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Artificial intelligence in retinal image analysis for hypertensive retinopathy diagnosis: a comprehensive review and perspective

Rajendra Kankrale, Manesh Kokare

2025Visual Computing for Industry Biomedicine and Art8 citationsDOIOpen Access PDF

Abstract

Hypertensive retinopathy (HR) occurs when the choroidal vessels, which form the photosensitive layer at the back of the eye, are injured owing to high blood pressure. Artificial intelligence (AI) in retinal image analysis (RIA) for HR diagnosis involves the use of advanced computational algorithms and machine learning (ML) strategies to recognize and evaluate signs of HR in retinal images automatically. This review aims to advance the field of HR diagnosis by investigating the latest ML and deep learning techniques, and highlighting their efficacy and capability for early diagnosis and intervention. By analyzing recent advancements and emerging trends, this study seeks to inspire further innovation in automated RIA. In this context, AI shows significant potential for enhancing the accuracy, effectiveness, and consistency of HR diagnoses. This will eventually lead to better clinical results by enabling earlier intervention and precise management of the condition. Overall, the integration of AI into RIA represents a considerable step forward in the early identification and treatment of HR, offering substantial benefits to both healthcare providers and patients.

Topics & Concepts

Context (archaeology)Artificial intelligenceComputer scienceMedical diagnosisIdentification (biology)Intervention (counseling)Diabetic retinopathyPerspective (graphical)Deep learningHypertensive retinopathyConsistency (knowledge bases)MedicineMachine learningPathologyDiabetes mellitusPaleontologyPsychiatryBiologyEndocrinologyBotanyRetinal Imaging and AnalysisRetinal and Optic ConditionsRetinal Diseases and Treatments
Artificial intelligence in retinal image analysis for hypertensive retinopathy diagnosis: a comprehensive review and perspective | Litcius