Centre for Medical Image Computing, University College London, United Kingdom.
Wellcome/EPSRC Centre for Interventional and Surgical Sciences, University College London, United Kingdom.
Med Image Anal. 2019 Apr;53:123-131. doi: 10.1016/j.media.2019.01.011. Epub 2019 Feb 2.
In recent years, endomicroscopy has become increasingly used for diagnostic purposes and interventional guidance. It can provide intraoperative aids for real-time tissue characterization and can help to perform visual investigations aimed for example to discover epithelial cancers. Due to physical constraints on the acquisition process, endomicroscopy images, still today have a low number of informative pixels which hampers their quality. Post-processing techniques, such as Super-Resolution (SR), are a potential solution to increase the quality of these images. SR techniques are often supervised, requiring aligned pairs of low-resolution (LR) and high-resolution (HR) images patches to train a model. However, in our domain, the lack of HR images hinders the collection of such pairs and makes supervised training unsuitable. For this reason, we propose an unsupervised SR framework based on an adversarial deep neural network with a physically-inspired cycle consistency, designed to impose some acquisition properties on the super-resolved images. Our framework can exploit HR images, regardless of the domain where they are coming from, to transfer the quality of the HR images to the initial LR images. This property can be particularly useful in all situations where pairs of LR/HR are not available during the training. Our quantitative analysis, validated using a database of 238 endomicroscopy video sequences from 143 patients, shows the ability of the pipeline to produce convincing super-resolved images. A Mean Opinion Score (MOS) study also confirms this quantitative image quality assessment.
近年来,内窥显微镜已越来越多地用于诊断目的和介入指导。它可以为实时组织特征提供术中辅助,并有助于进行可视化研究,例如发现上皮癌。由于采集过程受到物理限制,内窥显微镜图像的信息量仍然很低,这会影响其质量。后处理技术,如超分辨率(SR),是提高这些图像质量的一种潜在方法。SR 技术通常需要监督,需要对齐的低分辨率(LR)和高分辨率(HR)图像块对来训练模型。然而,在我们的领域中,缺乏 HR 图像阻碍了这种对的收集,使得监督训练不合适。为此,我们提出了一种基于对抗性深度神经网络的无监督 SR 框架,该框架具有物理启发的循环一致性,旨在对超分辨率图像施加一些采集属性。我们的框架可以利用 HR 图像,而无需考虑它们来自何处,从而将 HR 图像的质量转移到初始 LR 图像上。在训练过程中无法获得 LR/HR 对的所有情况下,这种特性都特别有用。我们的定量分析使用来自 143 名患者的 238 个内窥显微镜视频序列的数据库进行验证,表明该管道能够生成令人信服的超分辨率图像。一项平均意见得分(MOS)研究也证实了这种定量图像质量评估。