Ma Da, Lu Donghuan, Chen Shuo, Heisler Morgan, Dabiri Setareh, Lee Sieun, Lee Hyunwoo, Ding Gavin Weiguang, Sarunic Marinko V, Beg Mirza Faisal
Simon Fraser University, School of Engineering Science, Burnaby V5A 1S6, Canada.
Simon Fraser University, School of Engineering Science, Burnaby V5A 1S6, Canada; Tencent Jarvis Lab, Shenzhen, China.
Comput Med Imaging Graph. 2021 Dec;94:101988. doi: 10.1016/j.compmedimag.2021.101988. Epub 2021 Oct 9.
Computer-assistant diagnosis of retinal disease relies heavily on the accurate detection of retinal boundaries and other pathological features such as fluid accumulation. Optical coherence tomography (OCT) is a non-invasive ophthalmological imaging technique that has become a standard modality in the field due to its ability to detect cross-sectional retinal pathologies at the micrometer level. In this work, we presented a novel framework to achieve simultaneous retinal layers and fluid segmentation. A dual-branch deep neural network, termed LF-UNet, was proposed which combines the expansion path of the U-Net and original fully convolutional network, with a dilated network. In addition, we introduced a cascaded network framework to include the anatomical awareness embedded in the volumetric image. Cross validation experiments showed that the proposed LF-UNet has superior performance compared to the state-of-the-art methods, and that incorporating the relative positional map structural prior information could further improve the performance regardless of the network. The generalizability of the proposed network was demonstrated on an independent dataset acquired from the same types of device with different field of view, or images acquired from different device.
视网膜疾病的计算机辅助诊断严重依赖于视网膜边界和其他病理特征(如积液)的准确检测。光学相干断层扫描(OCT)是一种非侵入性眼科成像技术,由于其能够在微米水平检测视网膜横断面病变,已成为该领域的标准模式。在这项工作中,我们提出了一种实现视网膜层和积液同时分割的新框架。提出了一种双分支深度神经网络,称为LF-UNet,它将U-Net的扩展路径和原始全卷积网络与扩张网络相结合。此外,我们引入了一种级联网络框架,以纳入体图像中嵌入的解剖学感知。交叉验证实验表明,所提出的LF-UNet与现有方法相比具有优越的性能,并且纳入相对位置图结构先验信息可以进一步提高性能,而与网络无关。所提出网络的通用性在从具有不同视野的相同类型设备获取的独立数据集或从不同设备获取的图像上得到了证明。