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Computer-aided diagnosis of pulmonary nodules on CT scans: segmentation and classification using 3D active contours.

机译:CT扫描对肺结节的计算机辅助诊断:使用3D活动轮廓进行分割和分类。

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We are developing a computer-aided diagnosis (CAD) system to classify malignant and benign lung nodules found on CT scans. A fully automated system was designed to segment the nodule from its surrounding structured background in a local volume of interest (VOI) and to extract image features for classification. Image segmentation was performed with a three-dimensional (3D) active contour (AC) method. A data set of 96 lung nodules (44 malignant, 52 benign) from 58 patients was used in this study. The 3D AC model is based on two-dimensional AC with the addition of three new energy components to take advantage of 3D information: (1) 3D gradient, which guides the active contour to seek the object surface, (2) 3D curvature, which imposes a smoothness constraint in the z direction, and (3) mask energy, which penalizes contours that grow beyond the pleura or thoracic wall. The search for the best energy weights in the 3D AC model was guided by a simplex optimization method. Morphological and gray-level features were extracted from the segmented nodule. The rubber band straightening transform (RBST) was applied to the shell of voxels surrounding the nodule. Texture features based on run-length statistics were extracted from the RBST image. A linear discriminant analysis classifier with stepwise feature selection was designed using a second simplex optimization to select the most effective features. Leave-one-case-out resampling was used to train and test the CAD system. The system achieved a test area under the receiver operating characteristic curve (A(z)) of 0.83 +/- 0.04. Our preliminary results indicate that use of the 3D AC model and the 3D texture features surrounding the nodule is a promising approach to the segmentation and classification of lung nodules with CAD. The segmentation performance of the 3D AC model trained with our data set was evaluated with 23 nodules available in the Lung Image Database Consortium (LIDC). The lung nodule volumes segmented by the 3D AC model for best classification were generally larger than those outlined by the LIDC radiologists using visual judgment of nodule boundaries.
机译:我们正在开发一种计算机辅助诊断(CAD)系统,以对在CT扫描中发现的恶性和良性肺结节进行分类。设计了一个全自动系统,可将其周围结节的结节从局部感兴趣的体积(VOI)中分割出来,并提取图像特征进行分类。使用三维(3D)活动轮廓(AC)方法执行图像分割。本研究使用了来自58位患者的96个肺结节(恶性44个,良性52个)的数据集。 3D AC模型基于二维AC,并添加了三个新的能量分量以利用3D信息:(1)3D梯度,该梯度引导活动轮廓寻找对象表面;(2)3D曲率,在z方向上施加了平滑度约束,以及(3)遮罩能量,这惩罚了超出胸膜或胸壁而生长的轮廓。在3D AC模型中寻找最佳能量权重的方法是采用单纯形优化方法。从分割的结节中提取形态和灰度特征。将橡皮筋拉直变换(RBST)应用于围绕结节的体素外壳。基于游程长度统计的纹理特征是从RBST图像中提取的。设计了具有逐步特征选择的线性判别分析分类器,并使用第二个单纯形优化来选择最有效的特征。留一案例的重采样用于训练和测试CAD系统。系统在接收器工作特性曲线(A(z))下达到0.83 +/- 0.04的测试区域。我们的初步结果表明,使用3D AC模型和围绕结节的3D纹理特征是用CAD对肺结节进行分割和分类的一种有前途的方法。用我们的数据集训练的3D AC模型的分割性能通过肺图像数据库协会(LIDC)中的23个结节进行了评估。 3D AC模型对肺结节的体积进行了最佳分类,通常比LIDC放射科医生使用肉眼对结节边界的判断所概述的体积更大。

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