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Landmark detection in the chest and registration of lung surfaces with an application to nodule registration.

机译:胸部的标志性检测和肺表面的套准,可用于结节套准。

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摘要

We developed an automated system for registering computed tomography (CT) images of the chest temporally. Our system detects anatomical landmarks, in particular, the trachea, sternum and spine, using an attenuation-based template matching approach. It computes the optimal rigid-body transformation that aligns the corresponding landmarks in two CT scans of the same patient. This transformation then provides an initial registration of the lung surfaces segmented from the two scans. The initial surface alignment is refined step by step in an iterative closest-point (ICP) process. To establish the correspondence of lung surface points, Elias' nearest neighbor algorithm was adopted. Our method improves the processing time of the original ICP algorithm from O(kn log n) to O(kn), where k is the number of iterations and n the number of surface points. The surface transformation is applied to align nodules in the initial CT scan with nodules in the follow-up scan. For 56 out of 58 nodules in the initial CT scans of 10 patients, nodule correspondences in the follow-up scans are established correctly. Our methods can therefore potentially facilitate the radiologist's evaluation of pulmonary nodules on chest CT for interval growth.
机译:我们开发了一种自动系统,用于临时记录胸部的计算机断层扫描(CT)图像。我们的系统使用基于衰减的模板匹配方法来检测解剖标志,尤其是气管,胸骨和脊柱。它计算出最佳的刚体变换,该变换将同一位患者的两次CT扫描中的相应界标对齐。然后,此转换提供从两次扫描中分割出的肺表面的初始配准。初始表面对齐在迭代最近点(ICP)过程中逐步完善。为了建立肺表面点的对应关系,采用了Elias最近邻算法。我们的方法将原始ICP算法的处理时间从O(kn log n)改进为O(kn),其中k是迭代次数,n是曲面点数。应用表面变换将初始CT扫描中的结节与后续扫描中的结节对齐。对于10例患者的初始CT扫描中58个结节中的56个,正确建立了随访扫描中的结节对应关系。因此,我们的方法可以潜在地促进放射科医生对胸部CT上的肺结节进行间隔生长评估。

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