Zulu, NtokozoPiotie, Patrick NgassaWebb, Elizabeth M.Maphenduka, Wezi G.Cook, SteveRheeder, Paul2025-07-102025-07-102025-01Zulu, N., Piotie, P.N., Webb, E.M., Maphenduka, W.G., Cook, S. & Rheeder, P. Screening for diabetic retinopathy at a health centre in South Africa: A cross-sectional study. Journal of Public Health in Africa 2025;16(1), a681. https://doi.org/10.4102/jphia.v16i1.681.2038-9922 (print)2038-9930 (online)10.4102/jphia.v16i1.681http://hdl.handle.net/2263/103287DATA AVAILABILITY : The data that support the findings of this study are available from the corresponding author, P.N.P., upon reasonable request.BACKGROUND : In South Africa, screening for diabetic retinopathy (DR) is non-existent at the primary healthcare (PHC) level because of the absence of a screening programme. This leads to preventable vision loss. AIM : To describe the clinical characteristics and outcomes of eye screenings and subsequent referrals. SETTING : Laudium Community Health Centre (CHC), a PHC facility in Tshwane. METHODS : We conducted a cross-sectional study from February 2022 to August 2022. Individuals with diabetes were screened for eye complications using visual acuity testing, intraocular pressure measurement, and fundoscopy with a non-mydriatic digital fundus camera. Fundus images were analysed by an optometrist and an artificial intelligence (AI) programme. Demographic and clinical data were collected. RESULTS : A total of 120 participants were included, with the majority (60.7%) from Laudium CHC. Most participants (64.2%) were on oral agents, and 66.7% were women. The mean haemoglobin A1c (HbA1c) was 8.3%, with a median diabetes duration of 8 years. Artificial intelligence detected more glaucoma cases (17.5% vs 9.2%) and DR (23.3% vs 15.8%) compared to the optometrist. In contrast, the optometrist identified more cases of macula pathology (29.2% vs 19.2%). Participants (n = 79) were referred to an ophthalmologist for diagnosis confirmation and management. CONCLUSION : The study revealed that while DR was not highly prevalent among PHC patients with diabetes, there was a significant referral rate for other ocular complications. Artificial intelligence can enhance early detection and improve efficiency. CONTRIBUTION : The findings underscore the need to integrate diabetes eye screening programmes into PHC services for people living with diabetes.en© 2025. The Authors. Licensee: AOSIS. This work is licensed under the Creative Commons Attribution License.Diabetic retinopathyScreeningPrimary healthcare (PHC)Diabetes mellitusNon-mydriatic photographyFundus cameraMicrovascular complicationsArtificial intelligence (AI)Screening for diabetic retinopathy at a health centre in South Africa : a cross-sectional studyArticle