Artificial intelligence in therapeutic management of hyperlipidemic ocular pathology.

Journal: Experimental eye research
PMID:

Abstract

Hyperlipidemia has many ocular manifestations, the most prevalent being retinal vascular occlusion. Hyperlipidemic lesions and occlusions to the vessels supplying the retina result in permanent blindness, necessitating prompt detection and treatment. Retinal vascular occlusion is diagnosed using different imaging modalities, including optical coherence tomography angiography. These diagnostic techniques obtain images representing the blood flow through the retinal vessels, providing an opportunity for AI to utilize image recognition to detect blockages and abnormalities before patients present with symptoms. AI is already being used as a non-invasive method to detect retinal vascular occlusions and other vascular pathology, as well as predict treatment outcomes. As providers see an increase in patients presenting with new retinal vascular occlusions, the use of AI to detect and treat these conditions has the potential to improve patient outcomes and reduce the financial burden on the healthcare system. This article comprehends the implications of AI in the current management strategies of retinal vascular occlusion (RVO) in hyperlipidemia and the recent developments of AI technology in the management of ocular diseases.

Authors

  • Keiko Inouye
    Department of Translational Research, College of Osteopathic Medicine of the Pacific, Western University of Health Sciences, USA.
  • Aelita Petrosyan
    Department of Translational Research, College of Osteopathic Medicine of the Pacific, Western University of Health Sciences, USA.
  • Liana Moskalensky
    Department of Translational Research, College of Osteopathic Medicine of the Pacific, Western University of Health Sciences, USA.
  • Finosh G Thankam
    Department of Translational Research, College of Osteopathic Medicine of the Pacific, Western University of Health Sciences, USA. Electronic address: FThankam@westernu.edu.