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An automated CT based lung nodule detection scheme using geometric analysis of signed distance field

机译:基于符号距离场的几何分析的基于CT的自动肺结节检测方案

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摘要

The authors present a new computerized scheme to automatically detect lung nodules depicted on computed tomography (CT) images. The procedure is performed in the signed distance field of the CT images. To obtain an accurate signed distance field, CT images are first interpolated linearly along the axial direction to form an isotropic data set. Then a lung segmentation strategy is applied to smooth the lung border aiming to include as many juxtapleural nodules as possible while minimizing over segmentations of the lung regions. Potential nodule regions are then detected by locating local maximas of signed distances in each subvolume with values and the sizes larger than the smallest nodule of interest in the three-dimensional space. Finally, all detected candidates are scored by computing the similarity distance of their medial axis-like shapes obtained through a progressive clustering strategy combined with a marching cube algorithm from a sphere based shape. A free-response receiver operating characteristics curve is computed to assess the scheme performance. A performance test on 52 low-dose CT screening examinations that depict 184 verified lung nodules showed that during the initial stage the scheme achieved an asymptotic maximum sensitivity of 95.1% (175∕184) with an average of 1200 suspicious voxels per CT examination. The nine missed nodules included two small solid nodules (with a diameter ≤3.1 mm) and seven nonsolid nodules. The final performance level after the similarity scoring stage was an absolute sensitivity level, namely, including the nine missed during the initial stage, of 81.5% (150∕184) with 6.5 false-positive identifications per CT examination. This preliminary study demonstrates the feasibility of applying a simple and robust geometric model using the signed distance field to identify suspicious lung nodules. In the authors’ data set the sensitivity of this scheme is not affected by nodule size. In addition to potentially being a stand alone approach, the signed distance field based method can be easily implemented as an initial filtering step in other computer-aided detection schemes.
机译:作者提出了一种新的计算机化方案,以自动检测计算机断层扫描(CT)图像上描绘的肺结节。该过程在CT图像的签名距离字段中执行。为了获得准确的有符号距离场,首先将CT图像沿轴向线性插值以形成各向同性的数据集。然后,采用肺分割策略来平滑肺边界,旨在包括尽可能多的颈胸结节,同时最大程度地减少肺区域的分割。然后,通过在每个子体积中定位带符号距离的局部最大值来检测潜在的结节区域,这些值的大小和大小要大于三维空间中所关注的最小结节。最后,通过计算通过基于聚类算法的渐进聚类策略和行进立方体算法获得的中间轴状形状的相似距离,对所有检测到的候选物进行评分。计算自由响应的接收器工作特性曲线以评估方案性能。对52个低剂量CT筛查检查的性能测试显示184个已验证的肺结节,显示该方案在初始阶段实现了95.1%(175∕184)的渐近最大敏感性,每个CT检查平均有1200个可疑体素。遗漏的9个结节包括2个小的实心结节(直径≤3.1mm)和7个非实心结节。相似度评分阶段后的最终性能水平是绝对敏感度水平,即包括在初始阶段遗漏的9个水平,为81.5%(150∕184),每次CT检查有6.5个假阳性标识。这项初步研究证明了使用带符号距离场的简单且鲁棒的几何模型来识别可疑肺结节的可行性。在作者的数据集中,该方案的敏感性不受结节大小的影响。除了可能是独立方法之外,基于有符号距离场的方法还可以轻松地实现为其他计算机辅助检测方案中的初始过滤步骤。

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