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在后续CT检查中检测和分割肝脏转移瘤的自动化方法。

Automated method for detection and segmentation of liver metastatic lesions in follow-up CT examinations.

作者信息

Ben-Cohen Avi, Klang Eyal, Diamant Idit, Rozendorn Noa, Amitai Michal Marianne, Greenspan Hayit

机构信息

Tel Aviv University , Faculty of Engineering, Department of Biomedical Engineering, Medical Image Processing Laboratory, Tel Aviv 69978, Israel.

Sheba Medical Center , Diagnostic Imaging Department, Abdominal Imaging Unit, Tel Hashomer 52621, Israel.

出版信息

J Med Imaging (Bellingham). 2015 Jul;2(3):034502. doi: 10.1117/1.JMI.2.3.034502. Epub 2015 Aug 19.

Abstract

This paper presents a fully automated method for detection and segmentation of liver metastases in serial computed tomography (CT) examinations. Our method uses a given two-dimensional baseline segmentation mask for identifying the lesion location in the follow-up CT and locating surrounding tissues, using nonrigid image registration and template matching, in order to reduce the search area for segmentation. Adaptive region growing and mean-shift clustering are used to obtain the lesion segmentation. Our database contains 127 cases from the CT abdomen unit at Sheba Medical Center. Development of the methodology was conducted using 22 of the cases, and testing was conducted on the remaining 105 cases. Results show that 94 of the 105 lesions were detected, for an overall matching rate of 90% making the correct RECIST 1.1 assessment in 88% of the cases. The average Dice index was [Formula: see text], the average sensitivity was [Formula: see text], and the positive predictive value was [Formula: see text]. In 92% of the rated cases, the results were classified by the radiologists as acceptable or better. The segmentation performance, matching rate, and RECIST assessment results hence appear promising.

摘要

本文提出了一种在系列计算机断层扫描(CT)检查中全自动检测和分割肝转移灶的方法。我们的方法使用给定的二维基线分割掩码,通过非刚性图像配准和模板匹配来识别后续CT中的病变位置并定位周围组织,以减少分割的搜索区域。采用自适应区域生长和均值漂移聚类来获得病变分割。我们的数据库包含来自谢巴医疗中心CT腹部科室的127例病例。该方法的开发使用了其中22例病例,其余105例病例用于测试。结果显示,105个病变中有94个被检测到,总体匹配率为90%,在88%的病例中做出了正确的RECIST 1.1评估。平均Dice指数为[公式:见原文],平均灵敏度为[公式:见原文],阳性预测值为[公式:见原文]。在92%的评级病例中,放射科医生将结果分类为可接受或更好。因此,分割性能、匹配率和RECIST评估结果看起来很有前景。

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本文引用的文献

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