Department of Ophthalmology, Seoul National University Bundang Hospital, Seoul National University College of Medicine, Seongnam, Republic of Korea.
Department of Ophthalmology, Kangdong Sacred Heart Hospital, Seoul, Korea.
Sci Rep. 2020 Mar 12;10(1):4623. doi: 10.1038/s41598-020-61519-9.
Retinal fundus images are used to detect organ damage from vascular diseases (e.g. diabetes mellitus and hypertension) and screen ocular diseases. We aimed to assess convolutional neural network (CNN) models that predict age and sex from retinal fundus images in normal participants and in participants with underlying systemic vascular-altered status. In addition, we also tried to investigate clues regarding differences between normal ageing and vascular pathologic changes using the CNN models. In this study, we developed CNN age and sex prediction models using 219,302 fundus images from normal participants without hypertension, diabetes mellitus (DM), and any smoking history. The trained models were assessed in four test-sets with 24,366 images from normal participants, 40,659 images from hypertension participants, 14,189 images from DM participants, and 113,510 images from smokers. The CNN model accurately predicted age in normal participants; the correlation between predicted age and chronologic age was R = 0.92, and the mean absolute error (MAE) was 3.06 years. MAEs in test-sets with hypertension (3.46 years), DM (3.55 years), and smoking (2.65 years) were similar to that of normal participants; however, R values were relatively low (hypertension, R = 0.74; DM, R = 0.75; smoking, R = 0.86). In subgroups with participants over 60 years, the MAEs increased to above 4.0 years and the accuracies declined for all test-sets. Fundus-predicted sex demonstrated acceptable accuracy (area under curve > 0.96) in all test-sets. Retinal fundus images from participants with underlying vascular-altered conditions (hypertension, DM, or smoking) indicated similar MAEs and low coefficients of determination (R) between the predicted age and chronologic age, thus suggesting that the ageing process and pathologic vascular changes exhibit different features. Our models demonstrate the most improved performance yet and provided clues to the relationship and difference between ageing and pathologic changes from underlying systemic vascular conditions. In the process of fundus change, systemic vascular diseases are thought to have a different effect from ageing. Research in context. Evidence before this study. The human retina and optic disc continuously change with ageing, and they share physiologic or pathologic characteristics with brain and systemic vascular status. As retinal fundus images provide high-resolution in-vivo images of retinal vessels and parenchyma without any invasive procedure, it has been used to screen ocular diseases and has attracted significant attention as a predictive biomarker for cerebral and systemic vascular diseases. Recently, deep neural networks have revolutionised the field of medical image analysis including retinal fundus images and shown reliable results in predicting age, sex, and presence of cardiovascular diseases. Added value of this study. This is the first study demonstrating how a convolutional neural network (CNN) trained using retinal fundus images from normal participants measures the age of participants with underlying vascular conditions such as hypertension, diabetes mellitus (DM), or history of smoking using a large database, SBRIA, which contains 412,026 retinal fundus images from 155,449 participants. Our results indicated that the model accurately predicted age in normal participants, while correlations (coefficient of determination, R) in test-sets with hypertension, DM, and smoking were relatively low. Additionally, a subgroup analysis indicated that mean absolute errors (MAEs) increased and accuracies declined significantly in subgroups with participants over 60 years of age in both normal participants and participants with vascular-altered conditions. These results suggest that pathologic retinal vascular changes occurring in systemic vascular diseases are different form the changes in spontaneous ageing process, and the ageing process observed in retinal fundus images may saturate at age about 60 years. Implications of all available evidence. Based on this study and previous reports, the CNN could accurately and reliably predict age and sex using retinal fundus images. The fact that retinal changes caused by ageing and systemic vascular diseases occur differently motivates one to understand the retina deeper. Deep learning-based fundus image reading may be a more useful and beneficial tool for screening and diagnosing systemic and ocular diseases after further development.
眼底图像用于检测血管疾病(如糖尿病和高血压)引起的器官损伤,并筛查眼部疾病。我们旨在评估卷积神经网络(CNN)模型,这些模型可以从正常参与者和潜在系统性血管改变状态的参与者的眼底图像中预测年龄和性别。此外,我们还试图使用 CNN 模型来研究正常衰老和血管病理变化之间的差异。在这项研究中,我们使用来自没有高血压、糖尿病(DM)和任何吸烟史的正常参与者的 219302 张眼底图像开发了 CNN 年龄和性别预测模型。在四个测试集中评估了训练好的模型,这四个测试集包含来自正常参与者的 24366 张图像、高血压参与者的 40659 张图像、DM 参与者的 14189 张图像和吸烟者的 113510 张图像。CNN 模型能够准确预测正常参与者的年龄;预测年龄与实际年龄之间的相关性为 R=0.92,平均绝对误差(MAE)为 3.06 岁。在高血压(3.46 岁)、DM(3.55 岁)和吸烟(2.65 岁)的测试集中,MAE 与正常参与者的 MAE 相似,但 R 值相对较低(高血压,R=0.74;DM,R=0.75;吸烟,R=0.86)。在年龄超过 60 岁的参与者亚组中,MAE 增加到 4.0 岁以上,所有测试集的准确性都有所下降。眼底预测的性别在所有测试集中都表现出可接受的准确性(曲线下面积>0.96)。来自潜在血管改变状态的参与者(高血压、DM 或吸烟)的眼底图像表明,MAE 和预测年龄与实际年龄之间的确定系数(R)相似,这表明衰老过程和病理血管变化具有不同的特征。我们的模型展示了迄今为止最显著的性能提升,并提供了关于衰老和潜在系统性血管状况下的病理变化之间的关系和差异的线索。在眼底变化的过程中,系统性血管疾病被认为与衰老有不同的影响。
在此之前的研究中,人类视网膜和视盘随着年龄的增长而不断变化,并且与大脑和系统性血管状态具有相同的生理或病理特征。由于眼底图像提供了无任何侵入性程序的视网膜血管和实质的高分辨率体内图像,因此它已被用于筛查眼部疾病,并作为脑和系统性血管疾病的预测生物标志物引起了广泛关注。最近,深度神经网络彻底改变了包括眼底图像在内的医学图像分析领域,并在预测年龄、性别和心血管疾病的存在方面取得了可靠的结果。
这是第一项研究,展示了如何使用来自 SBRIA 的大型数据库(包含 155449 名参与者的 412026 张眼底图像)中正常参与者的眼底图像训练卷积神经网络(CNN),然后使用该模型测量患有高血压、糖尿病(DM)或吸烟史等潜在血管疾病的参与者的年龄。我们的结果表明,该模型可以准确预测正常参与者的年龄,而在高血压、DM 和吸烟的测试集中,相关性(确定系数,R)相对较低。此外,亚组分析表明,在正常参与者和血管改变状态的参与者中,年龄超过 60 岁的亚组中,MAE 显著增加,准确性显著下降。这些结果表明,系统性血管疾病中发生的病理性视网膜血管变化与自发衰老过程中的变化不同,并且在眼底图像中观察到的衰老过程可能在大约 60 岁时饱和。
基于这项研究和以前的报告,CNN 可以使用眼底图像准确可靠地预测年龄和性别。由于衰老和系统性血管疾病引起的视网膜变化不同,这促使我们更深入地了解视网膜。基于深度学习的眼底图像阅读在进一步发展后可能成为筛查和诊断系统性和眼部疾病更有用和有益的工具。