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Semi-Automated Extraction of Crohns Disease MR Imaging Markers using a 3D Residual CNN with Distance Prior

机译:使用距离先验的3D残留CNN半自动提取克罗恩氏病MR影像标记

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摘要

We propose a 3D residual convolutional neural network (CNN) algorithm with an integrated distance prior for segmenting the small bowel lumen and wall to enable extraction of pediatric Crohns disease (pCD) imaging markers from T1-weighted contrast-enhanced MR images. Our proposed segmentation framework enables, for the first time, to quantitatively assess luminal narrowing and dilation in CD aimed at optimizing surgical decisions as well as analyzing bowel wall thickness and tissue enhancement for assessment of response to therapy. Given seed points along the bowel lumen, the proposed algorithm automatically extracts 3D image patches centered on these points and a distance map from the interpolated centerline. These 3D patches and corresponding distance map are jointly used by the proposed residual CNN architecture to segment the lumen and the wall, and to extract imaging markers. Due to lack of available training data, we also propose a novel and efficient semi-automated segmentation algorithm based on graph-cuts technique as well as a software tool for quickly editing labeled data that was used to train our proposed CNN model. The method which is based on curved planar reformation of the small bowel is also useful for visualizing, manually refining, and measuring pCD imaging markers. In preliminary experiments, our CNN network obtained Dice coefficients of 75 ± 18%, 81 ± 8% and 97 ± 2% for the lumen, wall and background, respectively.
机译:我们提出了一种具有集成距离的3D残差卷积神经网络(CNN)算法,用于分割小肠管腔和壁,从而能够从T1加权对比增强MR图像中提取小儿克罗恩病(pCD)成像标记。我们提出的分割框架使它第一次能够定量评估CD中的管腔狭窄和扩张,旨在优化手术决策以及分析肠壁厚度和组织增强情况以评估对治疗的反应。给定沿肠腔的种子点,提出的算法会自动提取以这些点为中心的3D图像补丁,并从插值中心线提取距离图。这些3D补丁和相应的距离图由建议的残差CNN体系结构联合使用,以分割内腔和壁,并提取成像标记。由于缺乏可用的训练数据,我们还提出了一种基于图割技术的新颖高效的半自动分割算法,以及一种用于快速编辑标记数据的软件工具,用于训练我们提出的CNN模型。基于小肠弯曲平面整形的方法也可用于可视化,手动精炼和测量pCD成像标记。在初步实验中,我们的CNN网络获得的管腔,壁和背景的Dice系数分别为75±18%,81±8%和97±2%。

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