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基于人群的表面分割不确定性模型的开发,用于不确定性加权的可变形图像配准。

Development of a population-based model of surface segmentation uncertainties for uncertainty-weighted deformable image registrations.

机构信息

Department of Radiation Oncology, Virginia Commonwealth University, Richmond, Virginia 23298, USA.

出版信息

Med Phys. 2010 Feb;37(2):607-14. doi: 10.1118/1.3284209.

Abstract

PURPOSE

To develop a population-based model of surface segmentation uncertainties for uncertainty-weighted surface-based deformable registrations.

METHODS

The contours of the prostate, the bladder, and the rectum were manually delineated by five observers on fan beam CT images of four prostate cancer patients. First, patient-specific representations of structure segmentation uncertainties were derived by determining the interobserver variability (i.e., standard deviation) of the structure boundary delineation. This was achieved by (1) generating an average structure surface mesh from the structure contours drawn by different observers, and (2) calculating three-dimensional standard deviation surface meshes (SDSMs) based on the perpendicular distances from the individual boundary surface meshes to the average surface mesh computed above. Then an average structure surface mesh was constructed to be the reference mesh for the population-based model. The average structure meshes of the other patients were deformably registered to the reference mesh. The calculated deformable vector fields were used to map the patient-specific SDSMs to the reference mesh to obtain the registered SDSMs. Finally, the population-based SDSM was derived by taking the average of the registered SDSMs in quadrature.

RESULTS

Population-based structure surface statistical models of the prostate, the bladder, and the rectum were created by mapping the patient-specific SDSMs to the population surface model. Graphical visualization indicates that the boundary uncertainties are dependent on anatomical location.

CONCLUSIONS

The authors have developed and demonstrated a general method for objectively constructing surface maps of uncertainties derived from topologically complex structure boundary segmentations from multiple observers. The computed boundary uncertainties have significant spatial variations. They can be used as weighting factors for surface-based probabilistic deformable registration.

摘要

目的

开发一种基于人群的表面分割不确定性模型,用于不确定性加权的基于表面的可变形配准。

方法

由五名观察者在四例前列腺癌患者的扇形束 CT 图像上手动勾画前列腺、膀胱和直肠的轮廓。首先,通过确定结构边界勾画的观察者间变异性(即标准差)来获得特定于患者的结构分割不确定性的表示。这是通过(1)从不同观察者勾画的结构轮廓生成结构表面网格的平均值,以及(2)基于从个体边界表面网格到上述计算的平均表面网格的垂直距离来计算三维标准偏差表面网格(SDSM)来实现的。然后构建平均结构表面网格作为基于人群模型的参考网格。将其他患者的平均结构网格可变形地注册到参考网格。计算得到的变形向量场用于将患者特定的 SDSM 映射到参考网格,以获得注册的 SDSM。最后,通过对注册的 SDSM 进行正交平均,得到基于人群的 SDSM。

结果

通过将患者特定的 SDSM 映射到人群表面模型,创建了前列腺、膀胱和直肠的基于人群的结构表面统计模型。图形可视化表明,边界不确定性取决于解剖位置。

结论

作者已经开发并演示了一种从多个观察者的拓扑复杂结构边界分割中客观构建不确定性表面图的通用方法。计算得到的边界不确定性具有显著的空间变化。它们可以用作基于表面的概率性可变形配准的加权因子。

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