首页> 外文期刊>Journal of computer assisted tomography >Automated Knowledge-Guided Segmentation of Colonic Walls for Computerized Detection of Polyps in CT Colonography.
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Automated Knowledge-Guided Segmentation of Colonic Walls for Computerized Detection of Polyps in CT Colonography.

机译:结肠壁的自动知识引导分割,用于CT结肠造影中息肉的计算机化检测。

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PURPOSE We have developed a novel automated technique for segmenting colonic walls for the application of computer-aided polyp detection in CT colonography. In particular, the technique was designed to minimize the presence of extracolonic components, such as small bowel, in the segmented colon.METHODS The segmentation technique combines an improved version of our previously reported anatomy-oriented colon segmentation technique with a colon-based analysis step that performs self-adjusting volume-growing within the colonic lumen. Extracolonic components are eliminated by intersecting of the resulting two segmentations, so that the colonic walls remain in the intersection. The technique was evaluated on 88 CT colonography datasets. The colon segmentations were evaluated subjectively by four radiologists, as well as objectively by performance of an automated polyp detection on the segmentation. For comparison, the tests were also performed for the anatomy-oriented colon segmentation technique.RESULTS On average, the technique covered 98% of the visible colonic walls. Approximately 50% of the extracolonic components remaining in the anatomy-oriented segmentation were removed, but 10-15% of the segmentation still contained extracolonic components. The dataset-based false-positive rate of the automated polyp detection was improved by 10% without compromising the 100% case-based sensitivity, and the case-based false-positive rate was improved by 15% over the previous false-positive rate.CONCLUSIONS The technique segments practically all of the colonic walls in the region of diagnostic quality with a large reduction in the amount of extracolonic components over our previously used technique. The new segmentation improves the specificity of our computer-aided polyp detection scheme significantly without any degradation in detection sensitivity.
机译:目的我们开发了一种用于分割结肠壁的新型自动化技术,以将计算机辅助息肉检测应用于CT结肠造影。特别是,该技术旨在最大程度地减少分割结肠中结肠外成分(如小肠)的存在。分割技术将我们先前报道的面向解剖学的结肠分割技术的改进版本与基于结肠的分析步骤结合在一起在结肠腔内进行自我调节的体积增长。通过将所得的两个分段相交,消除了结肠外的成分,从而使结肠壁保留在相交处。在88个CT结肠造影数据集上评估了该技术。结肠分割是由四位放射科医生主观评估的,客观上是通过对分割进行自动息肉检测来评估的。为了进行比较,还对面向解剖学的结肠分割技术进行了测试。结果平均而言,该技术覆盖了98%的可见结肠壁。保留了大约50%的解剖学定向分割中的结肠外成分,但仍有10-15%的分割中包含结肠外成分。自动化息肉检测的基于数据集的假阳性率提高了10%,而不会损害100%基于案例的敏感性,与以前的假阳性率相比,基于案例的假阳性率提高了15%。结论该技术实际上分割了诊断质量范围内的所有结肠壁,与我们以前使用的技术相比,结肠外成分的数量大大减少。新的分割显着提高了我们的计算机辅助息肉检测方案的特异性,并且检测灵敏度没有任何下降。

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