Artificial intelligence for ocular oncology
- PMID: 37326226
- PMCID: PMC10399931
- DOI: 10.1097/ICU.0000000000000982
Artificial intelligence for ocular oncology
Abstract
Purpose of review: The aim of this article is to provide an update on the latest applications of deep learning (DL) and classical machine learning (ML) techniques to the detection and prognostication of intraocular and ocular surface malignancies.
Recent findings: Most recent studies focused on using DL and classical ML techniques for prognostication purposes in patients with uveal melanoma (UM).
Summary: DL has emerged as the leading ML technique for prognostication in ocular oncological conditions, particularly in UM. However, the application of DL may be limited by the relatively rarity of these conditions.
Copyright © 2023 The Author(s). Published by Wolters Kluwer Health, Inc.
Conflict of interest statement
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- Liu TYA, Zhu H, Chen H, et al. . Gene expression profile prediction in uveal melanoma using deep learning: a pilot study for the development of an alternative survival prediction tool. Ophthalmol Retina 2020; 4:1213–1215.. - PubMed
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