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Computer-aided Detection of Bladder Wall Thickening in CT Urography (CTU)

机译:CT术语(CTU)中膀胱壁增厚的计算机辅助检测

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We are developing a computer-aided detection system for bladder cancer in CT urography (CTU). Bladder wall thickening is a manifestation of bladder cancer and its detection is more challenging than the detection of bladder masses. We first segmented the inner and outer bladder walls using our method that combined deep-learning convolutional neural network with level sets. The non-contrast-enhanced region was separated from the contrast-enhanced region with a maximum-intensity-projection-based method. The non-contrast region was smoothed and gray level threshold was applied to the contrast and non-contrast regions separately to extract the bladder wall and potential lesions. The bladder wall was transformed into a straightened thickness profile, which was analyzed to identity regions of wall thickening candidates. Volume-based features of the wall thickening candidates were analyzed with linear discriminant analysis (LDA) to differentiate bladder wall thickenings from false positives. A data set of 112 patients, 87 with wall thickening and 25 with normal bladders, was collected retrospectively with IRB approval, and split into independent training and test sets. Of the 57 training cases, 44 had bladder wall thickening and 13 were normal. Of the 55 test cases, 43 had wall thickening and 12 were normal. The LDA classifier was trained with the training set and evaluated with the test set. FROC analysis showed that the system achieved sensitivities of 93.2% and 88.4% for the training and test sets, respectively, at 0.5 FPs/case.
机译:我们正在CT术语(CTU)中为膀胱癌开发一种计算机辅助检测系统。膀胱壁增厚是膀胱癌的表现,其检测比膀胱肿块的检测更具挑战性。我们首先使用我们的方法将内外膀胱墙分割,将深度学习的卷积神经网络与水平集合组合。非对比度增强区域与基于最大强度投影的方法与对比度增强区域分离。非对比区域被平滑,并且灰度阈值分别施加到对比度和非对比度区域以提取膀胱壁和潜在的病变。将膀胱壁转化为伸直的厚度曲线,这被分析到壁增厚候选物的标识区域。用线性判别分析(LDA)分析壁增稠候选物的基于体积的特征,以区分膀胱壁厚度从误报。通过IRB认可,回顾性地收集112名患者的112名患者,87例,带有正常膀胱的25个,并分成独立培训和测试集。在57个训练案件中,44例膀胱壁增厚,13次正常。在55个测试案例中,43个具有壁厚,12个是正常的。 LDA分类器与训练集接受培训并使用测试集进行评估。 FROC分析表明,该系统分别实现了培训和试验集的敏感性93.2%和88.4%,以0.5fps /案例。

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