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Automated segmentation of urinary bladder and detection of bladder lesions in multi-detector row CT urography

机译:多探测器行CT术中膀胱自动分割及膀胱病变的检测

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We are developing a CAD system for automated bladder segmentation and detection of bladder lesions on MDCT urography, which potentially can assist radiologists in detecting bladder cancer. In the first stage of our CAD system, given a starting point, the bladder is segmented based on 3D region growing and active contours. In the second stage, lesion candidates are detected using histogram and shape analysis to separate the abnormality from the background, which is the bladder partially filled with contrast material. In this pilot study, a limited data set of 15 patients with 29 biopsy-proven lesions (26 malignant, 3 benign) was used. The average size for the 26 malignant lesions was 10 mm (range: 4.2 mm - 30.5mm) with conspicuity in the range of 2 to 5 on a 5-point scale (5=very subtle). The average size for the 3 benign lesions was 14 mm (range: 3.5 mm — 25mm) with conspicuity in the range of 2 to 3. Our segmentation program successfully segmented both the contrast and non-contrast part of the bladder in 87% (13/15) of the patients. The contrast-filled bladder region was successfully segmented for all 15 patients. Our system detected 83% (24/29) of the lesions with 1.4 (21/15) false positives per patient. 85% (22/26) of the bladder cancers were detected. The main cause for missed lesions was that they were in the non-contrast bladder region, which was not included in the detection stage in this pilot study. The results demonstrate the feasibility of developing a CAD system for automated segmentation of the bladder and detection of bladder malignancies.
机译:我们正在开发一种用于自动膀胱分割的CAD系统,并检测MDCT纱线上的膀胱病变,其可能有助于检测膀胱癌的放射科医师。在我们的CAD系统的第一阶段,给出一个起点,膀胱基于3D区域生长和活动轮廓进行分段。在第二阶段,使用直方图和形状分析检测病变候选物,以将异常与背景分开,这是部分地填充有造影材料的膀胱。在该试点研究中,使用了15例有限的29例患有29例活组织检查成熟病变(26个恶性,3个良性)的患者。 26个恶性病变的平均尺寸为10毫米(范围:4.2mm - 30.5mm),5点刻度为2比5的光临,(5 =非常微妙)。 3良性病变的平均尺寸为14毫米(范围:3.5 mm - 25mm),在2至3的范围内。我们的分割计划成功地将膀胱的对比度和非对比部分成功分段为87%(13 / 15)患者。对比填充的膀胱区域已成功分段为所有15名患者。我们的系统检测到每位患者1.4(21/15)误报的病变83%(24/29)。检测到85%(22/26)膀胱癌。错过病变的主要原因是它们在非对比膀胱区域中,该区域不包括在该试点研究中的检测阶段。结果证明了开发CAD系统的可行性,用于膀胱自动分割和膀胱恶性肿瘤的检测。

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