首页> 外文会议>Conference on Medical Imaging 2008: Imaging Processing; 20080217-19; San Diego,CA(US) >Use of a CT statistical deformation model for multi-modal pelvic bone segmentation
【24h】

Use of a CT statistical deformation model for multi-modal pelvic bone segmentation

机译:CT统计变形模型在多模态骨盆骨分割中的应用

获取原文
获取原文并翻译 | 示例

摘要

We present a segmentation algorithm using a statistical deformation model constructed from CT data of adult male pelves coupled to MRI appearance data. The algorithm allows the semi-automatic segmentation of bone for a limited population of MRI data sets. Our application is pelvic bone delineation from pre-operative MRI for image guided pelvic surgery. Specifically, we are developing image guidance for prostatectomies using the daVinci telemanipulator. Hence the use of male pelves only. The algorithm takes advantage of the high contrast of bone in CT data, allowing a robust shape model to be constructed relatively easily. This shape model can then be applied to a population of MRI data sets using a single data set that contains both CT and MRI data. The model is constructed automatically using fluid based non-rigid registration between a set of CT training images, followed by principal component analysis. MRI appearance data is imported using CT and MRI data from the same patient. Registration optimisation is performed using differential evolution. Based on our limited validation to date, the algorithm may outperform segmentation using non-rigid registration between MRI images without the use of shape data. The mean surface registration error achieved was 1.74 mm. The algorithm shows promise for use in segmentation of pelvic bone from MRI, though further refinement and validation is required. We envisage that the algorithm presented could be extended to allow the rapid creation of application specific models in various imaging modalities using a shape model based on CT data.
机译:我们提出了一种使用统计变形模型的分割算法,该模型是根据成年男性骨盆的CT数据与MRI外观数据相结合构建的。该算法允许对有限的MRI数据集群体进行骨骼的半自动分割。我们的应用是用于图像引导盆腔手术的术前MRI盆腔骨轮廓。具体来说,我们正在使用daVinci远距操纵器为前列腺切除术开发图像指导。因此,仅使用男性骨盆。该算法利用了CT数据中骨骼的高对比度,从而可以相对容易地构建鲁棒的形状模型。然后可以使用包含CT和MRI数据的单个数据集将此形状模型应用于MRI数据集。该模型是使用一组CT训练图像之间基于流体的非刚性配准自动构造的,然后进行主成分分析。使用来自同一患者的CT和MRI数据导入MRI外观数据。配准优化是使用差分进化来执行的。基于迄今为止我们有限的验证,该算法在不使用形状数据的情况下,在MRI图像之间使用非刚性配准的效果可能优于分割。达到的平均表面配准误差为1.74毫米。该算法显示出有望用于MRI分离骨盆骨的过程,尽管还需要进一步的完善和验证。我们设想可以扩展提出的算法,以允许使用基于CT数据的形状模型在各种成像模态中快速创建特定于应用程序的模型。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号