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Computer-aided detection of bladder tumors based on the thickness mapping of bladder wall in MR images

机译:基于MR图像中膀胱壁的厚度图的膀胱肿瘤计算机辅助检测

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Bladder cancer is reported to be the fifth leading cause of cancer deaths in the United States. Recent advances in medical imaging technologies, such as magnetic resonance (MR) imaging, make virtual cystoscopy a potential alternative with advantages as being a safe and non-invasive method for evaluation of the entire bladder and detection of abnormalities. To help reducing the interpretation time and reading fatigue of the readers or radiologists, we introduce a computer-aided detection scheme based on the thickness mapping of the bladder wall since locally-thickened bladder wall often appears around tumors. In the thickness mapping method, the path used to measure the thickness can be determined without any ambiguity by tracing the gradient direction of the potential field between the inner and outer borders of the bladder wall. The thickness mapping of the three-dimensional inner border surface of the bladder is then flattened to a two-dimensional (2D) gray image with conformal mapping method. In the 2D flattened image, a blob detector is applied to detect the abnormalities, which are actually the thickened bladder wall indicating bladder lesions. Such scheme was tested on two MR datasets, one from a healthy volunteer and the other from a patient with a tumor. The result is preliminary, but very promising with 100% detection sensitivity at 7 FPs per case.
机译:据报道,膀胱癌是美国癌症死亡的第五大主要原因。医学成像技术(例如磁共振(MR)成像)的最新进展使虚拟膀胱镜检查成为潜在的替代方法,其优点是作为评估整个膀胱和检测异常的安全且非侵入性的方法。为了帮助减少读者或放射线医师的解释时间和阅读疲劳,我们引入了一种基于膀胱壁厚度图的计算机辅助检测方案,因为局部增厚的膀胱壁经常出现在肿瘤周围。在厚度映射方法中,通过追踪膀胱壁的内边界和外边界之间的势场的梯度方向,可以毫无歧义地确定用于测量厚度的路径。然后,通过保形映射方法将膀胱的三维内部边界表面的厚度映射平坦化为二维(2D)灰度图像。在2D展平的图像中,使用斑点检测器检测异常,实际上是指示膀胱病变的变厚的膀胱壁。这种方案在两个MR数据集上进行了测试,一个来自健康志愿者,另一个来自肿瘤患者。结果是初步的,但非常有希望,每例7个FP的检测灵敏度为100%。

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