4.6 Article

Multimodal, multitask, multiattention (M3) deep learning detection of reticular pseudodrusen: Toward automated and accessible classification of age-related macular degeneration

Journal

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/jamia/ocaa302

Keywords

reticular pseudodrusen; subretinal drusenoid deposits; age-related macular degeneration; Age-Related Eye Disease Study 2; deep learning; multimodal deep learning; multitask training; multiattention deep learning

Funding

  1. Research to Prevent Blindness
  2. National Center for Biotechnology Information/National Library of Medicine/National Institutes of Health
  3. National Eye Institute/National Institutes of Health, Department of Health and Human Services, Bethesda, Maryland [HHS-N-260-2005-00007-C, NO1-EY-5-0007, K99LM013001]
  4. National Institutes of Health: Office of Dietary Supplements, National Center for Complementary and Alternative Medicine
  5. National Institute on Aging
  6. National Heart, Lung, and Blood Institute
  7. National Institute of Neurological Disorders and Stroke

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This study successfully developed a novel deep learning framework for accurate detection of Reticular pseudodrusen (RPD) in AMD, with significantly better performance on CFP images compared to human retinal specialists. The framework also accurately detected geographic atrophy and pigmentary abnormalities, demonstrating good generalizability.
Objective: Reticular pseudodrusen (RPD), a key feature of age-related macular degeneration (AMD), are poorly detected by human experts on standard color fundus photography (CFP) and typically require advanced imaging modalities such as fundus autofluorescence (FAF). The objective was to develop and evaluate the performance of a novel multimodal, multitask, multiattention (M3) deep learning framework on RPD detection. Materials and Methods: A deep learning framework (M3) was developed to detect RPD presence accurately using CFP alone, FAF alone, or both, employing >8000 CFP-FAF image pairs obtained prospectively (Age-Related Eye Disease Study 2). The M3 framework includes multimodal (detection from single or multiple image modalities), multitask (training different tasks simultaneously to improve generalizability), and multiattention (improving ensembled feature representation) operation. Performance on RPD detection was compared with state-of-the-art deep learning models and 13 ophthalmologists; performance on detection of 2 other AMD features (geographic atrophy and pigmentary abnormalities) was also evaluated. Results: For RPD detection, M3 achieved an area under the receiver-operating characteristic curve (AUROC) of 0.832, 0.931, and 0.933 for CFP alone, FAF alone, and both, respectively. M3 performance on CFP was very substantially superior to human retinal specialists (median F1 score = 0.644 vs 0.350). External validation (the Rotterdam Study) demonstrated high accuracy on CFP alone (AUROC, 0.965). The M3 framework also accurately detected geographic atrophy and pigmentary abnormalities (AUROC, 0.909 and 0.912, respectively), demonstrating its generalizability. Conclusions: This study demonstrates the successful development, robust evaluation, and external validation of a novel deep learning framework that enables accessible, accurate, and automated AMD diagnosis and prognosis.

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