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Lung respiration motion modeling: a sparse motion field presentation method using biplane x-ray images

机译:肺部呼吸运动建模:使用双向X射线图像的稀疏运动场演示方法

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Abstract Respiration-introduced tumor location uncertainty is a challenge in the precise lung biopsy for lung lesions. Current statistical modeling approaches hardly capture the complex local respiratory motion information. In this study, we formulate a statistical respiratory motion model using biplane x-ray images to improve the accuracy of motion field estimation by efficiently preserving local motion details for specific patients. Given CT data sets of 18 healthy subjects at end-expiratory and end-inspiratory breathing phases, the respiratory motion field is constructed based on deformation vector fields which are extracted from these CT data sets, and a lung contour motion repository respiratory is generated dependent on displacements of boundary control points. By varying the sparse weight coefficients of the statistical sparse motion field presentation (SMFP) method, the newly-input motion field is approximately presented by a sparse linear combination of a subset of the motion repository. The SMFP method is employed twice in the coefficient optimization process. Finally, these non-zero coefficients are fine-tuned to maximize the similarity between the projection image of reconstructed volumetric images and the current x-ray image. We performed the proposed method for estimating respiratory motion field on ten subject datasets and compared the result with the PCA method. The maximum average target registration error of the PCA-based and the SMFP-based respiratory motion field estimation are 3.1(2.0) and 2.9(1.6) mm, respectively. The maximum average symmetric surface distance of two methods are 2.5(1.6) and 2.4(1.3) mm, respectively.
机译:摘要呼吸介绍引入的肿瘤位置不确定度是肺病灶精确肺活检的挑战。当前的统计建模方法几乎捕获复杂的本地呼吸运动信息。在本研究中,我们通过有效保护特定患者的局部运动细节来提高运动场估计的统计呼吸运动模型。给定18个健康受试者的CT数据集,在呼气到终止和终止呼吸阶段,基于从这些CT数据集提取的变形载体场构造呼吸运动场,并且依赖于肺轮廓运动储存库呼吸边界控制点的位移。通过改变统计稀疏运动场呈现(SMFP)方法的稀疏重量系数,新输入运动场大致通过运动存储库的子集的稀疏线性组合来呈现。 SMFP方法在系数优化过程中使用两次。最后,这些非零系数是微调的,以最大化重建体积图像的投影图像与当前X射线图像之间的相似性。我们执行了在十个主题数据集上估算呼吸运动场的提议方法,并将结果与​​PCA方法进行了比较。 PCA的最大平均目标登记误差和基于SMFP的呼吸运动场估计分别为3.1(2.0)和2.9(1.6)mm。两种方法的最大平均对称表面距离分别为2.5(1.6)和2.4(1.3)mm。

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