IBM Research Australia, Melbourne, VIC, Australia.
NYU Langone Eye Center, New York University School of Medicine, New York, NY, United States of America.
PLoS One. 2019 Jul 1;14(7):e0219126. doi: 10.1371/journal.pone.0219126. eCollection 2019.
Optical coherence tomography (OCT) based measurements of retinal layer thickness, such as the retinal nerve fibre layer (RNFL) and the ganglion cell with inner plexiform layer (GCIPL) are commonly employed for the diagnosis and monitoring of glaucoma. Previously, machine learning techniques have relied on segmentation-based imaging features such as the peripapillary RNFL thickness and the cup-to-disc ratio. Here, we propose a deep learning technique that classifies eyes as healthy or glaucomatous directly from raw, unsegmented OCT volumes of the optic nerve head (ONH) using a 3D Convolutional Neural Network (CNN). We compared the accuracy of this technique with various feature-based machine learning algorithms and demonstrated the superiority of the proposed deep learning based method. Logistic regression was found to be the best performing classical machine learning technique with an AUC of 0.89. In direct comparison, the deep learning approach achieved a substantially higher AUC of 0.94 with the additional advantage of providing insight into which regions of an OCT volume are important for glaucoma detection. Computing Class Activation Maps (CAM), we found that the CNN identified neuroretinal rim and optic disc cupping as well as the lamina cribrosa (LC) and its surrounding areas as the regions significantly associated with the glaucoma classification. These regions anatomically correspond to the well established and commonly used clinical markers for glaucoma diagnosis such as increased cup volume, cup diameter, and neuroretinal rim thinning at the superior and inferior segments.
基于光学相干断层扫描(OCT)的视网膜层厚度测量,如视网膜神经纤维层(RNFL)和神经节细胞内丛状层(GCIPL),常用于青光眼的诊断和监测。此前,机器学习技术依赖于基于分割的成像特征,如视盘周围 RNFL 厚度和杯盘比。在这里,我们提出了一种深度学习技术,该技术可以直接从视神经头(ONH)的原始未分割 OCT 体积中使用 3D 卷积神经网络(CNN)对眼睛进行分类,分为健康或青光眼。我们比较了该技术与各种基于特征的机器学习算法的准确性,并证明了所提出的基于深度学习的方法的优越性。逻辑回归被发现是表现最好的经典机器学习技术,AUC 为 0.89。直接比较,深度学习方法的 AUC 高达 0.94,并且具有额外的优势,可以深入了解 OCT 体积的哪些区域对青光眼检测很重要。计算类激活图(CAM),我们发现 CNN 识别了神经视网膜边缘和视盘凹陷,以及筛板(LC)及其周围区域,这些区域与青光眼分类有显著的相关性。这些区域在解剖上与公认的和常用的青光眼诊断临床标志物相对应,如增加杯容积、杯直径和上下节神经视网膜边缘变薄。