Abstract
Myopia is increasingly prevalent among children, making routine eye exams crucial. This study develops machine learning (ML) models to predict future myopia development. These models utilize easily accessible, non-invasive data gathered during standard eye clinic visits, deliberately excluding more complex measurements such as axial length or corneal curvature. We used patient records from our pediatric ophthalmology clinic (2010-2022), including only those with at least two visits and no initial myopia. We created three prediction models: whether a patient will develop myopia at some point based on their first visit, be diagnosed in the subsequent visit, or be diagnosed with myopia within a year. We employed Random Forest and Gradient Boosting Tree algorithms for analysis. The dataset included 7814 visits from 2437 patients (average age 5.7 years, range 4 months to 21 years). Among them, 429 (11%) developed myopia. The models predicted myopia with up to 77% sensitivity and 92% specificity. This study introduces an AI-based method to identify children at higher risk for the onset of myopic refractive error, enabling personalized follow-up and treatment plans. Our approach offers caregivers an advanced screening tool to detect myopia risk using readily available data.