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Quality of ChatGPT Responses to Frequently Asked Questions in Carpal Tunnel Release Surgery
6
Zitationen
6
Autoren
2024
Jahr
Abstract
Background: Although demonstrating remarkable promise in other fields, the impact of artificial intelligence (including ChatGPT in hand surgery and medical practice) remains largely undetermined. In this study, we asked ChatGPT frequently asked patient-focused questions surgeons may receive in clinic from patients who have carpel tunnel syndrome (CTS) and evaluated the quality of its output. Methods: Using ChatGPT, we asked 10 frequently asked questions that hand surgeons may receive in the clinic before carpel tunnel release (CTR) surgery. Included questions were generated from the authors' own experiences regarding conservative and operative treatment of CTS. Results: Responses from the following 10 questions were included: (1) What is CTS and what are its signs and symptoms? (2) What are the nonsurgical options for CTS? (3) Should I get surgery for CTS? (4) What is a CTR and how is it preformed? (5) What are the differences between open and endoscopic CTR? (6) What are the risks associated with CTR and how frequently do they occur? (7) Does CTR cure CTS? (8) How much improvement in my symptoms can I expect after CTR? (9) How long is the recovery after CTR? (10) Can CTS recur after surgery? Conclusions: Overall, the chatbot provided accurate and comprehensive information in response to most common and nuanced questions regarding CTS and CTR surgery, all in a way that would be easily understood by many patients. Importantly, the chatbot did not provide patient-specific advice and consistently advocated for consultation with a healthcare provider.
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