首页> 外文会议>Conference on Medical Imaging 2008: Computer-Aided Diagnosis; 20080219-21; San Diego,CA(US) >Computer-Aided Diagnosis: A 3D Segmentation Method for Lung Nodules in CT Images by Use of a Spiral-Scanning Technique
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Computer-Aided Diagnosis: A 3D Segmentation Method for Lung Nodules in CT Images by Use of a Spiral-Scanning Technique

机译:计算机辅助诊断:通过使用螺旋扫描技术的CT图像中肺结节的3D分割方法

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摘要

Lung nodule segmentation in computed tomography (CT) plays an important role in computer-aided detection, diagnosis, and quantification systems for lung cancer. In this study, we developed a simple but accurate nodule segmentation method in three-dimensional (3D) CT. First, a volume of interest (VOI) was determined at the location of a nodule. We then transformed the VOI into a two-dimensional (2D) image by use of a "spiral-scanning" technique, in which a radial line originating from the center of the VOI spirally scanned the VOI. The voxels scanned by the radial line were arranged sequentially to form a transformed 2D image. Because the surface of a nodule in 3D image became a curve in the transformed 2D image, the spiral-scanning technique considerably simplified our segmentation method and enabled us to obtain accurate segmentation results. We employed a dynamic programming technique to delineate the "optimal" outline of a nodule in the 2D image, which was transformed back into the 3D image space to provide the interior of the nodule. The proposed segmentation method was trained on the first and was tested on the second Lung Image Database Consortium (LIDC) datasets. An overlap between nodule regions provided by computer and by the radiologists was employed as a performance metric. The experimental results on the LIDC database demonstrated that our segmentation method provided relatively robust and accurate segmentation results with mean overlap values of 66% and 64% for the nodules in the first and second LIDC datasets, respectively, and would be useful for the quantification, detection, and diagnosis of lung cancer.
机译:计算机断层扫描(CT)中的肺结节分割在肺癌的计算机辅助检测,诊断和定量系统中起着重要作用。在这项研究中,我们开发了一种简单但准确的三维(3D)CT结节分割方法。首先,在结节位置确定感兴趣的体积(VOI)。然后,我们使用“螺旋扫描”技术将VOI转换为二维(2D)图像,其中源自VOI中心的径向线螺旋扫描VOI。由径向线扫描的体素被顺序排列以形成变形的2D图像。由于3D图像中的结节表面在转换后的2D图像中变成了曲线,因此螺旋扫描技术大大简化了我们的分割方法,使我们可以获得准确的分割结果。我们采用了动态编程技术来描绘2D图像中结节的“最佳”轮廓,然后将其转换回3D图像空间以提供结节的内部。建议的分割方法在第一个方法上进行了训练,并在第二个肺图像数据库协会(LIDC)数据集上进行了测试。由计算机和放射科医生提供的结节区域之间的重叠被用作性能度量。 LIDC数据库上的实验结果表明,我们的分割方法可提供相对可靠且准确的分割结果,第一和第二个LIDC数据集中的结节平均重叠值分别为66%和64%,这对于定量分析非常有用,检测和诊断肺癌。

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