Kalidindi Sadhana, Baradwaj Janani
University of Bristol, UK.
ARI Academy, India.
Eur J Radiol Open. 2024 Jul 26;13:100589. doi: 10.1016/j.ejro.2024.100589. eCollection 2024 Dec.
The rapid evolution of artificial intelligence (AI) in healthcare, particularly in radiology, underscores a transformative era marked by a potential for enhanced diagnostic precision, increased patient engagement, and streamlined clinical workflows. Amongst the key developments at the heart of this transformation are Large Language Models like the Generative Pre-trained Transformer 4 (GPT-4), whose integration into radiological practices could potentially herald a significant leap by assisting in the generation and summarization of radiology reports, aiding in differential diagnoses, and recommending evidence-based treatments. This review delves into the multifaceted potential applications of Large Language Models within radiology, using GPT-4 as an example, from improving diagnostic accuracy and reporting efficiency to translating complex medical findings into patient-friendly summaries. The review acknowledges the ethical, privacy, and technical challenges inherent in deploying AI technologies, emphasizing the importance of careful oversight, validation, and adherence to regulatory standards. Through a balanced discourse on the potential and pitfalls of GPT-4 in radiology, the article aims to provide a comprehensive overview of how these models have the potential to reshape the future of radiological services, fostering improvements in patient care, educational methodologies, and clinical research.
人工智能(AI)在医疗保健领域,尤其是放射学领域的迅速发展,凸显了一个变革性的时代,其特点是具有提高诊断精度、增强患者参与度以及简化临床工作流程的潜力。在这一变革核心的关键发展成果中,有像生成式预训练变换器4(GPT-4)这样的大语言模型,将其整合到放射学实践中可能预示着重大飞跃,可协助生成和总结放射学报告、辅助鉴别诊断以及推荐循证治疗方法。本综述以GPT-4为例,深入探讨大语言模型在放射学中的多方面潜在应用,从提高诊断准确性和报告效率到将复杂的医学发现转化为患者易懂的总结。该综述承认在部署人工智能技术过程中存在的伦理、隐私和技术挑战,强调谨慎监督、验证以及遵守监管标准的重要性。通过对GPT-4在放射学中的潜力和缺陷进行平衡的论述,本文旨在全面概述这些模型如何有可能重塑放射学服务的未来,促进患者护理、教育方法和临床研究的改进。