Frontiers in Medicine (Jul 2024)

Evaluating Chatbot responses to patient questions in the field of glaucoma

  • Darren Ngiap Hao Tan,
  • Yih-Chung Tham,
  • Yih-Chung Tham,
  • Yih-Chung Tham,
  • Victor Koh,
  • Seng Chee Loon,
  • Maria Cecilia Aquino,
  • Katherine Lun,
  • Ching-Yu Cheng,
  • Ching-Yu Cheng,
  • Ching-Yu Cheng,
  • Kee Yuan Ngiam,
  • Marcus Tan

DOI
https://doi.org/10.3389/fmed.2024.1359073
Journal volume & issue
Vol. 11

Abstract

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ObjectiveThe aim of this study was to evaluate the accuracy, comprehensiveness, and safety of a publicly available large language model (LLM)—ChatGPT in the sub-domain of glaucoma.DesignEvaluation of diagnostic test or technology.Subjects, participants, and/or controlsWe seek to evaluate the responses of an artificial intelligence chatbot ChatGPT (version GPT-3.5, OpenAI).Methods, intervention, or testingWe curated 24 clinically relevant questions in the domain of glaucoma. The questions spanned four categories: pertaining to diagnosis, treatment, surgeries, and ocular emergencies. Each question was posed to the LLM and the responses obtained were graded by an expert grader panel of three glaucoma specialists with combined experience of more than 30 years in the field. For responses which performed poorly, the LLM was further prompted to self-correct. The subsequent responses were then re-evaluated by the expert panel.Main outcome measuresAccuracy, comprehensiveness, and safety of the responses of a public domain LLM.ResultsThere were a total of 24 questions and three expert graders with a total number of responses of n = 72. The scores were ranked from 1 to 4, where 4 represents the best score with a complete and accurate response. The mean score of the expert panel was 3.29 with a standard deviation of 0.484. Out of the 24 question-response pairs, seven (29.2%) of them had a mean inter-grader score of 3 or less. The mean score of the original seven question-response pairs was 2.96 which rose to 3.58 after an opportunity to self-correct (z-score − 3.27, p = 0.001, Mann–Whitney U). The seven out of 24 question-response pairs which performed poorly were given a chance to self-correct. After self-correction, the proportion of responses obtaining a full score increased from 22/72 (30.6%) to 12/21 (57.1%), (p = 0.026, χ2 test).ConclusionLLMs show great promise in the realm of glaucoma with additional capabilities of self-correction. The application of LLMs in glaucoma is still in its infancy, and still requires further research and validation.

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