Korean J Ophthalmol.  2023 Apr;37(2):95-104. 10.3341/kjo.2022.0059.

Deep Learning-based Prediction of Axial Length Using Ultra-widefield Fundus Photography

Affiliations
  • 1Department of Ophthalmology, Seoul National University Hospital, Seoul, Korea
  • 2Department of Ophthalmology, Seoul National University College of Medicine, Seoul, Korea

Abstract

Purpose
To develop a deep learning model that can predict the axial lengths of eyes using ultra-widefield (UWF) fundus photography.
Methods
We retrospectively enrolled patients who visited the ophthalmology clinic at the Seoul National University Hospital between September 2018 and December 2021. Patients with axial length measurements and UWF images taken within 3 months of axial length measurement were included in the study. The dataset was divided into a development set and a test set at an 8:2 ratio while maintaining an equal distribution of axial lengths (stratified splitting with binning). We used transfer learning-based on EfficientNet B3 to develop the model. We evaluated the model’s performance using mean absolute error (MAE), R-squared (R2), and 95% confidence intervals (CIs). We used vanilla gradient saliency maps to illustrate the regions predominantly used by convolutional neural network.
Results
In total, 8,657 UWF retinal fundus images from 3,829 patients (mean age, 63.98 ±15.25 years) were included in the study. The deep learning model predicted the axial lengths of the test dataset with MAE and R2 values of 0.744 mm (95% CI, 0.709–0.779 mm) and 0.815 (95% CI, 0.785–0.840), respectively. The model’s accuracy was 73.7%, 95.9%, and 99.2% in prediction, with error margins of ±1.0, ±2.0, and ±3.0 mm, respectively.
Conclusions
We developed a deep learning-based model for predicting the axial length from UWF images with good performance.

Keyword

Biometry; Deep learning; Myopia; Retina
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