4.4 Review

Fundamentals of artificial intelligence for ophthalmologists

Journal

CURRENT OPINION IN OPHTHALMOLOGY
Volume 31, Issue 5, Pages 303-311

Publisher

LIPPINCOTT WILLIAMS & WILKINS
DOI: 10.1097/ICU.0000000000000679

Keywords

artificial intelligence; deep learning; gradient descent; image recognition; unsupervised learning

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Purpose of review As artificial intelligence continues to develop new applications in ophthalmic image recognition, we provide here an introduction for ophthalmologists and a primer on the mechanisms of deep learning systems. Recent findings Deep learning has lent itself to the automated interpretation of various retinal imaging modalities, including fundus photography and optical coherence tomography. Convolutional neural networks (CNN) represent the primary class of deep neural networks applied to these image analyses. These have been configured to aid in the detection of diabetes retinopathy, AMD, retinal detachment, glaucoma, and ROP, among other ocular disorders. Predictive models for retinal disease prognosis and treatment are also being validated. Summary Deep learning systems have begun to demonstrate a reliable level of diagnostic accuracy equal or better to human graders for narrow image recognition tasks. However, challenges regarding the use of deep learning systems in ophthalmology remain. These include trust of unsupervised learning systems and the limited ability to recognize broad ranges of disorders.

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