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A new fully automatic and robust algorithm for fast segmentation of liver tissue and tumors from CT scans.

机译:一种从CT扫描中快速分割肝脏组织和肿瘤的新型全自动鲁棒算法。

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摘要

Accurate knowledge of the liver structure, including liver surface and lesion localization, is usually required in treatments such as liver tumor ablations and/or radiotherapy. This paper presents a new method and corresponding algorithm for fast segmentation of the liver and its internal lesions from CT scans. No interaction between the user and analysis system is required for initialization since the algorithm is fully automatic. A statistical model-based approach was created to distinguish hepatic tissue from other abdominal organs. It was combined to an active contour technique using gradient vector flow in order to obtain a smoother and more natural liver surface segmentation. Thereafter, automatic classification was performed to isolate hepatic lesions from liver parenchyma. Twenty-one datasets, presenting different anatomical and pathological situations, have been processed and analyzed. Special focus has been driven to the resulting processing time together with quality assessment. Our method allowed robust and efficient liver and lesion segmentations very close to the ground truth, in a relatively short processing time (average of 11.4 s for a 512 x 512-pixel slice). A volume overlap of 94.2% and an accuracy of 3.7 mm were achieved for liver surface segmentation. Sensitivity and specificity for tumor lesion detection were 82.6% and 87.5%, respectively.
机译:在诸如肝肿瘤消融和/或放射疗法的治疗中,通常需要对肝脏结构的准确知识,包括肝脏表面和病变的定位。本文提出了一种通过CT扫描快速分割肝脏及其内部病变的新方法和相应算法。由于该算法是全自动的,因此不需要用户与分析系统之间的交互即可进行初始化。创建了一种基于统计模型的方法来区分肝组织与其他腹部器官。结合使用梯度矢量流的主动轮廓技术,以获得更平滑,更自然的肝表面分割。此后,进行自动分类以从肝实质中分离出肝脏病变。二十一个表示不同解剖和病理情况的数据集已经过处理和分析。特别关注了最终的处理时间以及质量评估。我们的方法允许在相对较短的处理时间(512 x 512像素切片的平均时间为11.4 s)下非常有效地进行肝脏和病变的分割。肝表面分割的体积重叠率为94.2%,准确度为3.7 mm。肿瘤病变检测的敏感性和特异性分别为82.6%和87.5%。

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