Application of Deep Learning to Retinal-Image-Based Oculomics for Evaluation of Systemic Health: A Review

J Clin Med. 2022 Dec 24;12(1):152. doi: 10.3390/jcm12010152.

Abstract

The retina is a window to the human body. Oculomics is the study of the correlations between ophthalmic biomarkers and systemic health or disease states. Deep learning (DL) is currently the cutting-edge machine learning technique for medical image analysis, and in recent years, DL techniques have been applied to analyze retinal images in oculomics studies. In this review, we summarized oculomics studies that used DL models to analyze retinal images-most of the published studies to date involved color fundus photographs, while others focused on optical coherence tomography images. These studies showed that some systemic variables, such as age, sex and cardiovascular disease events, could be consistently robustly predicted, while other variables, such as thyroid function and blood cell count, could not be. DL-based oculomics has demonstrated fascinating, "super-human" predictive capabilities in certain contexts, but it remains to be seen how these models will be incorporated into clinical care and whether management decisions influenced by these models will lead to improved clinical outcomes.

Keywords: artificial intelligence; cardiovascular diseases; color fundus photograph; deep learning; machine learning; neurodegenerative diseases; oculomics; optical coherence tomography; retinal imaging; systemic diseases.

Publication types

  • Review

Grants and funding

This research received no external funding.