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基于相干点漂移的分量结构引导配准的分割与合并策略对放射性肺损伤的 CT 图像纵向配准

Longitudinal registration of thoracic CT images with radiation-induced lung diseases: A divide-and-conquer approach based on component structure wise registration using coherent point drift.

机构信息

Department of Biomedical Engineering, National Taiwan University, Taipei, Taiwan; Department of Medical Imaging, Cardinal Tien Hospital, New Taipei City, Taiwan.

Department of Biomedical Engineering, National Taiwan University, Taipei, Taiwan.

出版信息

Comput Methods Programs Biomed. 2024 Nov;256:108401. doi: 10.1016/j.cmpb.2024.108401. Epub 2024 Aug 28.

Abstract

BACKGROUND AND OBJECTIVE

Registration of pulmonary computed tomography (CT) images with radiation-induced lung diseases (RILD) was essential to investigate the voxel-wise relationship between the formation of RILD and the radiation dose received by different tissues. Although various approaches had been developed for the registration of lung CTs, their performances remained clinically unsatisfactory for registration of lung CT images with RILD. The main difficulties arose from the longitudinal change in lung parenchyma, including RILD and volumetric change of lung cancers, after radiation therapy, leading to inaccurate registration and artifacts caused by erroneous matching of the RILD tissues.

METHODS

To overcome the influence of the parenchymal changes, a divide-and-conquer approach rooted in the coherent point drift (CPD) paradigm was proposed. The proposed method was based on two kernel ideas. One was the idea of component structure wise registration. Specifically, the proposed method relaxed the intrinsic assumption of equal isotropic covariances in CPD by decomposing a lung and its surrounding tissues into component structures and independently registering the component structures pairwise by CPD. The other was the idea of defining a vascular subtree centered at a matched branch point as a component structure. This idea could not only provide a sufficient number of matched feature points within a parenchyma, but avoid being corrupted by the false feature points resided in the RILD tissues due to globally and indiscriminately sampling using mathematical operators. The overall deformation model was built by using the Thin Plate Spline based on all matched points.

RESULTS

This study recruited 30 pairs of lung CT images with RILD, 15 of which were used for internal validation (leave-one-out cross-validation) and the other 15 for external validation. The experimental results showed that the proposed algorithm achieved a mean and a mean of maximum 1 % of average surface distances <2 and 8 mm, respectively, and a mean and a maximum target registration error <2 mm and 5 mm on both internal and external validation datasets. The paired two-sample t-tests corroborated that the proposed algorithm outperformed a recent method, the Stavropoulou's method, on the external validation dataset (p < 0.05).

CONCLUSIONS

The proposed algorithm effectively reduced the influence of parenchymal changes, resulting in a reasonably accurate and artifact-free registration.

摘要

背景与目的

对放射性肺损伤(RILD)的肺部计算机断层扫描(CT)图像进行配准对于研究 RILD 形成与不同组织接受辐射剂量之间的体素关系至关重要。尽管已经开发了各种方法来对肺部 CT 进行配准,但它们在对带有 RILD 的肺部 CT 图像进行配准方面的性能仍不能令人满意。主要的困难源于肺部实质在放射治疗后的纵向变化,包括 RILD 和肺癌的体积变化,这导致了不准确的配准和由于 RILD 组织的错误匹配而产生的伪影。

方法

为了克服实质变化的影响,提出了一种基于相干点漂移(CPD)范例的分而治之的方法。该方法基于两个核心思想。一个是组件结构-wise 配准的思想。具体来说,该方法通过将肺部及其周围组织分解成组件结构,并通过 CPD 对组件结构进行两两独立配准,从而放松了 CPD 中各向同性协方差相等的内在假设。另一个是将以匹配分支点为中心的血管子树定义为一个组件结构的思想。这个思想不仅可以在一个肺实质内提供足够数量的匹配特征点,而且可以避免由于使用数学算子全局和不加区分地采样而导致的位于 RILD 组织中的虚假特征点的干扰。整体变形模型是通过使用基于薄板样条的所有匹配点构建的。

结果

本研究共招募了 30 对带有 RILD 的肺部 CT 图像,其中 15 对用于内部验证(留一法交叉验证),其余 15 对用于外部验证。实验结果表明,该算法在内部和外部验证数据集上的平均和最大平均表面距离分别达到了<2 和 8mm,平均和最大目标配准误差分别达到了<2mm 和 5mm。配对双样本 t 检验证实,该算法在外部验证数据集上优于最近的 Stavropoulou 方法(p<0.05)。

结论

该算法有效地减少了实质变化的影响,从而实现了合理准确且无伪影的配准。

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