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Reproducibility Analysis of 4DCT Derived Ventilation Distribution Data: An Application of a Ventilation Calculation Algorithm based on 4DCT

机译:4DCT衍生通气分布数据的再现性分析:基于4DCT的通风计算算法应用

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Deriving lung ventilation distribution from 4-dimensional CT (4DCT) using deformable image registration (DIR) is a recent technical development. In this study, we evaluated the serial reproducibility of ventilation data derived from two separate 4DCT data sets, collected at different time points. A total of 33 lung cancer patients were retrospectively analyzed. All patients had two stereotactic body radiotherapy treatment courses for lung cancer. Seven patients were excluded due to artifacts in the 4DCT data sets. The ventilation distributions in the lungs for each patient were calculated using the two sets of planning 4DCT data. The deformation matrices between the expiration and inspiration phases generated by DIR were used to produce ventilation distributions using the ΔV method. Ventilation in the lung regions that received less than 1 Gy was analyzed. For the 26 cases, the median Spearman correlation coefficient value was 0.31 (range 0.18 to 0.52, p value < 0.01 for all cases). The median Dice similarity coefficient value between the upper 30% ventilation regions of the two sets was 0.75 (range 0.71 to 0.81, Figure 1). We conclude that the two ventilation data sets in each case correlated and the reproducibility over time was reasonably good.
机译:使用可变形图像配准(DIR)从4维CT(4DCT)的肺通气分布是最近的技术开发。在本研究中,我们评估了在不同时间点收集的两个单独的4DCT数据集的通风数据的串行重现性。回顾性地分析了33例肺癌患者。所有患者患有两个肺癌的立体定向体放射治疗课程。由于4DCT数据集中的工件,七名患者被排除在外。使用两组规划4DCT数据计算每个患者的肺部通风分布。通过DIR产生的呼气和灵感阶段之间的变形矩阵用于使用ΔV方法产生通气分布。分析了肺部区域的通风,接受不到1 GY的肺部区域。对于26例,中值的矛盾系数值为0.31(范围为0.18至0.52,所有情况下的P值<0.01)。两组的30%通风区之间的中值相似度系数值为0.75(范围0.71至0.81,图1)。我们得出结论,在每种情况下两个通风数据集相关,随着时间的推移,再现性相当好。

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