Yazla Merve, Sarcan Emine
Emergency Medicine, Ankara Etlik City Hospital, Ankara, Turkey.
Prehosp Emerg Care. 2025;29(3):243-251. doi: 10.1080/10903127.2025.2475513. Epub 2025 Mar 13.
Chat Generative Pre-trained Transformer (ChatGPT) is a natural language processing product developed by OpenAI. Recently, the use of ChatGPT has gained attention in the field of health care, particularly for its potential applications in diagnostic and decision-making support. While its utility is still being explored, it shows promise as a supplementary tool in these contexts. This study aims to evaluate the potential of ChatGPT in making decisions about 'transportation to the stroke center, suspicion of large vessel occlusion and treatment decisions' of patients brought to the emergency department by ambulance with a preliminary diagnosis of stroke.
All patients with a stroke code who were transferred to the emergency department (ED) of a tertiary care hospital, Ankara Etlik City Hospital, by ambulance between November 1, 2023, and April 30, 2024, during designated stroke team coverage periods were included in the study. Unlike many stroke centers that operate continuously 24/7, our institution follows a structured on-call system, where specialized stroke teams are assigned time slots to provide stroke care. Data were collected from prehospital records, ED notes, and hospital imaging and treatment records. ChatGPT's decisions were compared to gold standard outcomes using Cohen's kappa test, with sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) calculated for each directive.
A total of 512 patients were analyzed, and ChatGPT's decisions were compared with the patients' final diagnoses and treatments. Analysis comparing ChatGPT's decisions to patient outcomes across prehospital stroke suspicion, large vessel occlusion diagnosis, and treatment phases showed significant agreement ( < 0.001, Kappa: 0.540-0.562). While the sensitivity of the diagnosis of stroke was 91%, the NPV was found to be 98% in patients requiring intravenous tissue plasminogen activator and large vessel occlusion, 97% NPV in patients requiring mechanical thrombectomy.
ChatGPT shows promise as a decision-support tool for identifying acute ischemic stroke and determining treatment needs in prehospital and ED settings. However, its reliance on predefined data highlights the need for physician supervision to address clinical complexities and ensure patient safety. Integrating ChatGPT as an adjunct rather than a standalone system can enhance decision-making efficiency while maintaining high-quality care.
Chat生成式预训练变换器(ChatGPT)是OpenAI开发的一种自然语言处理产品。最近,ChatGPT在医疗保健领域的应用受到了关注,特别是其在诊断和决策支持方面的潜在应用。虽然其效用仍在探索中,但它在这些情况下作为辅助工具显示出了前景。本研究旨在评估ChatGPT在对因初步诊断为中风而由救护车送往急诊科的患者做出“转运至中风中心、怀疑大血管闭塞及治疗决策”方面的潜力。
纳入2023年11月1日至2024年4月30日在指定中风团队覆盖期间通过救护车转运至安卡拉埃特利克市立医院(一家三级护理医院)急诊科的所有中风编码患者。与许多24/7持续运营的中风中心不同,我们的机构采用结构化的随叫随到系统,为专业中风团队分配时间段以提供中风护理。数据从院前记录、急诊科记录以及医院影像和治疗记录中收集。使用科恩kappa检验将ChatGPT的决策与金标准结果进行比较,并为每个指令计算敏感性、特异性、阳性预测值(PPV)和阴性预测值(NPV)。
共分析了512例患者,并将ChatGPT的决策与患者的最终诊断和治疗进行了比较。在院前中风怀疑、大血管闭塞诊断和治疗阶段,将ChatGPT的决策与患者结局进行比较的分析显示出显著一致性(<0.001,kappa值:0.540 - 0.562)。中风诊断的敏感性为91%,在需要静脉注射组织纤溶酶原激活剂和大血管闭塞的患者中,NPV为98%,在需要机械取栓的患者中,NPV为97%。
ChatGPT作为一种决策支持工具,在识别急性缺血性中风以及确定院前和急诊科环境中的治疗需求方面显示出前景。然而,其对预定义数据的依赖凸显了医生监督的必要性,以应对临床复杂性并确保患者安全。将ChatGPT作为辅助而非独立系统整合可以提高决策效率,同时维持高质量护理。