial intelligence (AI) continue to transform and revolutionize the field of medicine, understanding the potential uses of generative AI in health care becomes increasingly important. Generative AI, including models such as generative adversarial networks and large language models, shows promise in transforming medical diagnostics, research, treatment planning, and patient care. However, these data-intensive systems pose new threats to protected health information. This Viewpoint paper aims to explore various categories of generative AI in health care, including medical diagnostics, drug discovery, virtual health assistants, medical research, and clinical decision support, while identifying security and privacy threats within each phase of the life cycle of such systems (ie, data collection, model development, and implementation phases). The objectives of this study were to analyze the current state of generative AI in health care, identify opportunities and privacy and security challenges posed by integrating these technologies into existing health care infrastructure, and propose strategies for mitigating security and privacy risks. This study highlights the importance of addressing the security and privacy threats associated with generative AI in health care to ensure the safe and effective use of these systems. The findings of this study can inform the development of future generative AI systems in health care and help health care organizations better understand the potential benefits and risks associated with these systems. By examining the use cases and benefits of generative AI across diverse domains within health care, this paper contributes to theoretical discussions surrounding AI ethics, security vulnerabilities, and data privacy regulations. In addition, this study provides practical insights for stakeholders looking to adopt generative AI solutions within their organizations.
随着人工智能 (AI) 的进步继续改变和革新医学领域,理解生成式 AI 在医疗保健中的潜在用途变得越来越重要。生成式 AI,包括生成对抗网络和大型语言模型等模型,在医疗诊断、研究、治疗计划和患者护理方面具有变革性的潜力。然而,这些数据密集型系统对受保护的健康信息构成了新的威胁。本观点文章旨在探讨医疗保健中的各种生成式 AI 类别,包括医疗诊断、药物发现、虚拟健康助手、医学研究和临床决策支持,同时在这些系统的生命周期的每个阶段(即数据收集、模型开发和实施阶段)中确定安全和隐私威胁。本研究的目的是分析生成式 AI 在医疗保健中的现状,确定将这些技术集成到现有医疗保健基础设施中所带来的机会和隐私及安全挑战,并提出缓解安全和隐私风险的策略。本研究强调了解决医疗保健中生成式 AI 相关安全和隐私威胁的重要性,以确保这些系统的安全有效使用。本研究的结果可以为医疗保健领域中未来的生成式 AI 系统的开发提供信息,并帮助医疗保健组织更好地理解这些系统相关的潜在利益和风险。通过检查生成式 AI 在医疗保健不同领域中的用例和益处,本文为 AI 伦理、安全漏洞和数据隐私法规的理论讨论做出了贡献。此外,本研究为希望在组织内采用生成式 AI 解决方案的利益相关者提供了实用的见解。