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3D skeletonization feature based computer-aided detection system for pulmonary nodules in CT datasets

机译:基于3D基于骨骼的CT数据集肺结核的计算机辅助检测系统

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Abstract Pulmonary nodule detection has a significant impact on early diagnosis of lung cancer. To effectively detect pulmonary nodules from interferential vessels in chest CT datasets, this paper proposes a novel 3D skeletonization feature, named as voxels remove rate. Based on this feature, a computer-aided detection system is constructed to validate its performance. The system mainly consists of five stages. Firstly, the lung tissues are segmented by a global optimal active contour model, which can extract all structures (including juxta-pleural nodules) in the lung region. Secondly, thresholding, 3D binary morphological operations, and 3D connected components labeling are utilized to extract candidates of pulmonary nodules. Thirdly, combining the voxels remove rate with other nine existing 3D features (including gray features and shape features), the extracted candidates are characterized. Then, prior anatomical knowledge is utilized for preliminary screening of numerous invalid nodule candidates. Finally, false positives are reduced by support vector machine. Our system is evaluated on early stage lung cancer subjects obtained from the publicly available LIDC-IDRI database. The result shows the proposed 3D skeletonization feature is a useful indicator that efficiently differentiates lung nodules from the other suspicious structures. The computer-aided detection system based on this feature can detect various types of nodules, including solitary, juxta-pleural and juxta-vascular nodules. Highlights ? A 3D skeletonization feature is proposed to detect pulmonary nodules. ? A computer-aided detection system based on this feature is proposed. ? The system can detect solitary, juxta-pleural and juxta-vascular nodules.
机译:摘要肺结结检测对肺癌早期诊断产生了重大影响。为了有效地从胸部CT数据集中的干涉血管中检测肺结核,本文提出了一种新的3D骨架化特征,名称为voxels去除率。基于此功能,构建计算机辅助检测系统以验证其性能。该系统主要由五个阶段组成。首先,通过全局最佳活性轮廓模型进行肺组织,其可以在肺部区域提取所有结构(包括JUXTA-胸膜节)。其次,利用阈值化,3D二进制形态操作和3D连接的部件标记来提取肺结节的候选物。第三,将体素释放率与其他九个现有3D特征(包括灰色特征和形状特征)组合,所提取的候选者的特征在于。然后,利用现有解剖学知识用于许多无效结节候选者的初步筛选。最后,通过支持向量机减少了误报。我们的系统在公开可用的LIDC-IDRI数据库中获得的早期肺癌受试者评估。结果表明,所提出的3D骨架化特征是一种有效的指标,可有效地区分肺结核与其他可疑结构。基于该特征的计算机辅助检测系统可以检测各种类型的结节,包括孤立,JUXTA-胸膜和JUXTA-血管结节。强调 ?提出了一种检测肺结核的3D骨架化特征。还提出了一种基于该特征的计算机辅助检测系统。还该系统可以检测孤立,腹膜胸腺和Juxta-血管结节。

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