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Inducement and Evaluation of a Murine Model of Experimental Myopia
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Machine-learning random forest algorithms predict post-cycloplegic myopic corrections from noncycloplegic clinical

Yansong Hao1, Xianjiang Wang2, Bin Sun1

  • 1Department of Ophthalmology, Yantai Affiliated Hospital of Binzhou Medical University, Yantai, Shandong Province, China.

Optometry and Vision Science : Official Publication of the American Academy of Optometry
|February 24, 2025
PubMed
Summary

Machine learning models accurately predict post-cycloplegic myopia and refractive outcomes using noncycloplegic data. These tools enhance myopia screening and streamline subjective refractions for efficient eye care.

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Area of Science:

  • Ophthalmology
  • Data Science
  • Machine Learning

Background:

  • Accurate refractive error assessment is crucial for myopia screening and correction.
  • Cycloplegic refraction, while accurate, presents logistical challenges in clinical practice.
  • Developing predictive models using noncycloplegic data can improve efficiency and accessibility.

Purpose of the Study:

  • To develop and validate machine learning models for predicting post-cycloplegic myopia and refractive outcomes using noncycloplegic clinical data.
  • To enhance the accuracy of myopia screening through a classification model.
  • To provide an objective starting point for noncycloplegic subjective refractions using a regression model.

Main Methods:

  • A cross-sectional study analyzed data from 2483 eyes.
  • Random forest classification and regression models were built using pre-refraction measurements (e.g., axial length, corneal curvature) and uncorrected visual acuity.
  • Model performance was evaluated using metrics like accuracy, precision, sensitivity, specificity, R-squared, and RMSE.

Main Results:

  • The classification model achieved high accuracy (out-of-bag: 92%, cross-validation: 93%, external validation: 94%) and precision (95%).
  • The regression model demonstrated strong predictive power with an external validation R-squared of 0.88 and RMSE of 0.63.
  • Both models showed robust performance across internal and external validation datasets.

Conclusions:

  • Machine learning models can effectively predict post-cycloplegic refractive outcomes from noncycloplegic data.
  • The classification model aids in early myopia detection and screening.
  • The regression model offers a reliable objective starting point for subjective refractions, improving efficiency in clinical settings, especially where cycloplegia is challenging.