Assessing the medical reasoning skills of GPT-4 in complex ophthalmology cases.

IF 3.7 2区 医学 Q1 OPHTHALMOLOGY British Journal of Ophthalmology Pub Date : 2024-09-20 DOI:10.1136/bjo-2023-325053
Daniel Milad, Fares Antaki, Jason Milad, Andrew Farah, Thomas Khairy, David Mikhail, Charles-Édouard Giguère, Samir Touma, Allison Bernstein, Andrei-Alexandru Szigiato, Taylor Nayman, Guillaume A Mullie, Renaud Duval
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Abstract

Background/aims: This study assesses the proficiency of Generative Pre-trained Transformer (GPT)-4 in answering questions about complex clinical ophthalmology cases.

Methods: We tested GPT-4 on 422 Journal of the American Medical Association Ophthalmology Clinical Challenges, and prompted the model to determine the diagnosis (open-ended question) and identify the next-step (multiple-choice question). We generated responses using two zero-shot prompting strategies, including zero-shot plan-and-solve+ (PS+), to improve the reasoning of the model. We compared the best-performing model to human graders in a benchmarking effort.

Results: Using PS+ prompting, GPT-4 achieved mean accuracies of 48.0% (95% CI (43.1% to 52.9%)) and 63.0% (95% CI (58.2% to 67.6%)) in diagnosis and next step, respectively. Next-step accuracy did not significantly differ by subspecialty (p=0.44). However, diagnostic accuracy in pathology and tumours was significantly higher than in uveitis (p=0.027). When the diagnosis was accurate, 75.2% (95% CI (68.6% to 80.9%)) of the next steps were correct. Conversely, when the diagnosis was incorrect, 50.2% (95% CI (43.8% to 56.6%)) of the next steps were accurate. The next step was three times more likely to be accurate when the initial diagnosis was correct (p<0.001). No significant differences were observed in diagnostic accuracy and decision-making between board-certified ophthalmologists and GPT-4. Among trainees, senior residents outperformed GPT-4 in diagnostic accuracy (p≤0.001 and 0.049) and in accuracy of next step (p=0.002 and 0.020).

Conclusion: Improved prompting enhances GPT-4's performance in complex clinical situations, although it does not surpass ophthalmology trainees in our context. Specialised large language models hold promise for future assistance in medical decision-making and diagnosis.

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评估 GPT-4 在复杂眼科病例中的医学推理能力。
背景/目的:本研究评估了生成式预训练转换器(GPT)-4在回答复杂的眼科临床病例问题时的熟练程度:我们在 422 个《美国医学会杂志》眼科临床挑战上测试了 GPT-4,并提示该模型确定诊断(开放式问题)和确定下一步(多选题)。我们使用两种零镜头提示策略(包括零镜头计划与解决方案+ (PS+))生成答案,以提高模型的推理能力。我们将表现最佳的模型与人类评分员进行了基准比较:使用 PS+ 提示,GPT-4 在诊断和下一步的平均准确率分别为 48.0% (95% CI (43.1% to 52.9%)) 和 63.0% (95% CI (58.2% to 67.6%))。不同亚专科的下一步准确率没有明显差异(P=0.44)。然而,病理学和肿瘤的诊断准确率明显高于葡萄膜炎(p=0.027)。当诊断准确时,75.2%(95% CI (68.6% to 80.9%))的下一步操作是正确的。相反,当诊断不正确时,50.2%(95% CI(43.8% 至 56.6%))的下一步诊断是准确的。当初始诊断正确时,下一步的准确率是初始诊断的三倍(p 结论:改进的提示提高了 GPT-4 在复杂临床情况下的表现,尽管在我们的情况下它并没有超越眼科受训者。专业化的大型语言模型有望为未来的医疗决策和诊断提供帮助。
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来源期刊
CiteScore
10.30
自引率
2.40%
发文量
213
审稿时长
3-6 weeks
期刊介绍: The British Journal of Ophthalmology (BJO) is an international peer-reviewed journal for ophthalmologists and visual science specialists. BJO publishes clinical investigations, clinical observations, and clinically relevant laboratory investigations related to ophthalmology. It also provides major reviews and also publishes manuscripts covering regional issues in a global context.
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