Frontiers in Cell and Developmental Biology (Aug 2024)

DeepMonitoring: a deep learning-based monitoring system for assessing the quality of cornea images captured by smartphones

  • Zhongwen Li,
  • Zhongwen Li,
  • Lei Wang,
  • Wei Qiang,
  • Kuan Chen,
  • Zhouqian Wang,
  • Yi Zhang,
  • He Xie,
  • Shanjun Wu,
  • Jiewei Jiang,
  • Wei Chen,
  • Wei Chen

DOI
https://doi.org/10.3389/fcell.2024.1447067
Journal volume & issue
Vol. 12

Abstract

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Smartphone-based artificial intelligence (AI) diagnostic systems could assist high-risk patients to self-screen for corneal diseases (e.g., keratitis) instead of detecting them in traditional face-to-face medical practices, enabling the patients to proactively identify their own corneal diseases at an early stage. However, AI diagnostic systems have significantly diminished performance in low-quality images which are unavoidable in real-world environments (especially common in patient-recorded images) due to various factors, hindering the implementation of these systems in clinical practice. Here, we construct a deep learning-based image quality monitoring system (DeepMonitoring) not only to discern low-quality cornea images created by smartphones but also to identify the underlying factors contributing to the generation of such low-quality images, which can guide operators to acquire high-quality images in a timely manner. This system performs well across validation, internal, and external testing sets, with AUCs ranging from 0.984 to 0.999. DeepMonitoring holds the potential to filter out low-quality cornea images produced by smartphones, facilitating the application of smartphone-based AI diagnostic systems in real-world clinical settings, especially in the context of self-screening for corneal diseases.

Keywords