Big Data Mining and Analytics (Jun 2024)

AI-Based Advanced Approaches and Dry Eye Disease Detection Based on Multi-Source Evidence: Cases, Applications, Issues, and Future Directions

  • Mini Han Wang,
  • Lumin Xing,
  • Yi Pan,
  • Feng Gu,
  • Junbin Fang,
  • Xiangrong Yu,
  • Chi Pui Pang,
  • Kelvin Kam-Lung Chong,
  • Carol Yim-Lui Cheung,
  • Xulin Liao,
  • Xiaoxiao Fang,
  • Jie Yang,
  • Ruoyu Zhou,
  • Xiaoshu Zhou,
  • Fengling Wang,
  • Wenjian Liu

DOI
https://doi.org/10.26599/BDMA.2023.9020024
Journal volume & issue
Vol. 7, no. 2
pp. 445 – 484

Abstract

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This study explores the potential of Artificial Intelligence (AI) in early screening and prognosis of Dry Eye Disease (DED), aiming to enhance the accuracy of therapeutic approaches for eye-care practitioners. Despite the promising opportunities, challenges such as diverse diagnostic evidence, complex etiology, and interdisciplinary knowledge integration impede the interpretability, reliability, and applicability of AI-based DED detection methods. The research conducts a comprehensive review of datasets, diagnostic evidence, and standards, as well as advanced algorithms in AI-based DED detection over the past five years. The DED diagnostic methods are categorized into three groups based on their relationship with AI techniques: (1) those with ground truth and/or comparable standards, (2) potential AI-based methods with significant advantages, and (3) supplementary methods for AI-based DED detection. The study proposes suggested DED detection standards, the combination of multiple diagnostic evidence, and future research directions to guide further investigations. Ultimately, the research contributes to the advancement of ophthalmic disease detection by providing insights into knowledge foundations, advanced methods, challenges, and potential future perspectives, emphasizing the significant role of AI in both academic and practical aspects of ophthalmology.

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