1. Identification of diabetic retinopathy classification using machine learning algorithms on clinical data and optical coherence tomography angiography
- Author
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Li, Xiaoli, Wen, Xin, Shang, Xianwen, Liu, Junbin, Zhang, Liang, Cui, Ying, Luo, Xiaoyang, Zhang, Guanrong, Xie, Jie, Huang, Tian, Chen, Zhifan, Lyu, Zheng, Wu, Xiyu, Lan, Yuqing, and Meng, Qianli
- Abstract
Background: To apply machine learning (ML) algorithms to perform multiclass diabetic retinopathy (DR) classification using both clinical data and optical coherence tomography angiography (OCTA). Methods: In this cross-sectional observational study, clinical data and OCTA parameters from 203 diabetic patients (203 eye) were used to establish the ML models, and those from 169 diabetic patients (169 eye) were used for independent external validation. The random forest, gradient boosting machine (GBM), deep learning and logistic regression algorithms were used to identify the presence of DR, referable DR (RDR) and vision-threatening DR (VTDR). Four different variable patterns based on clinical data and OCTA variables were examined. The algorithms’ performance were evaluated using receiver operating characteristic curves and the area under the curve (AUC) was used to assess predictive accuracy. Results: The random forest algorithm on OCTA+clinical data-based variables and OCTA+non-laboratory factor-based variables provided the higher AUC values for DR, RDR and VTDR. The GBM algorithm produced similar results, albeit with slightly lower AUC values. Leading predictors of DR status included vessel density, retinal thickness and GCC thickness, as well as the body mass index, waist-to-hip ratio and glucose-lowering treatment. Conclusions: ML-based multiclass DR classification using OCTA and clinical data can provide reliable assistance for screening, referral, and management DR populations.
- Published
- 2024
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