Clinical Wide-Field Retinal Image Deep Learning Classification of Exudative and Non-Exudative Age-Related Macular Degeneration

被引:10
|
作者
Tak, Nathaniel [1 ]
Reddy, Akshay J. [1 ]
Martel, Juliette [2 ]
Martel, James B. [1 ]
机构
[1] Calif Northstate Univ, Coll Med, Ophthalmol, Elk Grove, CA 95757 USA
[2] Calif Northstate Univ, Hlth Sci, Rancho Cordova, CA USA
关键词
artificial intelligence in medicine; macular degeneration; optos imaging; convolutional neural networks (cnn); computer-aided diagnosis; ARTIFICIAL-INTELLIGENCE; PREDICTION;
D O I
10.7759/cureus.17579
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background: Age-related macular degeneration (AMD) is a disease that currently affects approximately 196 million individuals and is projected to affect 288 million in 2040. As a result, better and earlier detection methods for this disease are needed in an effort to provide a higher quality of care. One way to achieve this is through the utilization of machine learning. A deep neural network, specifically a convoluted neural network (CNN) can be trained to differentiate between different types of AMD images given the proper training data. Methods: In this study, a CNN was trained on 420 Optos wide-field retinal images for 70 epochs in order to classify between exudative and non-exudative AMD. These images were obtained and labeled by ophthalmologists from the Martel Eye Clinic in Rancho Cordova, CA. Results: After completing the study, a model was created with 88% accuracy. Both the training and validation loss started above 1 and ended below 0.2. Despite only analyzing a single image at a time, the model was still able to accurately identify if the individual had AMD in both eyes or one eye only. The model had the most trouble with bilateral non-exudative AMD. Overall the model was fairly accurate in the other categories. It was noted that the neural network was able to further differentiate from a single image if the disease is present in left, right, or both eyes. This is a point of contention for further investigation as it is impossible for the artificial intelligence (AI) to extrapolate the condition of both eyes from only one image. Conclusion: This research fostered the development of a CNN that was able to differentiate between exudative and non-exudative AMD. As well as determine if the disease is present in the right, left, or both eyes with a relatively high degree of accuracy. The model was trained on clinical data and can theoretically be used to classify other clinical images it has never encountered before.
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页数:6
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