医疗保健中的多智能体人工智能系统:展望下一代智能。

Andrew A Borkowski, Alon Ben-Ari
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引用次数: 0

摘要

背景:有限的人员、不断上升的成本和监管监督,再加上实现临床终点和改善获得医疗服务的需要,使得扩大医疗保健业务具有挑战性。本文探讨了医疗保健中的多智能体人工智能(AI)系统的新兴范式,它代表了传统大型语言模型的重大飞跃。观察:本分析回顾了多智能体人工智能系统在革新患者护理、简化管理流程和支持复杂临床决策方面的潜力。它描述了一个假设的败血症管理系统,包括7个专门的人工智能代理,每个代理处理从数据收集和诊断到治疗建议和资源管理的患者护理的特定方面。在慢性疾病管理和医院病人流优化的其他应用也进行了检查。讨论了这些系统的技术实现,包括使用先进的大型语言模型、代理间质量控制措施、护栏实施、自我反思机制、与电子健康记录的集成,以及可解释的人工智能在确保决策透明度方面的重要性。潜在的好处包括提高诊断的准确性和个性化的治疗方案。挑战仍然与数据质量保证、工作流集成和道德考虑相关。人工智能的未来方向包括互联网设备的集成和更复杂的自然语言接口的开发。结论:本文强调了多智能体人工智能系统在医疗保健领域的变革潜力,同时强调了在其开发和实施过程中严格验证、伦理监督和以患者为中心的方法的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiagent AI Systems in Health Care: Envisioning Next-Generation Intelligence.

Background: Limited staff, rising costs, and regulatory oversight, coupled with the need to achieve clinical endpoints and improve access to care, has made scaling health care operations challenging. This article explores the emerging paradigm of multiagent artificial intelligence (AI) systems in health care, which represent a significant leap beyond traditional large language models.

Observations: This analysis reviews the potential of multiagent AI systems to revolutionize patient care, streamline administrative processes, and support complex clinical decision-making. It describes a hypothetical sepsis management system comprising 7 specialized AI agents, with each agent handling specific aspects of patient care from data collection and diagnosis to treatment recommendations and resource management. Additional applications in chronic disease management and hospital patient flow optimization are also examined. The technical implementation of these systems is discussed, including the use of advanced large language models, interagent quality control measures, guardrail implementation, self-reflection mechanisms, integration with electronic health records, and the importance of explainable AI in ensuring decision transparency. Potential benefits include enhanced diagnostic accuracy and personalized treatment plans. Challenges remain related to data quality assurance, workflow integration, and ethical considerations. Future directions for AI include the integration of internet-enabled devices and the development of more sophisticated natural language interfaces.

Conclusions: This article underscores the transformative potential of multiagent AI systems in health care while emphasizing the importance of rigorous validation, ethical oversight, and a patient-centered approach in their development and implementation.

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