南方医科大学学报 ›› 2014, Vol. 34 ›› Issue (06): 759-.

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基于自适应体窗结构分析的肺结节检测方法

王凯,张煜,刘哲星,林炳权,吴志强,曹蕾   

  • 出版日期:2014-06-20 发布日期:2014-06-20

Structural analysis based on adaptive window for pulmonary nodule detection

  • Online:2014-06-20 Published:2014-06-20

摘要: 基于三维Hessian矩阵的肺结节检测方法具有很高的敏感性,却很难避免血管交叉区域产生假阳性。本文提出了一种基
于自适应体窗结构分析的方法,首先利用体素的Hessian矩阵特征值设计结构系数分析其灰度分布特征;然后根据结构系数构
建三维自适应体窗分析组织的局部结构特征;最后使用判别函数检测出结节。通过对17套真实肺部CT图像序列进行实验,结
果表明本方法可以检测出不同大小和类型的30个结节,并有效减少了血管交叉区域产生的假阳性。结合自适应体窗的Hessian
矩阵检测方法可以提高检测效率,减轻医生工作量,为肺结节后续的分割和治疗提供有力的支持。

Abstract: Radiographic detection of pulmonary nodules based on three-dimensional Hessian matrix is highly sensitive but
frequently produces false positive results in areas where blood vessels intersect. We propose a novel approach to pulmonary
nodule detection using Hessian matrix-based adaptive window structure analysis, in which the structure coefficients is used to
differentiate a voxel that belongs to a nodule or vascular structures, followed by construction of the 3D adaptive window to
analyze the local structure characteristics; the nodules were then detected using the discrimination function. The experimental
results on pulmonary CT images from 17 patients showed a 100% detection sensitivity for nodules of varying sizes and types,
with also significantly reduced false positive results generated by the vessel junctions. This approach provides valuable
assistance to follow-up positioning and segmentation of the pulmonary nodules.