Center for Clinical Translational Innovations and Biomedical Big Data Center, West China Hospital and Sichuan University, Chengdu, China.
Center for Biomedicine and Innovations, Faculty of Medicine, Macau University of Science and Technology and University Hospital, Macau, China.
Nat Biomed Eng. 2021 Jun;5(6):533-545. doi: 10.1038/s41551-021-00745-6. Epub 2021 Jun 15.
Regular screening for the early detection of common chronic diseases might benefit from the use of deep-learning approaches, particularly in resource-poor or remote settings. Here we show that deep-learning models can be used to identify chronic kidney disease and type 2 diabetes solely from fundus images or in combination with clinical metadata (age, sex, height, weight, body-mass index and blood pressure) with areas under the receiver operating characteristic curve of 0.85-0.93. The models were trained and validated with a total of 115,344 retinal fundus photographs from 57,672 patients and can also be used to predict estimated glomerulal filtration rates and blood-glucose levels, with mean absolute errors of 11.1-13.4 ml min per 1.73 m and 0.65-1.1 mmol l, and to stratify patients according to disease-progression risk. We evaluated the generalizability of the models for the identification of chronic kidney disease and type 2 diabetes with population-based external validation cohorts and via a prospective study with fundus images captured with smartphones, and assessed the feasibility of predicting disease progression in a longitudinal cohort.
定期进行常规筛查,以早期发现常见慢性病,可能得益于深度学习方法的应用,尤其是在资源匮乏或偏远地区。在这里,我们展示了深度学习模型仅通过眼底图像或结合临床元数据(年龄、性别、身高、体重、体重指数和血压)就可以识别慢性肾脏病和 2 型糖尿病,其受试者工作特征曲线下面积为 0.85-0.93。这些模型使用来自 57672 名患者的总共 115344 张眼底照片进行训练和验证,还可以用于预测估算肾小球滤过率和血糖水平,平均绝对误差分别为 11.1-13.4 ml min per 1.73 m 和 0.65-1.1 mmol l,并根据疾病进展风险对患者进行分层。我们通过基于人群的外部验证队列和使用智能手机拍摄的眼底图像进行的前瞻性研究,评估了模型在识别慢性肾脏病和 2 型糖尿病方面的泛化能力,并评估了在纵向队列中预测疾病进展的可行性。