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基于正常组织并发症概率的快速、自动化、基于知识的质子治疗患者选择治疗计划

Fast, Automated, Knowledge-Based Treatment Planning for Selecting Patients for Proton Therapy Based on Normal Tissue Complication Probabilities.

作者信息

Hytönen Roni, Vergeer Marije R, Vanderstraeten Reynald, Koponen Timo K, Smith Christel, Verbakel Wilko F A R

机构信息

Varian Medical Systems Finland, Helsinki, Finland.

Department of Radiation Oncology, VU University Medical Center, Amsterdam, The Netherlands.

出版信息

Adv Radiat Oncol. 2022 Jan 28;7(4):100903. doi: 10.1016/j.adro.2022.100903. eCollection 2022 Jul-Aug.

Abstract

PURPOSE

Selecting patients who will benefit from proton therapy is laborious and subjective. We demonstrate a novel automated solution for creating high-quality knowledge-based plans (KBPs) using proton and photon beams to identify patients for proton treatment based on their normal tissue complication probabilities (NTCP).

METHODS AND MATERIALS

Two previously validated RapidPlan PT models for locally advanced head and neck cancer were used in combination with scripting to automatically create proton and photon KBPs for 72 patients with recent oropharynx cancer. NTCPs were calculated for each patient based on the KBPs, and patient selection was simulated according to the current Dutch national protocol.

RESULTS

The photon/proton KBP exhibited good correlation between predicted and achieved organ-at-risk mean doses, with a ≤5 Gy difference in 208/196 out of 215 structures relevant for the head and neck cancer NTCP model. The proton KBPs yielded on average 7.1/6.1/7.6 Gy lower dose to salivary/swallowing structures/oral cavity than the photon KBPs. This reduced average grade 2/3 dysphagia and xerostomia by 7.1/3.3 and 5.5/2.0 percentage points, resulting in 16 of 72 patients (22%) being indicated for proton treatment. The entire automated process took <30 minutes per patient.

CONCLUSIONS

Automated support for decision making using KBP is feasible and fast. The planning solution has potential to speed up the planning and patient-selection process significantly without major compromises to the plan quality.

摘要

目的

挑选能从质子治疗中获益的患者既费力又主观。我们展示了一种新颖的自动化解决方案,可利用质子束和光子束创建高质量的基于知识的计划(KBP),以根据正常组织并发症概率(NTCP)来识别适合质子治疗的患者。

方法与材料

将两个先前验证过的用于局部晚期头颈癌的RapidPlan PT模型与脚本相结合,为72例近期口咽癌患者自动创建质子和光子KBP。根据KBP计算每位患者的NTCP,并按照当前荷兰国家方案模拟患者选择。

结果

光子/质子KBP在预测的和实际达到的危及器官平均剂量之间显示出良好的相关性,在与头颈癌NTCP模型相关的215个结构中,有208/196个结构的差异≤5 Gy。质子KBP对唾液/吞咽结构/口腔的剂量平均比光子KBP低7.1/6.1/7.6 Gy。这使2/3级吞咽困难和口干的平均发生率分别降低了7.1/3.3和5.5/2.0个百分点,导致72例患者中有16例(22%)被推荐接受质子治疗。整个自动化过程每位患者耗时不到30分钟。

结论

使用KBP进行决策的自动化支持是可行且快速的。该计划解决方案有可能显著加快计划制定和患者选择过程,而不会对计划质量造成重大影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/17ed/8904224/0e2b11bb60c6/gr1.jpg

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