Exploring chat generated pre-trained transformer-3 ability to interpret MRI knee images and generate reports

Author:

Saran Sonal1,Shirodkar Kapil2,Ariyaratne Sisith2,Iyengar Karthikeyan3,Jenko Nathan2,Durgaprasad B. K.4,Botchu Rajesh5

Affiliation:

1. Department of Radiodiagnosis, All India Institute of Medical Sciences, Rishikesh, Uttarakhand, India

2. Department of Musculoskeletal Radiology, Royal Orthopaedic Hospital, Birmingham, United Kingdom

3. Department of Orthopaedics, Southport and Ormskirk Hospitals, NHS Trust, Southport, United Kingdom,

4. Department of Radiology, Gitam Institute of Medical Sciences and Research, Visakhapatnam, Andhra Pradesh, India,

5. Department of Musculoskeletal Radiology, Royal Orthopedic Hospital, Birmingham, United Kingdom

Abstract

Objectives: The study’s objective was to determine if Chat Generated Pre-Trained Transformer-3 (ChatGPT)-4V can interpret magnetic resonance imaging (MRI) knees and generate preliminary reports based on images and clinical history provided by the radiologist. Materials and Methods: This cross-sectional observational study involved selecting 10 MRI knees with representative imaging findings from the institution’s radiology reporting database. Key MRI images were then input into the ChatGPT-4V model, which was queried with four questions: (i) What does the image show?; (ii) What is the sequence?; (iii) What is the key finding?; and, (iv) Finally, the model generated a report based on the provided clinical history and key finding. Responses from ChatGPT-4 were documented and independently evaluated by two musculoskeletal radiologists through Likert scoring. Results: The mean scores for various questions in the assessment were as follows: 2 for “What does the image show?,” 2.10 for “What is the sequence?,” 1.15 for “What is the key finding?,” and the highest mean score of 4.10 for the command “Write a report of MRI of the…” Radiologists consistently gave mean scores ranging from 2.0 to 2.5 per case, with no significant differences observed between different cases (P > 0.05). The interclass correlation coefficient between the two raters was 0.92 (95% Confidence interval: 0.85–0.96). Conclusion: ChatGPT-4V excelled in generating reports based on user-fed clinical information and key findings, with a mean score of 4.10 (good to excellent proficiency). However, its performance in interpreting medical images was subpar, scoring ≤2.10. ChatGPT-4V, as of now, cannot interpret medical images accurately and generate reports.

Publisher

Scientific Scholar

Reference10 articles.

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