Disease areas:
  • reproductive and urinary health
Last updated:
Author(s):
Ziyao Meng, Zhouyu Guan, Shujie Yu, Yilan Wu, Yaoning Zhao, Jie Shen, Cynthia Ciwei Lim, Tingli Chen, Dawei Yang, An Ran Ran, Feng He, Haslina Hamzah, Sarkaaj Singh, Anis Syazwani Abd Raof, Jian Wen Samuel Lee-Boey, Soo-Kun Lim, Xufang Sun, Shuwang Ge, Gang Xu, Hua Su, Yang Cheng, Feng Lu, Xiaofei Liao, Hai Jin, Chenxin Deng, Lei Ruan, Cuntai Zhang, Chan Wu, Rongping Dai, Yixiao Jin, Wenxiao Wang, Tingyao Li, Ruhan Liu, Jiajia Li, Jia Shu, Yuwei Lu, Xiangning Wang, Qiang Wu, Yiming Qin, Jin Tang, Xiaohua Sheng, Qiong Jiao, Xiaokang Yang, Minyi Guo, Gareth J McKay, Ruth E Hogg, Gerald Liew, Evelyn Yi Lyn Chee, Wynne Hsu, Mong Li Lee, Simon Szeto, Andrea O Y Luk, Juliana C N Chan, Carol Y Cheung, Gavin Siew Wei Tan, Yih-Chung Tham, Ching-Yu Cheng, Charumathi Sabanayagam, Lee-Ling Lim, Weiping Jia, Huating Li, Bin Sheng, Tien Yin Wong
Publish date:
30 April 2025
Journal:
The Lancet Digital Health
PubMed ID:
40312169

Abstract

BACKGROUND: Improving the accessibility of screening diabetic kidney disease (DKD) and differentiating isolated diabetic nephropathy from non-diabetic kidney disease (NDKD) are two major challenges in the field of diabetes care. We aimed to develop and validate an artificial intelligence (AI) deep learning system to detect DKD and isolated diabetic nephropathy from retinal fundus images.

METHODS: In this population-based study, we developed a retinal image-based AI-deep learning system, DeepDKD, pretrained using 734 084 retinal fundus images. First, for DKD detection, we used 486 312 retinal images from 121 578 participants in the Shanghai Integrated Diabetes Prevention and Care System for development and internal validation, and ten multi-ethnic datasets from China, Singapore, Malaysia, Australia, and the UK (65 406 participants) for external validation. Second, to differentiate isolated diabetic nephropathy from NDKD, we used 1068 retinal images from 267 participants for development and internal validation, and three multi-ethnic datasets from China, Malaysia, and the UK (244 participants) for external validation. Finally, we conducted two proof-of-concept studies: a prospective real-world study with 3 months’ follow-up to evaluate the effectiveness of DeepDKD in screening DKD; and a longitudinal analysis of the effectiveness of DeepDKD in differentiating isolated diabetic nephropathy from NDKD on renal function changes with 4·6 years’ follow-up.

FINDINGS: For detecting DKD, DeepDKD achieved an area under the receiver operating characteristic curve (AUC) of 0·842 (95% CI 0·838-0·846) on the internal validation dataset and AUCs of 0·791-0·826 across external validation datasets. For differentiating isolated diabetic nephropathy from NDKD, DeepDKD achieved an AUC of 0·906 (0·825-0·966) on the internal validation dataset and AUCs of 0·733-0·844 across external validation datasets. In the prospective study, compared with the metadata model, DeepDKD could detect DKD with higher sensitivity (89·8% vs 66·3%, p<0·0001). In the longitudinal study, participants with isolated diabetic nephropathy and participants with NDKD identified by DeepDKD had a significant difference in renal function outcomes (proportion of estimated glomerular filtration rate decline: 27·45% vs 52·56%, p=0·0010).

INTERPRETATION: Among diverse multi-ethnic populations with diabetes, a retinal image-based AI-deep learning system showed its potential for detecting DKD and differentiating isolated diabetic nephropathy from NDKD in clinical practice.

FUNDING: National Key R & D Program of China, National Natural Science Foundation of China, Beijing Natural Science Foundation, Shanghai Municipal Key Clinical Specialty, Shanghai Research Centre for Endocrine and Metabolic Diseases, Innovative research team of high-level local universities in Shanghai, Noncommunicable Chronic Diseases-National Science and Technology Major Project, Clinical Special Program of Shanghai Municipal Health Commission, and the three-year action plan to strengthen the construction of public health system in Shanghai.

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Institution:
Shanghai Sixth People's Hospital, China

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