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Towards Image-Guided Pancreas and Biliary Endoscopy: Automatic Multi-organ Segmentation on Abdominal CT with Dense Dilated Networks

机译:朝向图像引导的胰腺和胆道内窥镜:腹部CT上的自动多器官分段,具有密集扩张网络

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Segmentation of anatomy on abdominal CT enables patient-specific image guidance in clinical endoscopic procedures and in endoscopy training. Because robust interpatient registration of abdominal images is necessary for existing multi-atlas- and statistical-shape-model-based segmentations, but remains challenging, there is a need for automated multi-organ segmentation that does not rely on registration. We present a deep-learning-based algorithm for segmenting the liver, pancreas, stomach, and esophagus using dilated convolution units with dense skip connections and a new spatial prior. The algorithm was evaluated with an 8-fold cross-validation and compared to a joint-label-fusion-based segmentation based on Dice scores and boundary distances. The proposed algorithm yielded more accurate segmentations than the joint-label-fusion-based algorithm for the pancreas (median Dice scores 66 vs 37), stomach (83 vs 72) and esophagus (73 vs 54) and marginally less accurate segmentation for the liver (92 vs 93). We conclude that dilated convolutional networks with dense skip connections can segment the liver, pancreas, stomach and esophagus from abdominal CT without image registration and have the potential to support image-guided navigation in gastrointestinal endoscopy procedures.
机译:腹部CT上解剖学的分割使临床内窥镜手术和内窥镜检查培训中的患者特异性图像引导。由于腹部图像的强大介入式注册是基于多标志和统计形式模型的分割所必需的,但仍然存在具有挑战性,因此需要对不依赖注册的自动多器官分段。我们介绍了一种基于深受基于学习的肝脏,胰腺,胃和食道算法,使用具有致密跳过连接和新的空间的扩张卷积单元和新的空间。通过8倍交叉验证评估该算法,并与基于骰子分数和边界距离的基于联合标签融合的分段进行比较。所提出的算法比胰腺(中值骰子分数66 vs 37),胃(83 vs 72)和食道(73 Vs 54)和肝脏的略微较低的准确分割(92 vs 93)。我们得出结论,扩张具有致密跳过连接的卷积网络可以在没有图像登记的情况下从腹部CT分割肝脏,胰腺,胃和食道,并且有可能支持胃肠内窥镜内窥镜检查程序中的图像引导导航。

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