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Predicting optical coherence tomography-derived diabetic macular edema grades from fundus photographs using deep learning.

Avinash V VaradarajanPinal BavishiPaisan RuamviboonsukPeranut ChotcomwongseSubhashini VenugopalanArunachalam NarayanaswamyJorge CuadrosKuniyoshi KanaiGeorge BresnickMongkol TadaratiSukhum Silpa-ArchaJirawut LimwattanayingyongVariya NganthaveeJoseph R LedsamPearse Andrew KeaneGreg S CorradoLily PengDale R Webster
Published in: Nature communications (2020)
Center-involved diabetic macular edema (ci-DME) is a major cause of vision loss. Although the gold standard for diagnosis involves 3D imaging, 2D imaging by fundus photography is usually used in screening settings, resulting in high false-positive and false-negative calls. To address this, we train a deep learning model to predict ci-DME from fundus photographs, with an ROC-AUC of 0.89 (95% CI: 0.87-0.91), corresponding to 85% sensitivity at 80% specificity. In comparison, retinal specialists have similar sensitivities (82-85%), but only half the specificity (45-50%, p < 0.001). Our model can also detect the presence of intraretinal fluid (AUC: 0.81; 95% CI: 0.81-0.86) and subretinal fluid (AUC 0.88; 95% CI: 0.85-0.91). Using deep learning to make predictions via simple 2D images without sophisticated 3D-imaging equipment and with better than specialist performance, has broad relevance to many other applications in medical imaging.
Keyphrases
  • deep learning
  • optical coherence tomography
  • high resolution
  • diabetic retinopathy
  • convolutional neural network
  • healthcare
  • machine learning
  • palliative care
  • fluorescence imaging
  • high speed
  • mass spectrometry