Tel-aviv university, Faculty of medicine, Tel-Aviv, Israel.
Division of Diagnostic Imaging, Sheba Medical Center, Affiliated to Tel-Aviv University, Ramat Gan, Israel.
Am J Infect Control. 2024 Sep;52(9):992-1001. doi: 10.1016/j.ajic.2024.03.016. Epub 2024 Apr 6.
Natural Language Processing (NLP) and Large Language Models (LLMs) hold largely untapped potential in infectious disease management. This review explores their current use and uncovers areas needing more attention.
This analysis followed systematic review procedures, registered with the Prospective Register of Systematic Reviews. We conducted a search across major databases including PubMed, Embase, Web of Science, and Scopus, up to December 2023, using keywords related to NLP, LLM, and infectious diseases. We also employed the Quality Assessment of Diagnostic Accuracy Studies-2 tool for evaluating the quality and robustness of the included studies.
Our review identified 15 studies with diverse applications of NLP in infectious disease management. Notable examples include GPT-4's application in detecting urinary tract infections and BERTweet's use in Lyme Disease surveillance through social media analysis. These models demonstrated effective disease monitoring and public health tracking capabilities. However, the effectiveness varied across studies. For instance, while some NLP tools showed high accuracy in pneumonia detection and high sensitivity in identifying invasive mold diseases from medical reports, others fell short in areas like bloodstream infection management.
This review highlights the yet-to-be-fully-realized promise of NLP and LLMs in infectious disease management. It calls for more exploration to fully harness AI's capabilities, particularly in the areas of diagnosis, surveillance, predicting disease courses, and tracking epidemiological trends.
自然语言处理 (NLP) 和大型语言模型 (LLM) 在传染病管理中具有很大的未开发潜力。本综述探讨了它们的当前应用,并揭示了需要更多关注的领域。
本分析遵循系统综述程序,在前瞻性系统评价注册中心进行注册。我们使用与 NLP、LLM 和传染病相关的关键词,在主要数据库(包括 PubMed、Embase、Web of Science 和 Scopus)中进行了搜索,截至 2023 年 12 月。我们还使用了诊断准确性研究的质量评估-2 工具来评估纳入研究的质量和稳健性。
我们的综述确定了 15 项关于 NLP 在传染病管理中的不同应用的研究。值得注意的例子包括 GPT-4 在检测尿路感染和 BERTweet 通过社交媒体分析在莱姆病监测中的应用。这些模型展示了有效的疾病监测和公共卫生跟踪能力。然而,有效性在研究之间存在差异。例如,虽然一些 NLP 工具在肺炎检测中的准确率很高,在从医疗报告中识别侵袭性霉菌病方面的灵敏度很高,但其他工具在血流感染管理等领域表现不佳。
本综述强调了 NLP 和 LLM 在传染病管理中的尚未完全实现的潜力。它呼吁进行更多的探索,以充分利用人工智能的能力,特别是在诊断、监测、预测疾病过程和跟踪流行病学趋势方面。