| Literature DB >> 34050158 |
Ling Dai1,2,3, Liang Wu2, Huating Li2, Chun Cai2, Qiang Wu4, Hongyu Kong4, Ruhan Liu1,3, Xiangning Wang4, Xuhong Hou2, Yuexing Liu2, Xiaoxue Long2, Yang Wen1,3, Lina Lu5, Yaxin Shen1,3, Yan Chen4, Dinggang Shen6,7, Xiaokang Yang8, Haidong Zou9, Bin Sheng10,11, Weiping Jia12.
Abstract
Retinal screening contributes to early detection of diabetic retinopathy and timely treatment. To facilitate the screening process, we develop a deep learning system, named DeepDR, that can detect early-to-late stages of diabetic retinopathy. DeepDR is trained for real-time image quality assessment, lesion detection and grading using 466,247 fundus images from 121,342 patients with diabetes. Evaluation is performed on a local dataset with 200,136 fundus images from 52,004 patients and three external datasets with a total of 209,322 images. The area under the receiver operating characteristic curves for detecting microaneurysms, cotton-wool spots, hard exudates and hemorrhages are 0.901, 0.941, 0.954 and 0.967, respectively. The grading of diabetic retinopathy as mild, moderate, severe and proliferative achieves area under the curves of 0.943, 0.955, 0.960 and 0.972, respectively. In external validations, the area under the curves for grading range from 0.916 to 0.970, which further supports the system is efficient for diabetic retinopathy grading.Entities:
Year: 2021 PMID: 34050158 DOI: 10.1038/s41467-021-23458-5
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919