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肺癌患者在放疗期间光子和质子治疗时通气反应的每周变化。

Weekly changes in ventilation response for photon and proton lung cancer patients during radiotherapy.

作者信息

Lim Rebecca, O'Connor Caleb, Pan Joshua, Tang Tien T, Castelo Austin H, He Yulun, Titt Uwe, Mohan Radhe, Liao Zhongxing, Brock Kristy K

机构信息

Department of Imaging Physics, The University of Texas MD Anderson Cancer Center, Houston, Texas, USA.

The University of Texas MD Anderson Cancer Center UTHealth Houston Graduate School of Biomedical Sciences, Houston, Texas, USA.

出版信息

medRxiv. 2025 Aug 29:2025.08.28.25334578. doi: 10.1101/2025.08.28.25334578.

Abstract

PURPOSE

Conformal dose distributions in proton radiotherapy promise to reduce normal tissue toxicity such as radiation-induced pneumonitis, but this has not been fully realized in clinical trials. To further investigate dose and toxicity, we employ voxel-based normal tissue evaluation techniques such as ventilation maps throughout treatment. We hypothesize that ventilation change after 1 week of treatment (WK1) predicts for ventilation change at the end of treatment (EOT).

METHODS

For 48 photon and 23 proton lung cancer patients, 4DCT-based ventilation maps were generated using stress-based methods at planning, WK1, and EOT. Voxel-wise ventilation change from planning to WK1 and EOT was calculated and binned by planned dose, and median ventilation change at WK1 and EOT was calculated across all patients in each dose bin. Patients were stratified into 6 groups based on modality and increased, decreased, or stable ventilation at WK1. Mann-Whitney U tests were performed to determine if median ventilation change at WK1 and EOT in each dose bin was significantly different from zero. Univariate analysis was performed to correlate ventilation change at EOT with change at WK1 and other clinical factors. A linear regression model was developed to predict ventilation at EOT using a variety of input features including ventilation at planning, ventilation at WK1, tumor response information, and tumor location. Accuracy of the model was assessed through R.

RESULTS

For patients that decreased in ventilation at WK1, 90% of photon patients and 92% of proton patients were stratified similarly at EOT. Patients that were stratified as increased ventilation at WK1 were stratified similarly (72% for photon, 80% for proton) at EOT. These patients were more likely to develop Grade 2+ pneumonitis though the difference was not significant when computing a Fisher's exact test. Univariate analysis indicated that only ventilation change at WK1 was correlated with ventilation change at EOT. The linear regression model achieved R of 0.65.

CONCLUSION

Ventilation changes at EOT can be predicted using ventilation information from planning and WK1. Patients that increased in ventilation at WK1 were more likely to develop pneumonitis. Further work is needed to characterize the relationship between ventilation change with pneumonitis development.

摘要

目的

质子放射治疗中的适形剂量分布有望降低正常组织毒性,如放射性肺炎,但这在临床试验中尚未完全实现。为了进一步研究剂量与毒性,我们在整个治疗过程中采用基于体素的正常组织评估技术,如通气图。我们假设治疗1周后(WK1)的通气变化可预测治疗结束时(EOT)的通气变化。

方法

对于48例光子放疗和23例质子放疗的肺癌患者,在计划阶段、WK1和EOT时使用基于应力的方法生成基于4DCT的通气图。计算从计划阶段到WK1和EOT的体素通气变化,并按计划剂量进行分组,计算每个剂量组中所有患者在WK1和EOT时的通气变化中位数。根据治疗方式以及WK1时通气增加、减少或稳定情况,将患者分为6组。进行曼-惠特尼U检验,以确定每个剂量组中WK1和EOT时的通气变化中位数是否显著不同于零。进行单因素分析,以关联EOT时的通气变化与WK1时的变化以及其他临床因素。开发了一个线性回归模型,使用包括计划阶段通气、WK1通气、肿瘤反应信息和肿瘤位置等多种输入特征来预测EOT时的通气情况。通过R评估模型的准确性。

结果

对于WK1时通气减少的患者,90%的光子放疗患者和92%的质子放疗患者在EOT时分层相似。在WK1时被分层为通气增加的患者在EOT时分层也相似(光子放疗患者为72%,质子放疗患者为80%)。这些患者更有可能发生2级以上肺炎,尽管在计算费舍尔精确检验时差异不显著。单因素分析表明,只有WK1时的通气变化与EOT时的通气变化相关。线性回归模型的R值为0.65。

结论

可使用计划阶段和WK1的通气信息预测EOT时的通气变化。WK1时通气增加的患者更有可能发生肺炎。需要进一步开展工作来明确通气变化与肺炎发生之间的关系。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/73a4/12407667/624a9f78c010/nihpp-2025.08.28.25334578v1-f0001.jpg

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