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Deep Supervision for Pancreatic Cyst Segmentation in Abdominal CT Scans

机译:腹部CT扫描中胰囊肿细分的深度监督

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Automatic segmentation of an organ and its cystic region is a prerequisite of computer-aided diagnosis. In this paper, we focus on pancreatic cyst segmentation in abdominal CT scan. This task is important and very useful in clinical practice yet challenging due to the low contrast in boundary, the variability in location, shape and the different stages of the pancreatic cancer. Inspired by the high relevance between the location of a pancreas and its cystic region, we introduce extra deep supervision into the segmentation network, so that cyst segmentation can be improved with the help of relatively easier pancreas segmentation. Under a reasonable transformation function, our approach can be factorized into two stages, and each stage can be efficiently optimized via gradient back-propagation throughout the deep networks. We collect a new dataset with 131 pathological samples, which, to the best of our knowledge, is the largest set for pancreatic cyst segmentation. Without human assistance, our approach reports a 63.44% average accuracy, measured by the Dice-Sorensen coefficient (DSC), which is higher than the number (60.46%) without deep supervision.
机译:器官的自动分割及其囊性区域是计算机辅助诊断的先决条件。在本文中,我们专注于腹部CT扫描中的胰腺囊肿细分。这项任务在临床实践中非常重要,而且非常有用,但由于边界的对比度低,位置,形状和胰腺癌不同阶段的变异性。灵感来自胰腺和囊性区域的位置之间的高相关性,我们将额外的深度监督引入分割网络,从而可以在相对容易的胰腺细分的帮助下改善囊肿分割。在合理的转换函数下,我们的方法可以分为两个阶段,并且可以通过整个深网络通过梯度反向传播有效地优化每个阶段。我们收集了一个带有131个病理样本的新数据集,据我们所知,这是胰腺囊肿细分的最大集合。如果没有人为援助,我们的方法报告了63.44%的平均准确性,通过骰子索伦系数(DSC)测量,该系数高于未经深层监管的数量(60.46%)。

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