The status of retinal arteriovenous crossing is of great significance for clinical evaluation of arteriolosclerosis and systemic hypertension. As an ophthalmology diagnostic criteria, Scheie's classification has been used to grade the severity of arteriolosclerosis. In this paper, we propose a deep learning approach to support the diagnosis process, which, to the best of our knowledge, is one of the earliest attempts in medical imaging. The proposed pipeline is three-fold. First, we adopt segmentation and classification models to automatically obtain vessels in a retinal image with the corresponding artery/vein labels and find candidate arteriovenous crossing points. Second, we use a classification model to validate the true crossing point. At last, the grade of severity for the vessel crossings is classified. To better address the problem of label ambiguity and imbalanced label distribution, we propose a new model, named multi-diagnosis team network (MDTNet), in which the sub-models with different structures or different loss functions provide different decisions. MDTNet unifies these diverse theories to give the final decision with high accuracy. Our severity grading method was able to validate crossing points with precision and recall of 96.3% and 96.3%, respectively. Among correctly detected crossing points, the kappa value for the agreement between the grading by a retina specialist and the estimated score was 0.85, with an accuracy of 0.92. The numerical results demonstrate that our method can achieve a good performance in both arteriovenous crossing validation and severity grading tasks. By the proposed models, we could build a pipeline reproducing retina specialist's subjective grading without feature extractions. The code is available for reproducibility.
翻译:视网膜动脉硬化和系统性高血压的临床评估,对视网膜动脉硬化和系统性高血压的临床评估非常重要。作为眼科诊断标准,Scheie的分类用于分辨动脉硬化的严重程度。在本文中,我们建议采用深层次的学习方法来支持诊断过程,据我们所知,这是医学成像的最早尝试之一。拟议的管道分为三倍。首先,我们采用分解和分类模型,自动获得具有相应的动脉/静脉标签的视网膜图像的船只,并找到候选的心血管硬化诊断过境点。第二,我们使用一种分类模型来验证真正的过路点。最后,船舶过道的严格程度分级分类。为了更好地解决标签模糊性和不平衡的标签分配问题,我们提出了一个新的模型,名为多诊断小组网络(MDTNet),在这个模型中,不同结构或不同的损失功能提供了不同的决定。MDTNet将这些多样化的理论分解,在不准确的轨道上给出了最终的准确度,3 并用高精确的排序的方法来重新校正标。 我们的计算方法是重新确定一个精确的数值。