Self-supervised category selective attention classifier network for diabetic macular edema classification

ConclusionsThe proposed SSCSAC-Net represents a significant advancement in automated DME classification. By effectively using self-supervised learning and attention mechanisms, the model offers improved accuracy in identifying DME-related features within retinal images. Its robustness and generalizability across different datasets highlight its potential for clinical applications, providing a valuable tool for clinicians in diagnosing DME effectively.
Source: Acta Diabetologica - Category: Endocrinology Source Type: research