Large language models' performances regarding common patient questions about osteoarthritis: A comparative analysis of ChatGPT-3.5, ChatGPT-4.0, and Perplexity

大型语言模型在回答有关骨关节炎的常见患者问题时的表现:ChatGPT-3.5、ChatGPT-4.0 和 Perplexity 的比较分析

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Abstract

BACKGROUND: Large Language Models (LLMs) have gained much attention and, in part, have replaced common search engines as a popular channel for obtaining information due to their contextually relevant responses. Osteoarthritis (OA) is a common topic in skeletal muscle disorders, and patients often seek information about it online. Our study evaluated the ability of 3 LLMs (ChatGPT-3.5, ChatGPT-4.0, and Perplexity) to accurately answer common OA-related queries. METHODS: We defined 6 themes (pathogenesis, risk factors, clinical presentation, diagnosis, treatment and prevention, and prognosis) based on a generalization of 25 frequently asked questions about OA. Three consultant-level orthopedic specialists independently rated the LLMs' replies on a 4-point accuracy scale. The final ratings for each response were determined using a majority consensus approach. Responses classified as "satisfactory" were evaluated for comprehensiveness on a 5-point scale. RESULTS: ChatGPT-4.0 demonstrated superior accuracy, with 64% of responses rated as "excellent", compared to 40% for ChatGPT-3.5 and 28% for Perplexity (Pearson's χ(2) test with Fisher's exact test, all p < 0.001). All 3 LLM-chatbots had high mean comprehensiveness ratings (Perplexity = 3.88; ChatGPT-4.0 = 4.56; ChatGPT-3.5 = 3.96, out of a maximum score of 5). The LLM-chatbots performed reliably across domains, except for "treatment and prevention" However, ChatGPT-4.0 still outperformed ChatGPT-3.5 and Perplexity, garnering 53.8% "excellent" ratings (Pearson's χ(2) test with Fisher's exact test, all p < 0.001). CONCLUSION: Our findings underscore the potential of LLMs, specifically ChatGPT-4.0 and Perplexity, to deliver accurate and thorough responses to OA-related queries. Targeted correction of specific misconceptions to improve the accuracy of LLMs remains crucial.

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