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Article ; Online: Artificial intelligence-based screening for amblyopia and its risk factors

Zsófia Csizek / Eszter Mikó-Baráth / Anna Budai / Andrew B. Frigyik / Ágota Pusztai / Vanda A. Nemes / László Závori / Diána Fülöp / András Czigler / Kitti Szabó-Guth / Péter Buzás / David P. Piñero / Gábor Jandó

Frontiers in Medicine, Vol

comparison with four classic stereovision tests

2023  Volume 10

Abstract: IntroductionThe development of costs-effective and sensitive screening solutions to prevent amblyopia and identify its risk factors (strabismus, refractive problems or mixed) is a significant priority of pediatric ophthalmology. The main objective of our ...

Abstract IntroductionThe development of costs-effective and sensitive screening solutions to prevent amblyopia and identify its risk factors (strabismus, refractive problems or mixed) is a significant priority of pediatric ophthalmology. The main objective of our study was to compare the classification performance of various vision screening tests, including classic, stereoacuity-based tests (Lang II, TNO, Stereo Fly, and Frisby), and non-stereoacuity-based, low-density static, dynamic, and noisy anaglyphic random dot stereograms. We determined whether the combination of non-stereoacuity-based tests integrated in the simplest artificial intelligence (AI) model could be an alternative method for vision screening.MethodsOur study, conducted in Spain and Hungary, is a non-experimental, cross-sectional diagnostic test assessment focused on pediatric eye conditions. Using convenience sampling, we enrolled 423 children aged 3.6–14 years, diagnosed with amblyopia, strabismus, or refractive errors, and compared them to age-matched emmetropic controls. Comprehensive pediatric ophthalmologic examinations ascertained diagnoses. Participants used filter glasses for stereovision tests and red-green goggles for an AI-based test over their prescribed glasses. Sensitivity, specificity, and the area under the ROC curve (AUC) were our metrics, with sensitivity being the primary endpoint. AUCs were analyzed using DeLong’s method, and binary classifications (pathologic vs. normal) were evaluated using McNemar’s matched pair and Fisher’s nonparametric tests.ResultsFour non-overlapping groups were studied: (1) amblyopia (n = 46), (2) amblyogenic (n = 55), (3) non-amblyogenic (n = 128), and (4) emmetropic (n = 194), and a fifth group that was a combination of the amblyopia and amblyogenic groups. Based on AUCs, the AI combination of non-stereoacuity-based tests showed significantly better performance 0.908, 95% CI: (0.829–0.958) for detecting amblyopia and its risk factors than most classical tests: Lang II: 0.704, (0.648–0.755), Stereo Fly: ...
Keywords amblyopia ; screening ; amblyogenic conditions ; artificial intelligence – AI ; strabism ; cost-effective ; Medicine (General) ; R5-920
Subject code 150
Language English
Publishing date 2023-12-01T00:00:00Z
Publisher Frontiers Media S.A.
Document type Article ; Online
Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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