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Feasibility of an automated AI-based screening tool for diabetic retinopathy at an endocrine outpatient clinic in SA

INTRODUCTION: Diabetic retinopathy (DR) is a worsening global pandemic and a leading cause of blindness. Screening is paramount. In the South African public health sector, screening initiatives have faced significant challenges and leveraging new screening technologies may prove useful. This study a...

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Main Author: Roux, Margaretha Magdalena
Other Authors: Steffen, Jonel
Format: Thesis
Language:English
English
Published: Division of General Surgery 2025
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access_status_str Open Access
author Roux, Margaretha Magdalena
author2 Steffen, Jonel
author_browse Roux, Margaretha Magdalena
Steffen, Jonel
author_facet Steffen, Jonel
Roux, Margaretha Magdalena
author_sort Roux, Margaretha Magdalena
collection Thesis
description INTRODUCTION: Diabetic retinopathy (DR) is a worsening global pandemic and a leading cause of blindness. Screening is paramount. In the South African public health sector, screening initiatives have faced significant challenges and leveraging new screening technologies may prove useful. This study aimed at evaluating the feasibility of an autonomous AI-based diagnostic tool in an endocrine outpatient clinic at Groote Schuur Hospital. METHODS: Patients identified as referable DR (moderate NPDR or worse) by autonomous AI screening, as well as patients with ungradable images, were referred to an ophthalmologist. We assessed the time it took to do screening, number of patients requiring dilation, number of ungradable images and their potential causes, referral burden, and number of patients requiring treatment. RESULTS: A total of 62 patients underwent screening, with a median AI screening time of 11.7 minutes. Of these, 55 (88.7%) required referral to ophthalmology. This included 36 patients (58.1%) with referable DR according to AI grading (of which 19 patients (30.6%) had vision-threatening DR) and 19 (30.6%) with ungradable images despite dilatation. Nine patients (14.5%) were lost to follow-up between AI screening and ophthalmology assessment, and 8 patients (12.9%) required treatment for vision-threatening DR according to ophthalmology human grading. Cataracts were the most important cause for ungradable images. . CONCLUSION: This study showed that screening for diabetic retinopathy using autonomous AI is feasible in terms of time. However, the significant burden of referrals and high number of ungradable images may be problematic within a resource-constrained public healthcare system.
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language English
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license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
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spelling oai:open.uct.ac.za:11427/41292 Feasibility of an automated AI-based screening tool for diabetic retinopathy at an endocrine outpatient clinic in SA Roux, Margaretha Magdalena Steffen, Jonel Diabetic retinopathy INTRODUCTION: Diabetic retinopathy (DR) is a worsening global pandemic and a leading cause of blindness. Screening is paramount. In the South African public health sector, screening initiatives have faced significant challenges and leveraging new screening technologies may prove useful. This study aimed at evaluating the feasibility of an autonomous AI-based diagnostic tool in an endocrine outpatient clinic at Groote Schuur Hospital. METHODS: Patients identified as referable DR (moderate NPDR or worse) by autonomous AI screening, as well as patients with ungradable images, were referred to an ophthalmologist. We assessed the time it took to do screening, number of patients requiring dilation, number of ungradable images and their potential causes, referral burden, and number of patients requiring treatment. RESULTS: A total of 62 patients underwent screening, with a median AI screening time of 11.7 minutes. Of these, 55 (88.7%) required referral to ophthalmology. This included 36 patients (58.1%) with referable DR according to AI grading (of which 19 patients (30.6%) had vision-threatening DR) and 19 (30.6%) with ungradable images despite dilatation. Nine patients (14.5%) were lost to follow-up between AI screening and ophthalmology assessment, and 8 patients (12.9%) required treatment for vision-threatening DR according to ophthalmology human grading. Cataracts were the most important cause for ungradable images. . CONCLUSION: This study showed that screening for diabetic retinopathy using autonomous AI is feasible in terms of time. However, the significant burden of referrals and high number of ungradable images may be problematic within a resource-constrained public healthcare system. 2025-03-28T19:47:49Z 2025-03-28T19:47:49Z 2024 2025-03-28T19:45:25Z Thesis / Dissertation Masters MMed http://hdl.handle.net/11427/41292 en eng Division of General Surgery Faculty of Health Sciences University of Cape Town
spellingShingle Diabetic retinopathy
Roux, Margaretha Magdalena
Feasibility of an automated AI-based screening tool for diabetic retinopathy at an endocrine outpatient clinic in SA
thesis_degree_str Master's
title Feasibility of an automated AI-based screening tool for diabetic retinopathy at an endocrine outpatient clinic in SA
title_full Feasibility of an automated AI-based screening tool for diabetic retinopathy at an endocrine outpatient clinic in SA
title_fullStr Feasibility of an automated AI-based screening tool for diabetic retinopathy at an endocrine outpatient clinic in SA
title_full_unstemmed Feasibility of an automated AI-based screening tool for diabetic retinopathy at an endocrine outpatient clinic in SA
title_short Feasibility of an automated AI-based screening tool for diabetic retinopathy at an endocrine outpatient clinic in SA
title_sort feasibility of an automated ai based screening tool for diabetic retinopathy at an endocrine outpatient clinic in sa
topic Diabetic retinopathy
url http://hdl.handle.net/11427/41292
work_keys_str_mv AT rouxmargarethamagdalena feasibilityofanautomatedaibasedscreeningtoolfordiabeticretinopathyatanendocrineoutpatientclinicinsa