Optical coherence tomography (OCT) captures cross-sectional data and is used for the screening, monitoring, and treatment planning of retinal diseases. Technological developments to increase the speed of acquisition often results in systems with a narrower spectral bandwidth, and hence a lower axial resolution. Traditionally, image-processing-based techniques have been utilized to reconstruct subsampled OCT data and more recently, deep-learning-based methods have been explored. In this study, we simulate reduced axial scan (A-scan) resolution by Gaussian windowing in the spectral domain and investigate the use of a learning-based approach for image feature reconstruction. In anticipation of the reduced resolution that accompanies wide-field OCT systems, we build upon super-resolution techniques to explore methods to better aid clinicians in their decision-making to improve patient outcomes, by reconstructing lost features using a pixel-to-pixel approach with an altered super-resolution generative adversarial network (SRGAN) architecture.
翻译:光学一致性断层摄影(OCT)捕捉跨部门数据,用于视网膜疾病的筛选、监测和治疗规划; 提高获取速度的技术发展往往导致光谱带宽较窄的系统获取速度,从而降低轴分辨率; 传统上,利用图像处理技术重建分抽样的OCT数据,最近还探索了深层学习方法; 在这项研究中,我们模拟高山在光谱域窗口中减少轴扫描(A-scan)分辨率,并调查对图像特征重建采用以学习为基础的方法的情况; 由于分辨率降低,与广域的OCT系统相伴,我们利用超分辨率技术探索如何更好地帮助临床医生决策改善患者结果的方法,通过使用变换的超分辨率对称网络架构重建缺失的特征,用像素到像素的方法重建失去的特征,改善患者结果。