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乳腺癌治疗中分次间变异性的剂量学影响:迈向评估在线自适应放疗适宜性的新标准

Dosimetric Impact of Inter-Fraction Variability in the Treatment of Breast Cancer: Towards New Criteria to Evaluate the Appropriateness of Online Adaptive Radiotherapy.

作者信息

Iezzi Martina, Cusumano Davide, Piccari Danila, Menna Sebastiano, Catucci Francesco, D'Aviero Andrea, Re Alessia, Di Dio Carmela, Quaranta Flaviovincenzo, Boschetti Althea, Marras Marco, Piro Domenico, Tomei Flavia, Votta Claudio, Valentini Vincenzo, Mattiucci Gian Carlo

机构信息

Università Cattolica del Sacro Cuore, Rome, Italy.

Dipartimento Diagnostica per Immagini, Radioterapia Oncologica ed Ematologia, Fondazione Policlinico Universitario Agostino Gemelli IRCCS, Rome, Italy.

出版信息

Front Oncol. 2022 Apr 11;12:838039. doi: 10.3389/fonc.2022.838039. eCollection 2022.

Abstract

PURPOSE

As a discipline in its infancy, online adaptive RT (ART) needs new ontologies and criteria to evaluate the appropriateness of its use in clinical practice. In this experience, we propose a predictive model able to quantify the dosimetric impact due to daily inter-fraction variability in a standard RT breast treatment, to identify in advance the treatment fractions where patients might benefit from an online ART approach.

METHODS

The study was focused on right breast cancer patients treated using standard adjuvant RT on an artificial intelligence (AI)-based linear accelerator. Patients were treated with daily CBCT images and without online adaptation, prescribing 40.05 Gy in 15 fractions, with four IMRT tangential beams. ESTRO guidelines were followed for the delineation on planning CT (pCT) of organs at risk and targets. For each patient, all the CBCT images were rigidly aligned to pCT: CTV and PTV were manually re-contoured and the original treatment plan was recalculated. Various radiological parameters were measured on CBCT images, to quantify inter-fraction variability present in each RT fraction after the couch shifts compensation. The variation of these parameters was correlated with the variation of V95% of PTV (ΔV95%) using the Wilcoxon Mann-Whitney test. Fractions where ΔV95% > 2% were considered as adverse events. A logistic regression model was calculated considering the most significant parameter, and its performance was quantified with a receiver operating characteristic (ROC) curve.

RESULTS

A total of 75 fractions on 5 patients were analyzed. The body variation between daily CBCT and pCT along the beam axis with the highest MU was identified as the best predictor ( = 0.002). The predictive model showed an area under ROC curve of 0.86 (95% CI, 0.82-0.99) with a sensitivity of 85.7% and a specificity of 83.8% at the best threshold, which was equal to 3 mm.

CONCLUSION

A novel strategy to identify treatment fractions that may benefit online ART was proposed. After image alignment, the measure of body difference between daily CBCT and pCT can be considered as an indirect estimator of V95% PTV variation: a difference larger than 3 mm will result in a V95% decrease larger than 2%. A larger number of observations is needed to confirm the results of this hypothesis-generating study.

摘要

目的

作为一门尚处于起步阶段的学科,在线自适应放疗(ART)需要新的本体论和标准来评估其在临床实践中的应用适宜性。在本研究中,我们提出了一种预测模型,该模型能够量化标准放疗乳腺治疗中每日分次间变异性对剂量学的影响,从而提前识别出患者可能从在线ART方法中获益的治疗分次。

方法

本研究聚焦于在基于人工智能(AI)的直线加速器上接受标准辅助放疗的右乳腺癌患者。患者每日接受CBCT图像扫描且未进行在线自适应调整,处方剂量为40.05 Gy,分15次,采用四野IMRT切线野照射。按照ESTRO指南在计划CT(pCT)上勾画危及器官和靶区。对于每位患者,所有CBCT图像均与pCT进行刚性配准:手动重新勾画CTV和PTV,并重新计算原始治疗计划。在CBCT图像上测量各种放射学参数,以量化在补偿治疗床移动后每个放疗分次中存在的分次间变异性。使用Wilcoxon Mann-Whitney检验将这些参数的变化与PTV的V95%变化(ΔV95%)相关联。ΔV95%>2%的分次被视为不良事件。考虑最显著参数计算逻辑回归模型,并用受试者工作特征(ROC)曲线量化其性能。

结果

共分析了5例患者的75个分次。在最高MU的射束轴向上,每日CBCT与pCT之间的身体变化被确定为最佳预测指标( = 0.002)。预测模型的ROC曲线下面积为0.86(95%CI,0.82 - 0.99),在最佳阈值(等于3 mm)时,灵敏度为85.7%,特异性为83.8%。

结论

提出了一种识别可能从在线ART中获益的治疗分次的新策略。图像配准后,每日CBCT与pCT之间的身体差异测量可被视为PTV的V95%变化的间接估计值:差异大于3 mm将导致V95%降低大于2%。需要更多的观察来证实这项假设生成研究的结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/824e/9035849/91c7e62e92ae/fonc-12-838039-g001.jpg

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