Evaluating the strengths and limitations of multimodal ChatGPT-4 in detecting glaucoma using fundus images.

Front Ophthalmol (Lausanne)

Department of Ophthalmology, University of Colorado School of Medicine, Sue Anschutz-Rodgers Eye Center, Aurora, CO, United States.

Published: June 2024

AI Article Synopsis

  • The study assesses the effectiveness of ChatGPT-4 in diagnosing glaucoma from color fundus photographs, using a benchmark dataset without prior training.
  • The results showed ChatGPT-4 achieved 90% accuracy in classifying images as either likely glaucomatous or not, though its sensitivity was lower at 50% and specificity high at 94.44%.
  • The findings suggest that advanced AI models like ChatGPT-4 could be beneficial in specialized medical fields, possibly requiring less training data and offering cost-effective solutions for diagnosis and healthcare support.

Article Abstract

Overview: This study evaluates the diagnostic accuracy of a multimodal large language model (LLM), ChatGPT-4, in recognizing glaucoma using color fundus photographs (CFPs) with a benchmark dataset and without prior training or fine tuning.

Methods: The publicly accessible Retinal Fundus Glaucoma Challenge "REFUGE" dataset was utilized for analyses. The input data consisted of the entire 400 image testing set. The task involved classifying fundus images into either 'Likely Glaucomatous' or 'Likely Non-Glaucomatous'. We constructed a confusion matrix to visualize the results of predictions from ChatGPT-4, focusing on accuracy of binary classifications (glaucoma vs non-glaucoma).

Results: ChatGPT-4 demonstrated an accuracy of 90% with a 95% confidence interval (CI) of 87.06%-92.94%. The sensitivity was found to be 50% (95% CI: 34.51%-65.49%), while the specificity was 94.44% (95% CI: 92.08%-96.81%). The precision was recorded at 50% (95% CI: 34.51%-65.49%), and the F1 Score was 0.50.

Conclusion: ChatGPT-4 achieved relatively high diagnostic accuracy without prior fine tuning on CFPs. Considering the scarcity of data in specialized medical fields, including ophthalmology, the use of advanced AI techniques, such as LLMs, might require less data for training compared to other forms of AI with potential savings in time and financial resources. It may also pave the way for the development of innovative tools to support specialized medical care, particularly those dependent on multimodal data for diagnosis and follow-up, irrespective of resource constraints.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11182172PMC
http://dx.doi.org/10.3389/fopht.2024.1387190DOI Listing

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