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. 2021 May 4;11(1):9469.
doi: 10.1038/s41598-021-89027-4.

Deep learning for gradability classification of handheld, non-mydriatic retinal images

Collaborators, Affiliations

Deep learning for gradability classification of handheld, non-mydriatic retinal images

Paul Nderitu et al. Sci Rep. .

Abstract

Screening effectively identifies patients at risk of sight-threatening diabetic retinopathy (STDR) when retinal images are captured through dilated pupils. Pharmacological mydriasis is not logistically feasible in non-clinical, community DR screening, where acquiring gradable retinal images using handheld devices exhibits high technical failure rates, reducing STDR detection. Deep learning (DL) based gradability predictions at acquisition could prompt device operators to recapture insufficient quality images, increasing gradable image proportions and consequently STDR detection. Non-mydriatic retinal images were captured as part of SMART India, a cross-sectional, multi-site, community-based, house-to-house DR screening study between August 2018 and December 2019 using the Zeiss Visuscout 100 handheld camera. From 18,277 patient eyes (40,126 images), 16,170 patient eyes (35,319 images) were eligible and 3261 retinal images (1490 patient eyes) were sampled then labelled by two ophthalmologists. Compact DL model area under the receiver operator characteristic curve was 0.93 (0.01) following five-fold cross-validation. Compact DL model agreement (Kappa) were 0.58, 0.69 and 0.69 for high specificity, balanced sensitivity/specificity and high sensitivity operating points compared to an inter-grader agreement of 0.59. Compact DL gradability model performance was favourable compared to ophthalmologists. Compact DL models can effectively classify non-mydriatic, handheld retinal image gradability with potential applications within community-based DR screening.

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Conflict of interest statement

S. Sivaprasad reports Consultancy and payments for lectures from Bayer, Boehringer Ingelheim, Novartis, Oxurion, Roche, Allergan, Apellis, outside the current study. P. Nderitu has no conflicts of interest to declare. J.M. Nunez do Rio has no conflicts of interest to declare. R. Rasheed has no conflicts of interest to declare. R. Raman has no conflicts of interest to declare. R. Rajalakshmi has no conflicts of interest to declare. C. Bergeles has no conflicts of interest to declare.

Figures

Figure 1
Figure 1
Data curation, sampling and study dataset construction. PE Patient eyes, aAll images per patient eye were graded.
Figure 2
Figure 2
Gradability definition examples. OD Right eye, OS: Left eye.
Figure 3
Figure 3
Compact Model (EfficientNet-B0) Gradability ROC and PR Curves. ROC Receiver operating characteristic, AUC-ROC Area under the receiver operating characteristic curve, AUC-PR Area under the precision recall curve, std. dev Standard deviation.

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