Tehran University of Medical Sciences

Science Communicator Platform

Stay connected! Follow us on X network (Twitter):
Share this content! On (X network) By
Artificial Intelligence in Stroke Risk Assessment and Management Via Retinal Imaging Publisher



Khalafi P1 ; Morsali S2, 3, 4 ; Hamidi S2, 3 ; Ashayeri H2, 4 ; Sobhi N5 ; Pedrammehr S6, 7 ; Jafarizadeh A5
Authors
Show Affiliations
Authors Affiliations
  1. 1. School of Medicine, Tehran University of Medical Sciences, Tehran, Iran
  2. 2. Student Research Committee, Tabriz University of Medical Sciences, Tabriz, Iran
  3. 3. Tabriz USERN Office, Universal Scientific Education and Research Network (USERN), Tabriz, Iran
  4. 4. Neuroscience Research Center, Tabriz University of Medical Sciences, Tabriz, Iran
  5. 5. Nikookari Eye Center, Tabriz University of Medical Sciences, Tabriz, Iran
  6. 6. Faculty of Design, Tabriz Islamic Art University, Tabriz, Iran
  7. 7. Institute for Intelligent Systems Research and Innovation (IISRI), Deakin University, Geelong, VIC, Australia

Source: Frontiers in Computational Neuroscience Published:2025


Abstract

Retinal imaging, used for assessing stroke-related retinal changes, is a non-invasive and cost-effective method that can be enhanced by machine learning and deep learning algorithms, showing promise in early disease detection, severity grading, and prognostic evaluation in stroke patients. This review explores the role of artificial intelligence (AI) in stroke patient care, focusing on retinal imaging integration into clinical workflows. Retinal imaging has revealed several microvascular changes, including a decrease in the central retinal artery diameter and an increase in the central retinal vein diameter, both of which are associated with lacunar stroke and intracranial hemorrhage. Additionally, microvascular changes, such as arteriovenous nicking, increased vessel tortuosity, enhanced arteriolar light reflex, decreased retinal fractals, and thinning of retinal nerve fiber layer are also reported to be associated with higher stroke risk. AI models, such as Xception and EfficientNet, have demonstrated accuracy comparable to traditional stroke risk scoring systems in predicting stroke risk. For stroke diagnosis, models like Inception, ResNet, and VGG, alongside machine learning classifiers, have shown high efficacy in distinguishing stroke patients from healthy individuals using retinal imaging. Moreover, a random forest model effectively distinguished between ischemic and hemorrhagic stroke subtypes based on retinal features, showing superior predictive performance compared to traditional clinical characteristics. Additionally, a support vector machine model has achieved high classification accuracy in assessing pial collateral status. Despite this advancements, challenges such as the lack of standardized protocols for imaging modalities, hesitance in trusting AI-generated predictions, insufficient integration of retinal imaging data with electronic health records, the need for validation across diverse populations, and ethical and regulatory concerns persist. Future efforts must focus on validating AI models across diverse populations, ensuring algorithm transparency, and addressing ethical and regulatory issues to enable broader implementation. Overcoming these barriers will be essential for translating this technology into personalized stroke care and improving patient outcomes. Copyright © 2025 Khalafi, Morsali, Hamidi, Ashayeri, Sobhi, Pedrammehr and Jafarizadeh.