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使用基于形状的遗传算法自动检测CT图像中的肺结节。

Automated detection of lung nodules in CT images using shape-based genetic algorithm.

作者信息

Dehmeshki Jamshid, Ye Xujiong, Lin Xinyu, Valdivieso Manlio, Amin Hamdan

机构信息

Medicsight PLC, London, UK.

出版信息

Comput Med Imaging Graph. 2007 Sep;31(6):408-17. doi: 10.1016/j.compmedimag.2007.03.002. Epub 2007 May 23.

Abstract

A shape-based genetic algorithm template-matching (GATM) method is proposed for the detection of nodules with spherical elements. A spherical-oriented convolution-based filtering scheme is used as a pre-processing step for enhancement. To define the fitness function for GATM, a 3D geometric shape feature is calculated at each voxel and then combined into a global nodule intensity distribution. Lung nodule phantom images are used as reference images for template matching. The proposed method has been validated on a clinical dataset of 70 thoracic CT scans (involving 16,800 CT slices) that contains 178 nodules as a gold standard. A total of 160 nodules were correctly detected by the proposed method and resulted in a detection rate of about 90%, with the number of false positives at approximately 14.6/scan (0.06/slice). The high-detection performance of the method suggested promising potential for clinical applications.

摘要

提出了一种基于形状的遗传算法模板匹配(GATM)方法用于检测具有球形元素的结节。基于球面方向卷积的滤波方案用作增强的预处理步骤。为了定义GATM的适应度函数,在每个体素处计算三维几何形状特征,然后将其组合成全局结节强度分布。肺结节体模图像用作模板匹配的参考图像。该方法在包含178个结节作为金标准的70例胸部CT扫描(涉及16,800个CT切片)的临床数据集上得到了验证。该方法共正确检测出160个结节,检测率约为90%,假阳性数约为14.6/扫描(0.06/切片)。该方法的高检测性能表明其在临床应用中具有广阔的潜力。

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