Progress in digital health and telemedicine has brought forth instruments can enhance the accessibility and efficacy of eye care services.Current research shows how technology-enabled approaches are changing the way care is provided.Traditional diagnostic methods rely on physician expertise, resulting in high misdiagnosis rates and data inefficiency.Integrating ophthalmology Air Quality in Southeast Brazil during COVID-19 Lockdown: A Combined Satellite and Ground-Based Data Analysis with artificial intelligence (AI) promises to overhaul current diagnostic approaches, potentially making a significant clinical impact.
Deep learning, an emerging facet of machine learning (ML), can uncover complex data structures without explicit rule specifications.The review centers on the revolutionary potential of AI in the identification and treatment of ocular disorders, such as diabetic retinopathy, degenerative maculopathy, retinal diseases, corneal diseases, anterior ocular region issues, and glaucoma.It explores AI-driven advancements in image analysis, pattern recognition, and ML techniques for individualized treatment plans, early diagnosis, and categorization.The difficulties with data standards, interpretability, and integration are discussed in this paper into clinical practice.
It also emphasizes the potential of AI to enhance screening efficiency, reduce physician Reactions to Environmental Changes: Place Attachment Predicts Interest in Earth Observation Data workload, and improve patient outcomes in ocular pathologies.