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自动分割运动掩模以保留胸部 CT 可变形配准中的滑动运动。

Automated segmentation of a motion mask to preserve sliding motion in deformable registration of thoracic CT.

机构信息

Université de Lyon, Lyon, France.

出版信息

Med Phys. 2012 Feb;39(2):1006-15. doi: 10.1118/1.3679009.

Abstract

PURPOSE

Deformable registration generally relies on the assumption that the sought spatial transformation is smooth. Yet, breathing motion involves sliding of the lung with respect to the chest wall, causing a discontinuity in the motion field, and the smoothness assumption can lead to poor matching accuracy. In response, alternative registration methods have been proposed, several of which rely on prior segmentations. We propose an original method for automatically extracting a particular segmentation, called a motion mask, from a CT image of the thorax.

METHODS

The motion mask separates moving from less-moving regions, conveniently allowing simultaneous estimation of their motion, while providing an interface where sliding occurs. The sought segmentation is subanatomical and based on physiological considerations, rather than organ boundaries. We therefore first extract clear anatomical features from the image, with respect to which the mask is defined. Level sets are then used to obtain smooth surfaces interpolating these features. The resulting procedure comes down to a monitored level set segmentation of binary label images. The method was applied to sixteen inhale-exhale image pairs. To illustrate the suitability of the motion masks, they were used during deformable registration of the thorax.

RESULTS

For all patients, the obtained motion masks complied with the physiological requirements and were consistent with respect to patient anatomy between inhale and exhale. Registration using the motion mask resulted in higher matching accuracy for all patients, and the improvement was statistically significant. Registration performance was comparable to that obtained using lung masks when considering the entire lung region, but the use of motion masks led to significantly better matching near the diaphragm and mediastinum, for the bony anatomy and for the trachea. The use of the masks was shown to facilitate the registration, allowing to reduce the complexity of the spatial transformation considerably, while maintaining matching accuracy.

CONCLUSIONS

We proposed an automated segmentation method for obtaining motion masks, capable of facilitating deformable registration of the thorax. The use of motion masks during registration leads to matching accuracies comparable to the use of lung masks for the lung region but motion masks are more suitable when registering the entire thorax.

摘要

目的

变形配准通常依赖于所寻求的空间变换是平滑的假设。然而,呼吸运动涉及肺相对于胸壁的滑动,导致运动场的不连续性,而平滑性假设会导致匹配精度差。作为回应,已经提出了替代的配准方法,其中有几种方法依赖于先前的分割。我们提出了一种从胸部 CT 图像中自动提取特定分割的原始方法,称为运动掩模。

方法

运动掩模将运动和较少运动的区域分开,方便地同时估计它们的运动,同时提供发生滑动的接口。所寻求的分割是亚解剖的,基于生理考虑,而不是器官边界。因此,我们首先从图像中提取清晰的解剖特征,根据这些特征定义掩模。然后使用水平集获得平滑的曲面来插值这些特征。所得过程归结为二进制标签图像的受监督水平集分割。该方法应用于十六对吸气-呼气图像对。为了说明运动掩模的适用性,它们在胸廓的变形配准中得到了应用。

结果

对于所有患者,获得的运动掩模都符合生理要求,并且在吸气和呼气之间相对于患者解剖结构是一致的。对于所有患者,使用运动掩模进行配准可提高匹配精度,且改进具有统计学意义。当考虑整个肺区域时,与使用肺掩模的配准性能相当,但使用运动掩模可导致在膈肌和纵隔、骨性解剖结构和气管附近的匹配精度显著提高。使用掩模有助于配准,能够大大简化空间变换的复杂性,同时保持匹配精度。

结论

我们提出了一种自动分割方法来获取运动掩模,能够促进胸廓的变形配准。在配准过程中使用运动掩模可获得与肺掩模相当的匹配精度,而对于整个胸廓的配准,运动掩模更合适。

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