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Deep Learning vs. Human Graders for Classifying Severity Levels of Diabetic Retinopathy in a Real-World Nationwide Screening Program (1810.08290v1)

Published 18 Oct 2018 in cs.CV

Abstract: Deep learning algorithms have been used to detect diabetic retinopathy (DR) with specialist-level accuracy. This study aims to validate one such algorithm on a large-scale clinical population, and compare the algorithm performance with that of human graders. 25,326 gradable retinal images of patients with diabetes from the community-based, nation-wide screening program of DR in Thailand were analyzed for DR severity and referable diabetic macular edema (DME). Grades adjudicated by a panel of international retinal specialists served as the reference standard. Across different severity levels of DR for determining referable disease, deep learning significantly reduced the false negative rate (by 23%) at the cost of slightly higher false positive rates (2%). Deep learning algorithms may serve as a valuable tool for DR screening.

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Authors (32)
  1. Paisan Raumviboonsuk (2 papers)
  2. Jonathan Krause (14 papers)
  3. Peranut Chotcomwongse (4 papers)
  4. Rory Sayres (10 papers)
  5. Rajiv Raman (12 papers)
  6. Kasumi Widner (2 papers)
  7. Bilson J L Campana (1 paper)
  8. Sonia Phene (4 papers)
  9. Kornwipa Hemarat (1 paper)
  10. Mongkol Tadarati (2 papers)
  11. Sukhum Silpa-Acha (1 paper)
  12. Jirawut Limwattanayingyong (2 papers)
  13. Chetan Rao (2 papers)
  14. Oscar Kuruvilla (1 paper)
  15. Jesse Jung (1 paper)
  16. Jeffrey Tan (3 papers)
  17. Surapong Orprayoon (1 paper)
  18. Chawawat Kangwanwongpaisan (1 paper)
  19. Ramase Sukulmalpaiboon (1 paper)
  20. Chainarong Luengchaichawang (1 paper)
Citations (14)