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Research on an Intelligent Lightweight-Assisted Pterygium Diagnosis Model Based on Anterior Segment Images.

Bo ZhengYunfang LiuKai HeMaonian WuLing JinQin JiangShaojun ZhuXiulan HaoChenghu WangWei-Hua Yang
Published in: Disease markers (2021)
This study used deep learning methods to propose a three-category intelligent lightweight-assisted pterygium diagnosis model. The developed model can be used to screen patients for pterygium problems initially, provide reasonable suggestions, and provide timely referrals. It can help primary doctors improve pterygium diagnoses, confer social benefits, and lay the foundation for future models to be embedded in mobile devices.
Keyphrases
  • deep learning
  • mental health
  • end stage renal disease
  • newly diagnosed
  • healthcare
  • chronic kidney disease
  • high throughput
  • machine learning
  • patient reported outcomes
  • optical coherence tomography