4.6 Article

Computer Vision for Brain Disorders Based Primarily on Ocular Responses

Journal

FRONTIERS IN NEUROLOGY
Volume 12, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fneur.2021.584270

Keywords

ocular assessment; retina; computer vision; cognitive neuroscience; brain disorders; eye-brain engineering

Funding

  1. Key-Area Research and Development Program of Guangdong Province [2018B030331001]
  2. International Postdoctoral Exchange Fellowship Program by the Office of China Postdoctoral Council [20160021]
  3. International Partnership Program of Chinese Academy of Sciences [172644KYS820170004]
  4. Commission on Innovation and Technology in Shenzhen Municipality of China [JCYJ20150630114942262]
  5. Hong Kong, Macao, and Taiwan Science and Technology Cooperation Innovation Platform in Universities in Guangdong Province [2013gjhz0002]
  6. National Key R&D Program of China [2017YFC1310503]

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Real-time ocular responses are closely linked to emotional and cognitive processing in the central nervous system, serving as potential biomarkers for screening and evaluating cognitive and psychiatric disorders. Advances in artificial intelligence, particularly in using machine learning-based AI and computer vision with deep-learning neural networks, offer new opportunities for analyzing ocular features in cognitive neuroscience, potentially leading to novel evaluations and interventions for brain disorders.
Real-time ocular responses are tightly associated with emotional and cognitive processing within the central nervous system. Patterns seen in saccades, pupillary responses, and spontaneous blinking, as well as retinal microvasculature and morphology visualized via office-based ophthalmic imaging, are potential biomarkers for the screening and evaluation of cognitive and psychiatric disorders. In this review, we outline multiple techniques in which ocular assessments may serve as a non-invasive approach for the early detections of various brain disorders, such as autism spectrum disorder (ASD), Alzheimer's disease (AD), schizophrenia (SZ), and major depressive disorder (MDD). In addition, rapid advances in artificial intelligence (AI) present a growing opportunity to use machine learning-based AI, especially computer vision (CV) with deep-learning neural networks, to shed new light on the field of cognitive neuroscience, which is most likely to lead to novel evaluations and interventions for brain disorders. Hence, we highlight the potential of using AI to evaluate brain disorders based primarily on ocular features.

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