Abstract

PurposeTo develop an artificial intelligence (AI) system that can predict optical coherence tomography (OCT)-derived high myopia grades based on fundus photographs.MethodsIn this retrospective study, 1,853 qualified fundus photographs obtained from the Zhongshan Ophthalmic Center (ZOC) were selected to develop an AI system. Three retinal specialists assessed corresponding OCT images to label the fundus photographs. We developed a novel deep learning model to detect and predict myopic maculopathy according to the atrophy (A), traction (T), and neovascularisation (N) classification and grading system. Furthermore, we compared the performance of our model with that of ophthalmologists.ResultsWhen evaluated on the test set, the deep learning model showed an area under the receiver operating characteristic curve (AUC) of 0.969 for category A, 0.895 for category T, and 0.936 for category N. The average accuracy of each category was 92.38% (A), 85.34% (T), and 94.21% (N). Moreover, the performance of our AI system was superior to that of attending ophthalmologists and comparable to that of retinal specialists.ConclusionOur AI system achieved performance comparable to that of retinal specialists in predicting vision-threatening conditions in high myopia via simple fundus photographs instead of fundus and OCT images. The application of this system can save the cost of patients' follow-up, and is more suitable for applications in less developed areas that only have fundus photography.

Highlights

  • Myopia has been recognized as an important public health problem worldwide [1]

  • Previous studies have shown that artificial intelligence (AI) technology can use fundus photographs to predict cardiovascular risk, refractive errors, and center-involved diabetic macular oedema (ci-DME), significantly outperforming specialists [17–19]

  • Varadarajan et al reported that their AI system, applied fundus photographs to predict the presence of ci-DME, achieved 85% sensitivity and 80% specificity

Read more

Summary

Introduction

Myopia has been recognized as an important public health problem worldwide [1]. The global number of myopic subjects will increase to 5 billion by 2050, and about 20% of them will suffer from high myopia [2]. The high prevalence of myopia and high myopia leads to an increase in pathological myopia (PM), especially in East Asian countries [3]. Patients with PM usually suffer from myopic maculopathy, which is one of the most common causes of irreversible blinding vision loss [4]. Impaired people tend to have lower capacity for work and higher rate of depression, imposing a significant burden on individuals and society [5]. Formulating an applicable strategy for risk stratification is conducive to surveillance and early treatment, [6, 7] but the diagnosis and assessment of myopic maculopathy in the clinic are relatively complex [8]

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call