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一种处理质子和光子联合治疗中剂量不匹配的新随机优化方法。

A novel stochastic optimization method for handling misalignments of proton and photon doses in combined treatments.

机构信息

Department of Radiation Oncology, University Hospital Zürich, Zürich, Switzerland.

Department of Mathematics, North Carolina State University, Raleigh, United States of America.

出版信息

Phys Med Biol. 2022 Sep 8;67(18). doi: 10.1088/1361-6560/ac858f.

Abstract

Combined proton-photon treatments, where most fractions are delivered with photons and only a few are delivered with protons, may represent a practical approach to optimally use limited proton resources. It has been shown that, when organs at risk (OARs) are located within or near the tumor, the optimal multi-modality treatment uses protons to hypofractionate parts of the target volume and photons to achieve near-uniform fractionation in dose-limiting healthy tissues, thus exploiting the fractionation effect. These plans may be sensitive to range and setup errors, especially misalignments between proton and photon doses. Thus, we developed a novel stochastic optimization method to directly incorporate these uncertainties into the biologically effective dose (BED)-based simultaneous optimization of proton and photon plans.The method considers the expected valueEband standard deviationσbof the cumulative BEDbin every voxel of a structure. For the target, a piecewise quadratic penalty function of the formbmin-Eb-2σb+2is minimized, aiming for plans in which the expected BED minus two times the standard deviation exceeds the prescribed BEDbmin.Analogously,Eb+2σb-bmax+2is considered for OARs.Using a spinal metastasis case and a liver cancer patient, it is demonstrated that the novel stochastic optimization method yields robust combined treatment plans. Tumor coverage and a good sparing of the main OARs are maintained despite range and setup errors, and especially misalignments between proton and photon doses. This is achieved without explicitly considering all combinations of proton and photon error scenarios.Concerns about range and setup errors for safe clinical implementation of optimized proton-photon radiotherapy can be addressed through an appropriate stochastic planning method.

摘要

质子-光子联合治疗,其中大部分分次采用光子,只有少数分次采用质子,可能代表了一种优化利用有限质子资源的实用方法。已经表明,当危及器官(OARs)位于肿瘤内或附近时,最佳多模态治疗使用质子对目标体积的部分进行亚分次,并用光子对剂量限制健康组织实现近乎均匀的分次,从而利用分次效应。这些计划可能对范围和设置误差敏感,特别是质子和光子剂量之间的不匹配。因此,我们开发了一种新的随机优化方法,将这些不确定性直接纳入基于生物有效剂量(BED)的质子和光子计划的同步优化中。该方法考虑了结构中每个体素的累积 BED 的期望值 E 和标准偏差σ b。对于靶区,采用分段二次惩罚函数形式,即 bmin-E-b-2σ b+2,旨在使期望 BED 减去两倍标准偏差的值超过规定的 BED bmin。类似地,对于 OARs,考虑 Eb+2σ b-bmax+2。通过脊柱转移病例和肝癌患者的实例,证明了新的随机优化方法可生成稳健的联合治疗计划。尽管存在范围和设置误差,特别是质子和光子剂量之间的不匹配,肿瘤覆盖和主要 OAR 的良好保护仍得以维持。这是在不明确考虑质子和光子所有误差情况组合的情况下实现的。通过适当的随机规划方法,可以解决优化质子-光子放射治疗中对范围和设置误差的安全性临床实施的担忧。

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