2022
DOI: 10.1186/s12938-022-01057-9
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Identification of ocular refraction based on deep learning algorithm as a novel retinoscopy method

Abstract: Background The evaluation of refraction is indispensable in ophthalmic clinics, generally requiring a refractor or retinoscopy under cycloplegia. Retinal fundus photographs (RFPs) supply a wealth of information related to the human eye and might provide a promising approach that is more convenient and objective. Here, we aimed to develop and validate a fusion model-based deep learning system (FMDLS) to identify ocular refraction via RFPs and compare with the cycloplegic refraction. In this popu… Show more

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Cited by 4 publications
(1 citation statement)
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“…Deep learning allows systems to acquire predictive characteristics directly from an extensive collection of labeled images, eliminating the necessity for explicit rules or manually designed features (11). In recent research, deep learning models have been developed that demonstrate precise estimation of AL or refractive error using color fundus photographs (12)(13)(14). Additionally, Yoo et al (15) have introduced a deep learning model that predicts uncorrected refractive error by utilizing posterior segment optical coherence tomography images, suggesting a potential association between AL and the sectional structure of the retina.…”
Section: Introductionmentioning
confidence: 99%
“…Deep learning allows systems to acquire predictive characteristics directly from an extensive collection of labeled images, eliminating the necessity for explicit rules or manually designed features (11). In recent research, deep learning models have been developed that demonstrate precise estimation of AL or refractive error using color fundus photographs (12)(13)(14). Additionally, Yoo et al (15) have introduced a deep learning model that predicts uncorrected refractive error by utilizing posterior segment optical coherence tomography images, suggesting a potential association between AL and the sectional structure of the retina.…”
Section: Introductionmentioning
confidence: 99%