Automatic detection of 39 fundus diseases and conditions in retinal photographs using deep neural networks

Ling‐Ping Cen(Chinese University of Hong Kong), Jie Ji(Chinese University of Hong Kong), Jianwei Lin(Chinese University of Hong Kong), Si-Tong Ju(Chinese University of Hong Kong), Hong-Jie Lin(Chinese University of Hong Kong), Tai-Ping Li(Chinese University of Hong Kong), Yun Wang(Chinese University of Hong Kong), Jian-Feng Yang(Chinese University of Hong Kong), Yu-Fen Liu(Chinese University of Hong Kong), Shaoying Tan(Chinese University of Hong Kong), Li Xuan Tan(Chinese University of Hong Kong), Dongjie Li(Chinese University of Hong Kong), Yifan Wang(Chinese University of Hong Kong), Dezhi Zheng(Chinese University of Hong Kong), Yongqun Xiong(Chinese University of Hong Kong), Hanfu Wu(Chinese University of Hong Kong), Jingjing Jiang(Chinese University of Hong Kong), Zhenggen Wu(Chinese University of Hong Kong), Dingguo Huang(Chinese University of Hong Kong), Tingkun Shi(Chinese University of Hong Kong), Binyao Chen(Chinese University of Hong Kong), Jianling Yang(Chinese University of Hong Kong), Xiaoling Zhang(Chinese University of Hong Kong), Li Luo(Chinese University of Hong Kong), Chukai Huang(Chinese University of Hong Kong), Guihua Zhang(Chinese University of Hong Kong), Yuqiang Huang(Chinese University of Hong Kong), Tsz Kin Ng(Chinese University of Hong Kong), Haoyu Chen(Chinese University of Hong Kong), Weiqi Chen(Chinese University of Hong Kong), Chi Pui Pang(Chinese University of Hong Kong), Mingzhi Zhang(Chinese University of Hong Kong)
Nature Communications
August 10, 2021
Cited by 330Open Access
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Abstract

Retinal fundus diseases can lead to irreversible visual impairment without timely diagnoses and appropriate treatments. Single disease-based deep learning algorithms had been developed for the detection of diabetic retinopathy, age-related macular degeneration, and glaucoma. Here, we developed a deep learning platform (DLP) capable of detecting multiple common referable fundus diseases and conditions (39 classes) by using 249,620 fundus images marked with 275,543 labels from heterogenous sources. Our DLP achieved a frequency-weighted average F1 score of 0.923, sensitivity of 0.978, specificity of 0.996 and area under the receiver operating characteristic curve (AUC) of 0.9984 for multi-label classification in the primary test dataset and reached the average level of retina specialists. External multihospital test, public data test and tele-reading application also showed high efficiency for multiple retinal diseases and conditions detection. These results indicate that our DLP can be applied for retinal fundus disease triage, especially in remote areas around the world.


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