论文标题
使用深度学习的视网膜低成本光学相干断层扫描图像进行分割
Segmentation of Retinal Low-Cost Optical Coherence Tomography Images using Deep Learning
论文作者
论文摘要
与年龄相关的黄斑变性(AMD)的处理需要使用光学相干断层扫描(OCT)进行连续的眼科检查。对治疗的需求取决于特异性OCT基于疾病的生物标志物的存在或变化。因此,监测频率对AMD治疗的成功有重大影响。但是,当前治疗方案的监测频率并未单独适应患者,因此通常不足。虽然更高的监测频率将对治疗的成功产生积极影响,但实际上,只能通过家庭监控解决方案来实现。家庭监控OCT系统的关键要求之一是使用特定基于OCT的生物标志物自动检测和量化病理变化的计算机辅助诊断。在本文中,使用基于深度学习的方法对新型自我检查低成本OCT(自我OCT)进行了视网膜扫描。卷积神经网络(CNN)用于分割总视网膜以及色素上皮脱离(PED)。结果表明,基于CNN的方法可以很高的精度将视网膜细分,而PED的分割被证明是具有挑战性的。此外,卷积降解自动编码器(CDAE)完善了CNN预测,该预测以前已经学习了视网膜形状信息。结果表明,CDAE细化可以纠正OCT图像中伪影引起的分割误差。
The treatment of age-related macular degeneration (AMD) requires continuous eye exams using optical coherence tomography (OCT). The need for treatment is determined by the presence or change of disease-specific OCT-based biomarkers. Therefore, the monitoring frequency has a significant influence on the success of AMD therapy. However, the monitoring frequency of current treatment schemes is not individually adapted to the patient and therefore often insufficient. While a higher monitoring frequency would have a positive effect on the success of treatment, in practice it can only be achieved with a home monitoring solution. One of the key requirements of a home monitoring OCT system is a computer-aided diagnosis to automatically detect and quantify pathological changes using specific OCT-based biomarkers. In this paper, for the first time, retinal scans of a novel self-examination low-cost full-field OCT (SELF-OCT) are segmented using a deep learning-based approach. A convolutional neural network (CNN) is utilized to segment the total retina as well as pigment epithelial detachments (PED). It is shown that the CNN-based approach can segment the retina with high accuracy, whereas the segmentation of the PED proves to be challenging. In addition, a convolutional denoising autoencoder (CDAE) refines the CNN prediction, which has previously learned retinal shape information. It is shown that the CDAE refinement can correct segmentation errors caused by artifacts in the OCT image.