T. O. Togunwa, Abdulquddus Ajibade, Christabel I. Uche-Orji, Richard Olatunji
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引用次数: 0
摘要
人工智能(AI)越来越多地融入医疗保健领域,尤其是血管和介入放射学(VIR),为提高效率和精确度开辟了途径。这篇叙述性综述深入探讨了大型语言模型(LLMs)在血管和介入放射学中的潜在应用,重点是聊天生成预训练转换器(ChatGPT)和类似模型。LLMs 专为自然语言处理而设计,在临床决策、工作流程优化、教育和以患者为中心的护理等方面具有广阔的应用前景。讨论强调了 LLMs 分析大量医学文献的能力,有助于放射科医生做出明智的决策。此外,文章还探讨了 LLM 在改进临床工作流程、自动生成报告和智能安排病人时间方面的作用。这篇文章还探讨了 LLM 对 VIR 教育的影响,将其视为受训人员的宝贵工具。此外,本文还探讨了将 LLMs 融入病人教育过程的问题,强调了 LLMs 通过简化和准确的医疗信息传播来加强以病人为中心的护理的潜力。尽管存在这些潜力,本文仍讨论了挑战和伦理方面的考虑,包括对人工智能的过度依赖、潜在的错误信息和偏见。本文还强调了综合 VIR 数据集的稀缺性以及持续监测和跨学科合作的必要性。LLM 与计算机视觉人工智能模型的结合提倡一种平衡的方法,以解决 VIR 固有的视觉特性。总之,虽然在 VIR 中广泛实施 LLMs 可能为时尚早,但它们在改进该学科各个方面的潜力是不可否认的。认识到挑战和伦理方面的考虑、促进合作以及遵守伦理标准,对于充分释放 LLM 在 VIR 中的潜力、开创医疗保健服务和创新的新时代至关重要。
Exploring the Potentials of Large Language Models in Vascular and Interventional Radiology: Opportunities and Challenges
The increasing integration of artificial intelligence (AI) in healthcare, particularly in vascular and interventional radiology (VIR), has opened avenues for enhanced efficiency and precision. This narrative review delves into the potential applications of large language models (LLMs) in VIR, with a focus on Chat Generative Pre-Trained Transformer (ChatGPT) and similar models. LLMs, designed for natural language processing, exhibit promising capabilities in clinical decision-making, workflow optimization, education, and patient-centered care. The discussion highlights LLMs' ability to analyze extensive medical literature, aiding radiologists in making informed decisions. Moreover, their role in improving clinical workflow, automating report generation, and intelligent patient scheduling is explored. This article also examines LLMs' impact on VIR education, presenting them as valuable tools for trainees. Additionally, the integration of LLMs into patient education processes is examined, highlighting their potential to enhance patient-centered care through simplified and accurate medical information dissemination. Despite these potentials, this paper discusses challenges and ethical considerations, including AI over-reliance, potential misinformation, and biases. The scarcity of comprehensive VIR datasets and the need for ongoing monitoring and interdisciplinary collaboration are also emphasized. Advocating for a balanced approach, the combination of LLMs with computer vision AI models addresses the inherently visual nature of VIR. Overall, while the widespread implementation of LLMs in VIR may be premature, their potential to improve various aspects of the discipline is undeniable. Recognizing challenges and ethical considerations, fostering collaboration, and adhering to ethical standards are essential for unlocking the full potential of LLMs in VIR, ushering in a new era of healthcare delivery and innovation.