학술논문

A pilot study on the efficacy of GPT-4 in providing orthopedic treatment recommendations from MRI reports.
Document Type
Article
Source
Scientific Reports. 11/17/2023, Vol. 13 Issue 1, p1-9. 9p.
Subject
*SHOULDER
*LANGUAGE models
*KNEE
*RADIOSTEREOMETRY
*ORTHOPEDISTS
*MAGNETIC resonance imaging
*PILOT projects
*MEDICAL personnel
Language
ISSN
2045-2322
Abstract
Large language models (LLMs) have shown potential in various applications, including clinical practice. However, their accuracy and utility in providing treatment recommendations for orthopedic conditions remain to be investigated. Thus, this pilot study aims to evaluate the validity of treatment recommendations generated by GPT-4 for common knee and shoulder orthopedic conditions using anonymized clinical MRI reports. A retrospective analysis was conducted using 20 anonymized clinical MRI reports, with varying severity and complexity. Treatment recommendations were elicited from GPT-4 and evaluated by two board-certified specialty-trained senior orthopedic surgeons. Their evaluation focused on semiquantitative gradings of accuracy and clinical utility and potential limitations of the LLM-generated recommendations. GPT-4 provided treatment recommendations for 20 patients (mean age, 50 years ± 19 [standard deviation]; 12 men) with acute and chronic knee and shoulder conditions. The LLM produced largely accurate and clinically useful recommendations. However, limited awareness of a patient's overall situation, a tendency to incorrectly appreciate treatment urgency, and largely schematic and unspecific treatment recommendations were observed and may reduce its clinical usefulness. In conclusion, LLM-based treatment recommendations are largely adequate and not prone to 'hallucinations', yet inadequate in particular situations. Critical guidance by healthcare professionals is obligatory, and independent use by patients is discouraged, given the dependency on precise data input. [ABSTRACT FROM AUTHOR]