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An Adaptive Window-Setting Scheme for Segmentation of Bladder Tumor Surface via MR Cystography

机译:通过MR膀胱造影术对膀胱肿瘤表面进行分割的自适应窗口设置方案

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摘要

This paper proposes an adaptive window-setting scheme for noninvasive detection and segmentation of bladder tumor surface in T$_1$ -weighted magnetic resonance (MR) images. The inner border of the bladder wall is first covered by a group of ball-shaped detecting windows with different radii. By extracting the candidate tumor windows and excluding the false positive (FP) candidates, the entire bladder tumor surface is detected and segmented by the remaining windows. Different from previous bladder tumor detection methods that are mostly focusing on the existence of a tumor, this paper emphasizes segmenting the entire tumor surface in addition to detecting the presence of the tumor. The presented scheme was validated by ten clinical T $_1$-weighted MR image datasets (five volunteers and five patients). The bladder tumor surfaces and the normal bladder wall inner borders in the ten datasets were covered by 223 and 10 491 windows, respectively. Such a large number of the detecting windows makes the validation statistically meaningful. In the FP reduction step, the best feature combination was obtained by using receiver operating characteristics or ROC analysis. The validation results demonstrated the potential of this presented scheme in segmenting the entire tumor surface with high sensitivity and low FP rate. This study inherits our previous results of automatic segmentation of the bladder wall and will be an important element in our MR-based virtual cystoscopy or MR cystography system.
机译:本文提出了一种自适应窗口设置方案,用于T $ _1 $加权磁共振(MR)图像中的膀胱肿瘤表面的无创检测和分割。膀胱壁的内边界首先被一组半径不同的球形检测窗覆盖。通过提取候选肿瘤窗口并排除假阳性(FP)候选者,整个膀胱肿瘤表面被检测到并被其余窗口分割。与以前主要关注肿瘤存在的膀胱肿瘤检测方法不同,本文着重于对整个肿瘤表面进行分割,除了检测肿瘤的存在。所提出的方案已通过10个临床T $ _1 $加权MR图像数据集(5名志愿者和5名患者)进行了验证。十个数据集中的膀胱肿瘤表面和正常膀胱壁内边界分别被223个窗口和10 491个窗口覆盖。如此大量的检测窗口使验证在统计上有意义。在FP缩减步骤中,通过使用接收器工作特性或ROC分析获得了最佳功能组合。验证结果证明了该方案在以高灵敏度和低FP率分割整个肿瘤表面方面的潜力。这项研究继承了我们先前对膀胱壁自动分割的结果,将成为我们基于MR的虚拟膀胱镜或MR膀胱造影系统中的重要元素。

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