JMIR Medical Informatics (May 2020)

Deep Learning–Based Prediction of Refractive Error Using Photorefraction Images Captured by a Smartphone: Model Development and Validation Study

  • Chun, Jaehyeong,
  • Kim, Youngjun,
  • Shin, Kyoung Yoon,
  • Han, Sun Hyup,
  • Oh, Sei Yeul,
  • Chung, Tae-Young,
  • Park, Kyung-Ah,
  • Lim, Dong Hui

DOI
https://doi.org/10.2196/16225
Journal volume & issue
Vol. 8, no. 5
p. e16225

Abstract

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BackgroundAccurately predicting refractive error in children is crucial for detecting amblyopia, which can lead to permanent visual impairment, but is potentially curable if detected early. Various tools have been adopted to more easily screen a large number of patients for amblyopia risk. ObjectiveFor efficient screening, easy access to screening tools and an accurate prediction algorithm are the most important factors. In this study, we developed an automated deep learning–based system to predict the range of refractive error in children (mean age 4.32 years, SD 1.87 years) using 305 eccentric photorefraction images captured with a smartphone. MethodsPhotorefraction images were divided into seven classes according to their spherical values as measured by cycloplegic refraction. ResultsThe trained deep learning model had an overall accuracy of 81.6%, with the following accuracies for each refractive error class: 80.0% for ≤−5.0 diopters (D), 77.8% for >−5.0 D and ≤−3.0 D, 82.0% for >−3.0 D and ≤−0.5 D, 83.3% for >−0.5 D and <+0.5 D, 82.8% for ≥+0.5 D and <+3.0 D, 79.3% for ≥+3.0 D and <+5.0 D, and 75.0% for ≥+5.0 D. These results indicate that our deep learning–based system performed sufficiently accurately. ConclusionsThis study demonstrated the potential of precise smartphone-based prediction systems for refractive error using deep learning and further yielded a robust collection of pediatric photorefraction images.