Haustral folds are colon wall protrusions implicated for high polyp miss rate during optical colonoscopy procedures. If segmented accurately, haustral folds can allow for better estimation of missed surface and can also serve as valuable landmarks for registering pre-treatment virtual (CT) and optical colonoscopies, to guide navigation towards the anomalies found in pre-treatment scans. We present a novel generative adversarial network, FoldIt, for feature-consistent image translation of optical colonoscopy videos to virtual colonoscopy renderings with haustral fold overlays. A new transitive loss is introduced in order to leverage ground truth information between haustral fold annotations and virtual colonoscopy renderings. We demonstrate the effectiveness of our model on real challenging optical colonoscopy videos as well as on textured virtual colonoscopy videos with clinician-verified haustral fold annotations. All code and scripts to reproduce the experiments of this paper will be made available via our Computational Endoscopy Platform at https://github.com/nadeemlab/CEP.
翻译:Haustral 折叠器是光学结肠镜检查过程中因高聚光断裂率而引发的结肠壁突扰。如果进行精确的分解,haustral 折叠器可以更好地估计漏掉的表面,还可以作为重要的里程碑,用于登记预处理虚拟(CT)和光结肠镜,引导导航到预处理扫描中发现的异常点。我们提出了一个新型的基因对抗网络FoldIt,用于将光谱结肠镜检查视频与虚拟结肠镜检查进行符合特征的图像翻译,以显示与大肠折叠覆盖的虚拟结肠镜检查结果。将引入新的中转损失,以便利用大腿折叠图和虚拟结肠镜图解之间的地面真相信息。我们展示了我们关于真正具有挑战性的光结肠镜检查视频的模型的有效性,并展示了与临床经核实的大肠镜折纹图谱的纹质虚拟结肠镜检查视频。复制本文实验的所有代码和脚本将通过我们的https://github.com/nadeemlab/CEFide平台进行。