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Detecting visually significant cataract using retinal photograph-based deep learning.

Yih-Chung ThamJocelyn Hui Lin GohAyesha AneesXiaofeng LeiTyler Hyungtaek RimMiao-Li CheeYa-Xing WangJost Bruno JonasSahil ThakurZhen Ling TeoNing CheungHaslina HamzahGavin S W TanRahat HusainCharumathi SabanayagamJie Jin WangQingyu ChenZhiyong LuTiarnan D L KeenanEmily Y ChewAva Grace TanPaul MitchellRick S M GohXinxing XuYong LiuTien Yin WongChing-Yu Cheng
Published in: Nature aging (2022)
Age-related cataracts are the leading cause of visual impairment among older adults. Many significant cases remain undiagnosed or neglected in communities, due to limited availability or accessibility to cataract screening. In the present study, we report the development and validation of a retinal photograph-based, deep-learning algorithm for automated detection of visually significant cataracts, using more than 25,000 images from population-based studies. In the internal test set, the area under the receiver operating characteristic curve (AUROC) was 96.6%. External testing performed across three studies showed AUROCs of 91.6-96.5%. In a separate test set of 186 eyes, we further compared the algorithm's performance with 4 ophthalmologists' evaluations. The algorithm performed comparably, if not being slightly more superior (sensitivity of 93.3% versus 51.7-96.6% by ophthalmologists and specificity of 99.0% versus 90.7-97.9% by ophthalmologists). Our findings show the potential of a retinal photograph-based screening tool for visually significant cataracts among older adults, providing more appropriate referrals to tertiary eye centers.
Keyphrases
  • deep learning
  • optical coherence tomography
  • convolutional neural network
  • diabetic retinopathy
  • artificial intelligence
  • machine learning
  • optic nerve
  • case control
  • cataract surgery
  • climate change