Frontiers in Artificial Intelligence (Dec 2023)

Development and evaluation of multimodal AI for diagnosis and triage of ophthalmic diseases using ChatGPT and anterior segment images: protocol for a two-stage cross-sectional study

  • Zhiyu Peng,
  • Zhiyu Peng,
  • Zhiyu Peng,
  • Zhiyu Peng,
  • Ruiqi Ma,
  • Ruiqi Ma,
  • Ruiqi Ma,
  • Yihan Zhang,
  • Yihan Zhang,
  • Yihan Zhang,
  • Mingxu Yan,
  • Mingxu Yan,
  • Mingxu Yan,
  • Mingxu Yan,
  • Jie Lu,
  • Jie Lu,
  • Jie Lu,
  • Jie Lu,
  • Qian Cheng,
  • Jingjing Liao,
  • Yunqiu Zhang,
  • Jinghan Wang,
  • Jinghan Wang,
  • Jinghan Wang,
  • Yue Zhao,
  • Jiang Zhu,
  • Bing Qin,
  • Qin Jiang,
  • Qin Jiang,
  • Fei Shi,
  • Jiang Qian,
  • Jiang Qian,
  • Jiang Qian,
  • Xinjian Chen,
  • Xinjian Chen,
  • Chen Zhao,
  • Chen Zhao,
  • Chen Zhao

DOI
https://doi.org/10.3389/frai.2023.1323924
Journal volume & issue
Vol. 6

Abstract

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IntroductionArtificial intelligence (AI) technology has made rapid progress for disease diagnosis and triage. In the field of ophthalmic diseases, image-based diagnosis has achieved high accuracy but still encounters limitations due to the lack of medical history. The emergence of ChatGPT enables human-computer interaction, allowing for the development of a multimodal AI system that integrates interactive text and image information.ObjectiveTo develop a multimodal AI system using ChatGPT and anterior segment images for diagnosing and triaging ophthalmic diseases. To assess the AI system's performance through a two-stage cross-sectional study, starting with silent evaluation and followed by early clinical evaluation in outpatient clinics.Methods and analysisOur study will be conducted across three distinct centers in Shanghai, Nanjing, and Suqian. The development of the smartphone-based multimodal AI system will take place in Shanghai with the goal of achieving ≥90% sensitivity and ≥95% specificity for diagnosing and triaging ophthalmic diseases. The first stage of the cross-sectional study will explore the system's performance in Shanghai's outpatient clinics. Medical histories will be collected without patient interaction, and anterior segment images will be captured using slit lamp equipment. This stage aims for ≥85% sensitivity and ≥95% specificity with a sample size of 100 patients. The second stage will take place at three locations, with Shanghai serving as the internal validation dataset, and Nanjing and Suqian as the external validation dataset. Medical history will be collected through patient interviews, and anterior segment images will be captured via smartphone devices. An expert panel will establish reference standards and assess AI accuracy for diagnosis and triage throughout all stages. A one-vs.-rest strategy will be used for data analysis, and a post-hoc power calculation will be performed to evaluate the impact of disease types on AI performance.DiscussionOur study may provide a user-friendly smartphone-based multimodal AI system for diagnosis and triage of ophthalmic diseases. This innovative system may support early detection of ocular abnormalities, facilitate establishment of a tiered healthcare system, and reduce the burdens on tertiary facilities.Trial registrationThe study was registered in ClinicalTrials.gov on June 25th, 2023 (NCT 05930444).

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