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首页> 外文期刊>Medical Physics >A robust and efficient approach to detect 3D rectal tubes from CT colonography.
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A robust and efficient approach to detect 3D rectal tubes from CT colonography.

机译:一种从CT结肠造影术中检测3D直肠管的稳健而有效的方法。

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摘要

PURPOSE: The rectal tube (RT) is a common source of false positives (FPs) in computer-aided detection (CAD) systems for CT colonography. A robust and efficient detection of RT can improve CAD performance by eliminating such obvious paper, we present a novel and robust bottom-up approach to detect the RT. Probabilistic models, trained using kernel density estimation 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. Subimages around the RT path are projected into a subspace formed from training subimages of the RT. A quadratic discriminant analysis (QDA) provides a classification of a subimage as RT or non-RT based on the projection. Finally, a bottom-top clustering method is proposed to merge the classification predictions together to locate the tip position of the RT. RESULTS: Our method is validated using a diverse database, including data from five hospitals. On a testing data with 21 patients (42 volumes), 99.5% of annotated RT paths have been successfully detected. Evaluated with CAD, 98.4% of FPs caused by the RT have been detected and removed without any loss of sensitivity. CONCLUSIONS: The proposed method demonstrates a high detection rate of the RT path, and when tested in a CAD system, reduces FPs caused by the RT without the loss of sensitivity.
机译:目的:直肠CT(RT)是CT结肠成像计算机辅助检测(CAD)系统中假阳性(FP)的常见来源。强大而有效的RT检测可以通过消除此类明显的论文来提高CAD性能,我们提出了一种新颖且强大的自下而上的方法来检测RT。在简单的低层特征上使用核密度估计训练的概率模型用于对每个轴向切片上最可能的RT管候选进行排序和选择。然后,使用随机样本共识(RANSAC)进行稳健估计的形状模型从所选的局部检测中推断出全局RT路径。 RT路径周围的子图像投影到由RT的训练子图像形成的子空间中。二次判别分析(QDA)根据投影将子图像分类为RT或非RT。最后,提出了一种自底向上的聚类方法,将分类预测合并在一起以定位RT的尖端位置。结果:我们的方法已通过多样化数据库验证,包括来自五家医院的数据。根据21位患者(42册)的测试数据,已成功检测到99.5%的带注释的RT路径。用CAD评估,检测到并去除了RT引起的FP的98.4%,而没有任何灵敏度损失。结论:所提出的方法证明了RT路径的高检测率,并且在CAD系统中进行测试时,可以减少RT引起的FP,而不会降低灵敏度。

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