VISUALIZING MISSING SURFACES IN COLONOSCOPY VIDEOS USING SHARED LATENT SPACE REPRESENTATIONS.

Shawn Mathew, Saad Nadeem, Arie Kaufman
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引用次数: 2

Abstract

Optical colonoscopy (OC), the most prevalent colon cancer screening tool, has a high miss rate due to a number of factors, including the geometry of the colon (haustral fold and sharp bends occlusions), endoscopist inexperience or fatigue, endoscope field of view. We present a framework to visualize the missed regions per-frame during OC, and provides a workable clinical solution. Specifically, we make use of 3D reconstructed virtual colonoscopy (VC) data and the insight that VC and OC share the same underlying geometry but differ in color, texture and specular reflections, embedded in the OC. A lossy unpaired image-to-image translation model is introduced with enforced shared latent space for OC and VC. This shared space captures the geometric information while deferring the color, texture, and specular information creation to additional Gaussian noise input. The latter can be utilized to generate one-to-many mappings from VC to OC and OC to OC. The code, data and trained models will be released via our Computational Endoscopy Platform at https://github.com/nadeemlab/CEP.

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使用共享的潜在空间表示可视化结肠镜检查视频中缺失的表面。
光学结肠镜检查(OC)是最流行的结肠癌癌症筛查工具,由于多种因素,包括结肠的几何形状(吸器折叠和急弯闭塞)、内镜医生缺乏经验或疲劳、内窥镜视野,其漏诊率很高。我们提出了一个框架来可视化OC期间每帧的遗漏区域,并提供了一个可行的临床解决方案。具体来说,我们利用了3D重建的虚拟结肠镜检查(VC)数据,以及VC和OC共享相同的底层几何结构,但在颜色、纹理和镜面反射方面有所不同,嵌入在OC中。引入了一种有损的不成对图像到图像的转换模型,该模型具有针对OC和VC的强制共享潜在空间。该共享空间捕获几何信息,同时将颜色、纹理和镜面信息的创建推迟到额外的高斯噪声输入。后者可用于生成从VC到OC和从OC到OC的一对多映射。代码、数据和经过训练的模型将通过我们的计算内窥镜平台在https://github.com/nadeemlab/CEP.
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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