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使用三维模板匹配在CT图像中检测肺转移灶

Lung metastases detection in CT images using 3D template matching.

作者信息

Wang Peng, DeNunzio Andrea, Okunieff Paul, O'Dell Walter G

机构信息

Department of Biomedical Engineering, University of Rochester, Rochester, New York 14642, USA.

出版信息

Med Phys. 2007 Mar;34(3):915-22. doi: 10.1118/1.2436970.

Abstract

The aim of this study is to demonstrate a novel, fully automatic computer detection method applicable to metastatic tumors to the lung with a diameter of 4-20 mm in high-risk patients using typical computed tomography (CT) scans of the chest. Three-dimensional (3D) spherical tumor appearance models (templates) of various sizes were created to match representative CT imaging parameters and to incorporate partial volume effects. Taking into account the variability in the location of CT sampling planes cut through the spherical models, three offsetting template models were created for each appearance model size. Lung volumes were automatically extracted from computed tomography images and the correlation coefficients between the subregions around each voxel in the lung volume and the set of appearance models were calculated using a fast frequency domain algorithm. To determine optimal parameters for the templates, simulated tumors of varying sizes and eccentricities were generated and superposed onto a representative human chest image dataset. The method was applied to real image sets from 12 patients with known metastatic disease to the lung. A total of 752 slices and 47 identifiable tumors were studied. Spherical templates of three sizes (6, 8, and 10 mm in diameter) were used on the patient image sets; all 47 true tumors were detected with the inclusion of only 21 false positives. This study demonstrates that an automatic and straightforward 3D template-matching method, without any complex training or postprocessing, can be used to detect small lung metastases quickly and reliably in the clinical setting.

摘要

本研究的目的是展示一种新颖的全自动计算机检测方法,该方法适用于使用典型胸部计算机断层扫描(CT)对高危患者直径为4 - 20毫米的肺转移瘤进行检测。创建了各种尺寸的三维(3D)球形肿瘤外观模型(模板),以匹配代表性的CT成像参数并纳入部分容积效应。考虑到穿过球形模型的CT采样平面位置的变异性,为每个外观模型尺寸创建了三个偏移模板模型。从计算机断层扫描图像中自动提取肺容积,并使用快速频域算法计算肺容积中每个体素周围子区域与外观模型集之间的相关系数。为了确定模板的最佳参数,生成了不同大小和偏心度的模拟肿瘤,并将其叠加到代表性的人体胸部图像数据集上。该方法应用于12例已知肺转移疾病患者的真实图像集。共研究了752层切片和47个可识别的肿瘤。在患者图像集上使用了三种尺寸(直径分别为6、8和10毫米)的球形模板;检测到了所有47个真实肿瘤,仅包含21个假阳性。本研究表明,一种无需任何复杂训练或后处理的自动且直接的3D模板匹配方法可用于在临床环境中快速、可靠地检测小的肺转移灶。

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