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Learning to Detect 3D Rectal Tubes in CT Colonography Using a Global Shape Model

机译:使用全球形状模型学习在CT上读数中检测3D直肠管

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摘要

The rectal tube (RT) is a common source of false positives (FPs) in computer-aided detection (CAD) systems for CT colonography. In this paper, we present a novel and robust bottom-up approach to detect the RT. Probabilistic models, trained using kernel density estimation (KDE) on simple low-level features, are employed to rank and select the most likely RT tube candidate on each axial slice. Then, a shape model, robustly estimated using Random Sample Consensus (RANSAC), infers the global RT path from the selected local detections. Our method is validated using a diverse database. including data from five hospitals. The experiments demonstrate a high detection rate of the RT path, and when tested in a CAD system, reduce 20.3% of the FPs with no loss of CAD sensitivity.
机译:直肠管(RT)是用于CT上影术的计算机辅助检测(CAD)系统中的假阳性(FPS)的共同来源。在本文中,我们提出了一种新颖且强大的自下而上的方法来检测RT。在简单的低级特征上使用内核密度估计(KDE)训练的概率模型,用于等级和选择每个轴向切片上的最可能的RT管候选。然后,使用随机样本共识(RANSAC)的形状模型,从所选局部检测中缩小全球RT路径。我们的方法使用不同的数据库进行验证。包括五家医院的数据。实验证明了RT路径的高检测率,并且当在CAD系统中测试时,减少20.3%的FPS,没有CAD敏感性。

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