The Second Clinical College, Dalian Medical University, Dalian, Liaoning, China.
Clinical Research Center, He Eye Specialists Hospitals, Shenyang, Liaoning, China.
PLoS One. 2020 Mar 5;15(3):e0230111. doi: 10.1371/journal.pone.0230111. eCollection 2020.
Hypertension is the leading risk factor of cardiovascular disease and has profound effects on both the structure and function of the microvasculature. Abnormalities of the retinal vasculature may reflect the degree of microvascular damage due to hypertension, and these changes can be detected with fundus photographs. This study aimed to use deep learning technique that can detect subclinical features appearing below the threshold of a human observer to explore the effect of hypertension on morphological features of retinal microvasculature. We collected 2012 retinal photographs which included 1007 from patients with a diagnosis of hypertension and 1005 from normotensive control. By method of vessel segmentation, we removed interference information other than retinal vasculature and contained only morphological information about blood vessels. Using these segmented images, we trained a small convolutional neural networks (CNN) classification model and used a deep learning technique called Gradient-weighted Class Activation Mapping (Grad-CAM) to generate heat maps for the class "hypertension". Our model achieved an accuracy of 60.94%, a specificity of 51.54%, a precision of 59.27%, and a recall of 70.48%. The AUC was 0.6506. In the heat maps for the class "hypertension", red patchy areas were mainly distributed on or around arterial/venous bifurcations. This indicated that the model has identified these regions as being the most important for predicting hypertension. Our study suggested that the effect of hypertension on retinal microvascular morphology mainly occurred at branching of vessels. The change of the branching pattern of retinal vessels was probably the most significant in response to elevated blood pressure.
高血压是心血管疾病的主要风险因素,对微血管的结构和功能有深远影响。视网膜血管的异常可能反映了高血压引起的微血管损伤程度,这些变化可以通过眼底照片检测到。本研究旨在利用深度学习技术来检测人类观察者阈值以下的亚临床特征,以探讨高血压对视网膜微血管形态特征的影响。我们收集了 2012 张眼底照片,其中 1007 张来自高血压患者,1005 张来自血压正常的对照者。通过血管分割方法,我们去除了除视网膜血管以外的干扰信息,只包含了血管的形态信息。使用这些分割后的图像,我们训练了一个小型卷积神经网络(CNN)分类模型,并使用一种称为梯度加权类激活映射(Grad-CAM)的深度学习技术为“高血压”类生成热图。我们的模型的准确率为 60.94%,特异性为 51.54%,精确率为 59.27%,召回率为 70.48%。AUC 为 0.6506。在“高血压”类的热图中,红色斑片状区域主要分布在动脉/静脉分叉处或其周围。这表明该模型已将这些区域识别为预测高血压的最重要区域。我们的研究表明,高血压对视网膜微血管形态的影响主要发生在血管分支处。视网膜血管分支模式的变化可能是对血压升高的最显著反应。