Tzitzimpasis Paris, Ries Mario, Raaymakers Bas W, Zachiu Cornel
Department of Radiotherapy, University Medical Center Utrecht, Utrecht, The Netherlands.
Imaging Division, UMC Utrecht, Utrecht, The Netherlands.
Med Phys. 2025 Jun;52(6):4528-4539. doi: 10.1002/mp.17787. Epub 2025 Mar 30.
Functional lung imaging modalities allow for capturing regional lung ventilation information. Computed Tomography based ventilation imaging (CTVI) has been proposed as a surrogate modality that relies on time-resolved anatomical data and image processing. However, generating accurate ventilation maps using solely computed tomography (CT) image information remains a challenging task, due to the need to derive functional information of ventilation from anatomical observations.
We introduce the hybrid estimation of computed tomography obtained respiratory function (HECTOR) method that consists of two components: a volume- and a density-based ventilation estimate. For the first component, a deformable image registration (DIR)-based solution for accurate volumetric CTVI generation is proposed, integrating the physical characteristics of the lung deformations in its design. For the second component, an already established air-tissue density model is used. Furthermore, a novel method is developed for combining the two components.
The proposed method consists of four principal steps: (1) Application of a specially tailored DIR algorithm to estimate respiratory motion between inhale and exhale phases. (2) Conversion of the motion information to volumetric change maps using a variation of the Jacobian determinant method. (3) Computation of a HU-based method that estimates the local product of air-tissue densities. (4) Combination of the metrics estimated in steps 2 and 3 by means of a smooth minimum function. The proposed approach is validated using the publicly available VAMPIRE dataset consisting of two subgroups: 25 subjects scanned with Galligas 4DPET/CT and 21 subjects scanned with DTPA-SPECT. Another dataset of 18 patients available at The Cancer Imaging Archive (TCIA) was used for further validation. All datasets contain inhale/exhale CT scans paired with ground-truth ventilation images (RefVIs). The CTVIs generated by the proposed HECTOR method were tested against the RefVIs using the Spearman correlation coefficient and Dice overlap of low- and high-function lung (DSC-low and DSC-high, respectively).
The proposed method achieved mean Spearman, DSC-high and DSC-low coefficients of 0.62, 0.55, and 0.59 on the Galligas PET subgroup and 0.49,0,48, and 0.50 on the DTPA-SPECT subgroup of the VAMPIRE dataset. This performance was better than the highest performing method reported in the original challenge. The same metrics for the TCIA dataset were 0.66, 0.60, and 0.60. The proposed hybrid ventilation method achieved higher Spearman correlation scores than the individual volume- and density-based components in all datasets. Additionally, the use of the specially tailored DIR algorithm was found to achieve higher scores than previously reported volume-based methods.
Our work provides a novel processing workflow for CT ventilation imaging that can consistently generate ventilation maps with high fidelity compared to reference approaches. This study also provides further insights into the benefits of combining different types of information to model the complex dynamics of respiratory function. Such information can be useful for potential applications in radiation therapy treatment planning and thoracic dose-response assessment.
功能性肺成像模态能够获取区域肺通气信息。基于计算机断层扫描的通气成像(CTVI)已被提议作为一种替代模态,它依赖于时间分辨的解剖数据和图像处理。然而,仅使用计算机断层扫描(CT)图像信息生成准确的通气图仍然是一项具有挑战性的任务,因为需要从解剖观察中得出通气的功能信息。
我们介绍了计算机断层扫描获得的呼吸功能混合估计(HECTOR)方法,该方法由两个部分组成:基于体积和基于密度的通气估计。对于第一部分,提出了一种基于可变形图像配准(DIR)的解决方案,用于准确生成体积CTVI,在其设计中整合了肺变形的物理特征。对于第二部分,使用了已建立的气 - 组织密度模型。此外,还开发了一种将两个部分相结合的新方法。
所提出的方法包括四个主要步骤:(1)应用专门定制的DIR算法来估计吸气和呼气阶段之间的呼吸运动。(2)使用雅可比行列式方法的变体将运动信息转换为体积变化图。(3)计算基于HU的方法,该方法估计气 - 组织密度的局部乘积。(4)通过平滑最小函数将步骤2和3中估计的指标进行组合。使用公开可用的VAMPIRE数据集对所提出的方法进行验证,该数据集由两个子组组成:25名使用Galligas 4DPET/CT扫描的受试者和21名使用DTPA - SPECT扫描的受试者。另一个来自癌症成像存档(TCIA)的18名患者的数据集用于进一步验证。所有数据集都包含吸气/呼气CT扫描以及与之配对的真实通气图像(RefVIs)。使用Spearman相关系数以及低功能和高功能肺的Dice重叠(分别为DSC - low和DSC - high),将所提出的HECTOR方法生成的CTVI与RefVIs进行测试。
在VAMPIRE数据集的Galligas PET子组上,所提出的方法分别实现了平均Spearman系数为0.62、DSC - high为0.55和DSC - low为0.59;在DTPA - SPECT子组上分别为0.49、0.48和0.50。此性能优于原始挑战中报告的性能最佳的方法。TCIA数据集的相同指标分别为0.66、0.60和0.60。在所提出的混合通气方法在所有数据集中都比基于体积和基于密度的单独组件获得更高的Spearman相关分数。此外,发现使用专门定制的DIR算法比先前报告的基于体积的方法获得更高的分数。
我们的工作为CT通气成像提供了一种新颖的处理工作流程,与参考方法相比,该流程能够一致地生成高保真的通气图。本研究还进一步深入了解了组合不同类型信息以模拟呼吸功能复杂动态的益处。此类信息对于放射治疗治疗计划和胸部剂量反应评估中的潜在应用可能有用。