Scientific Reports (Nov 2024)

Cross-instrument optical coherence tomography-angiography (OCTA)-based prediction of age-related macular degeneration (AMD) disease activity using artificial intelligence

  • Anna Heinke,
  • Haochen Zhang,
  • Krzysztof Broniarek,
  • Katarzyna Michalska-Małecka,
  • Wyatt Elsner,
  • Carlo Miguel B. Galang,
  • Daniel N. Deussen,
  • Alexandra Warter,
  • Fritz Kalaw,
  • Ines Nagel,
  • Akshay Agnihotri,
  • Nehal N. Mehta,
  • Julian Elias Klaas,
  • Valerie Schmelter,
  • Igor Kozak,
  • Sally L. Baxter,
  • Dirk-Uwe Bartsch,
  • Lingyun Cheng,
  • Cheolhong An,
  • Truong Nguyen,
  • William R. Freeman

DOI
https://doi.org/10.1038/s41598-024-78327-0
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 9

Abstract

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Abstract This study investigates the efficacy of predicting age-related macular degeneration (AMD) activity through deep neural networks (DNN) using a cross-instrument training dataset composed of Optical coherence tomography-angiography (OCTA) images from two different manufacturers. A retrospective cross-sectional study analyzed 2D vascular en-face OCTA images from Heidelberg Spectralis (1478 samples: 1102 training, 276 validation, 100 testing) and Optovue Solix (1003 samples: 754 training, 189 validation, 60 testing). OCTA scans were labeled based on clinical diagnoses and adjacent B-scan OCT fluid information, categorizing activity into normal, dry AMD, active wet AMD, and wet AMD in remission. Experiments explored cross-instrument disease classification using separate and combined datasets for training the DNN. Testing involved 100 Heidelberg and 60 Optovue samples. Training on Heidelberg data alone yielded 73% accuracy on Heidelberg images and 60% on Optovue images. Training on Optovue data alone resulted in 34% accuracy on Heidelberg and 85% on Optovue images. Combined training data from both instruments achieved 78% accuracy on Heidelberg and 76% on Optovue test sets. Results indicate that cross-instrument classifier training demonstrates high classification prediction accuracy, making cross-instrument training viable for future clinical applications. This implies that vascular morphology in OCTA can predict disease progression.

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