碳离子放射治疗中混合和多相关生物有效性模型同时优化:概念验证

IF 3.4 Q2 ONCOLOGY
Aaron Paul Osburg , Peter Lysakovski , Giuseppe Magro , Semi Harrabi , Thomas Haberer , Amir Abdollahi , Jürgen Debus , Thomas Tessonnier , Andrea Mairani
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引用次数: 0

摘要

背景与目的在碳离子放疗(CIRT)中,不同的相对生物有效性(RBE)模型被用于计算碳离子加权剂量(DRBE)。当前RBE预测与新方法之间的转换仍然是一项具有挑战性的任务。我们的目标是在CIRT计划优化过程中引入一个同时考虑多个RBE模型的框架,从而简化DRBE处方之间的转换。材料和方法本研究扩展了内部开发的蒙特卡罗治疗计划系统,纳入了局部效应模型版本I (LEM-I)、改进的微剂量动力学模型(mMKM)和mkm衍生的日本生物学模型(NIRS-MKM)。4例临床病例(2例头颈部患者和2例前列腺患者)最初使用LEM-I对靶点和危险器官(OARs)进行了优化,然后进行了两次进一步优化:满足基于mMKM/ nirs - mkm的靶点处方(混合rbe方法)或同时考虑靶点区域内的两种生物学模型(多rbe方法)。两种方法都保留了由lem - i衍生的桨的剂量限制。结果所建立的优化策略已成功应用,满足所应用RBE模型的所有临床标准。其中一种RBE模型在优化时没有明确考虑剂量分布,而多RBE模型优化可以同时满足两种模型所选桨的剂量目标。通过为每个感兴趣的区域独立选择RBE模型,引入的优化方法允许在CIRT中进行混合或多RBE优化。该功能解决了坚持多个RBE框架的挑战,并为量身定制的患者治疗计划提出了先进的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mixed- and multi-relative biological effectiveness model simultaneous optimization in carbon ion radiotherapy: A proof-of-concept

Background and purpose

In carbon ion radiotherapy (CIRT), different relative biological effectiveness (RBE) models have been used for calculating RBE-weighted dose (DRBE). Conversion between current RBE predictions and introduction of novel approaches remains a challenging task. Our aim is to introduce a framework considering multiple RBE models simultaneously during CIRT plan optimization, easing the translation between DRBE prescriptions.

Materials and methods

An in-house developed Monte Carlo treatment planning system was extended to incorporate the local effect model version I (LEM-I), the modified microdosimetric kinetic model (mMKM) and the MKM-derived Japanese biological model (NIRS-MKM). Four clinical cases (two head-and-neck and two prostate patients), initially optimized with LEM-I for both targets and organs at risk (OARs), underwent two further optimizations: to fulfill mMKM/NIRS-MKM-based target prescriptions (mixed-RBE approach) or to simultaneously consider two biological models within the target regions (multi-RBE approach). Both approaches retained LEM-I-derived dose constraints for OARs.

Results

The developed optimization strategies have been successfully applied, fulfilling all the clinical criteria for the applied RBE models. One of the RBE models showed unfavorable dose distribution when not explicitly considered in the optimization, while multi-RBE model optimization allowed meeting dose objectives for the selected OARs for both models simultaneously.

Conclusions

The introduced optimization approaches allow for mixed- or multi-RBE optimization in CIRT through the selection of RBE models independently for each region of interest. This capability addresses challenges of adhering to multiple RBE frameworks and proposes an advanced solution for tailored patient treatment plans.
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来源期刊
Physics and Imaging in Radiation Oncology
Physics and Imaging in Radiation Oncology Physics and Astronomy-Radiation
CiteScore
5.30
自引率
18.90%
发文量
93
审稿时长
6 weeks
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