| Literature DB >> 34404252 |
Kathleen Romond1, Minhaj Alam2, Sasha Kravets1,3, Luis de Sisternes4, Theodore Leng5, Jennifer I Lim1, Daniel Rubin2, Joelle A Hallak1.
Abstract
Age-related macular degeneration (AMD) is a leading cause of severe vision loss. With our aging population, it may affect 288 million people globally by the year 2040. AMD progresses from an early and intermediate dry form to an advanced one, which manifests as choroidal neovascularization and geographic atrophy. Conversion to AMD-related exudation is known as progression to neovascular AMD, and presence of geographic atrophy is known as progression to advanced dry AMD. AMD progression predictions could enable timely monitoring, earlier detection and treatment, improving vision outcomes. Machine learning approaches, a subset of artificial intelligence applications, applied on imaging data are showing promising results in predicting progression. Extracted biomarkers, specifically from optical coherence tomography scans, are informative in predicting progression events. The purpose of this mini review is to provide an overview about current machine learning applications in artificial intelligence for predicting AMD progression, and describe the various methods, data-input types, and imaging modalities used to identify high-risk patients. With advances in computational capabilities, artificial intelligence applications are likely to transform patient care and management in AMD. External validation studies that improve generalizability to populations and devices, as well as evaluating systems in real-world clinical settings are needed to improve the clinical translations of artificial intelligence AMD applications.Entities:
Keywords: Artificial intelligence; age-related macular degeneration; deep learning; disease progression; imaging modalities; machine learning
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Year: 2021 PMID: 34404252 PMCID: PMC8718252 DOI: 10.1177/15353702211031547
Source DB: PubMed Journal: Exp Biol Med (Maywood) ISSN: 1535-3699