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Automated detection of type 1 ROP, type 2 ROP and A-ROP based on deep learning

Medicine and Health

Automated detection of type 1 ROP, type 2 ROP and A-ROP based on deep learning

E. K. Yenice, C. Kara, et al.

This groundbreaking study by Eşay Kıran Yenice, Caner Kara, and Çağatay Berke Erdaş delves into the use of deep learning technology to detect various stages of retinopathy of prematurity with remarkable accuracy. By training a sophisticated RegNetY002 convolutional neural network on a large dataset, the researchers demonstrate how AI can enhance ophthalmologists' efficiency and improve patient outcomes in this critical area of neonatal care.

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~3 min • Beginner • English
Abstract
PURPOSE: To provide automatic detection of Type 1 retinopathy of prematurity (ROP), Type 2 ROP, and A-ROP by deep learning-based analysis of fundus images obtained by clinical examination using convolutional neural networks. MATERIAL AND METHODS: A total of 634 fundus images of 317 premature infants born at 23–34 weeks of gestation were evaluated. After image pre-processing, we obtained a rectangular region (ROI). RegNetY002 was used for algorithm training, and stratified 10-fold cross-validation was applied during training to evaluate and standardize our model. The model's performance was reported as accuracy and specificity and described by the receiver operating characteristic (ROC) curve and area under the curve (AUC). RESULTS: The model achieved 0.98 accuracy and 0.98 specificity in detecting Type 2 ROP versus Type 1 ROP and A-ROP. On the other hand, as a result of the analysis of ROI regions, the model achieved 0.90 accuracy and 0.95 specificity in detecting Stage 2 ROP versus Stage 3 ROP and 0.91 accuracy and 0.92 specificity in detecting A-ROP versus Type 1 ROP. The AUC scores were 0.98 for Type 2 ROP versus Type 1 ROP and A-ROP, 0.85 for Stage 2 ROP versus Stage 3 ROP, and 0.91 for A-ROP versus Type 1 ROP. CONCLUSION: Our study demonstrated that ROP classification by DL-based analysis of fundus images can be distinguished with high accuracy and specificity. Integrating DL-based artificial intelligence algorithms into clinical practice may reduce the workload of ophthalmologists in the future and provide support in decision-making in the management of ROP.
Publisher
Eye
Published On
Jun 25, 2024
Authors
Eşay Kıran Yenice, Caner Kara, Çağatay Berke Erdaş
Tags
deep learning
retinopathy of prematurity
fundus images
convolutional neural network
automated detection
neonatal care
medical imaging
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