Department of Radiation Oncology, University of Texas Southwestern Medical Center, Dallas, TX, United States of America.
Department of Population and Data Sciences, University of Texas Southwestern Medical Center, Dallas, TX, United States of America.
PLoS One. 2019 Oct 21;14(10):e0224047. doi: 10.1371/journal.pone.0224047. eCollection 2019.
The goal of this study was to explore conceptual benefits of characterizing delineated target volumes based on surface area and to utilize the concept for assessing risk of therapeutic toxicity in radiosurgery.
Four computer-generated targets, a sphere, a cylinder, an ellipsoid and a box, were designed for two distinct scenarios. In the first scenario, all targets had identical volumes, and in the second one, all targets had identical surface areas. High quality stereotactic radiosurgery plans with at least 95% target coverage and selectivity were created for each target in both scenarios. Normal brain volumes V12Gy, V14Gy and V16Gy corresponding to received dose of 12 Gy, 14 Gy and 16 Gy, respectively, were computed and analyzed. Additionally, V12Gy and V14Gy volumes and values for seven prospective toxicity variables were recorded for 100 meningioma patients after Gamma Knife radiosurgery. Multivariable stepwise linear regression and best subset linear regression analyses were performed in two statistical software packages, SAS/STAT and R, respectively.
In a phantom study, for the constant volume targets, the volumes of 12 Gy, 14 Gy and 16 Gy isodose clouds were the lowest for the spherical target as an expected corollary of the isoperimetric inequality. For the constant surface area targets, a conventional wisdom is confirmed, as the target volume increases the corresponding volumes V12Gy, V14Gy and V16Gy also increase. In the 100-meningioma patient cohort, the best univariate model featured tumor surface area as the most significantly associated variable with both V12Gy and V14Gy volumes, corresponding to the adjusted R2 values of 0.82 and 0.77, respectively. Two statistical methods converged to matching multivariable models.
In a univariate model, target surface area is a better predictor of spilled dose to normal tissue than target largest dimension or target volume itself. In complex multivariate models, target surface area is an independent variable for modeling radiosurgical normal tissue toxicity risk.
本研究旨在探讨基于表面积对划定靶区进行特征描述的概念优势,并将该概念应用于放射外科治疗毒性风险评估。
为两种不同情况设计了四个计算机生成的目标,即球体、圆柱体、椭球体和长方体。在第一种情况下,所有目标的体积均相同,而在第二种情况下,所有目标的表面积均相同。为两种情况下的每个目标都创建了高质量的立体定向放射外科计划,其靶区覆盖率和选择性均至少达到 95%。计算并分析了相应于 12 Gy、14 Gy 和 16 Gy 剂量的正常脑体积 V12Gy、V14Gy 和 V16Gy。此外,还记录了伽玛刀放射外科治疗 100 例脑膜瘤患者后的 12 Gy 和 14 Gy 体积和 7 个潜在毒性变量的值。在两个统计软件包 SAS/STAT 和 R 中分别进行了多变量逐步线性回归和最佳子集线性回归分析。
在体模研究中,对于恒定体积的目标,作为等周不等式的必然推论,球形目标的 12 Gy、14 Gy 和 16 Gy 等剂量云的体积最低。对于恒定表面积的目标,证实了一个传统观念,即随着靶区体积的增加,相应的 V12Gy、V14Gy 和 V16Gy 体积也随之增加。在 100 例脑膜瘤患者队列中,最佳单变量模型的特征是肿瘤表面积与 V12Gy 和 V14Gy 体积最显著相关,对应的调整 R2 值分别为 0.82 和 0.77。两种统计方法都得出了一致的多变量模型。
在单变量模型中,与目标最大尺寸或目标体积本身相比,靶区表面积是预测正常组织外溢剂量的更好指标。在复杂的多变量模型中,靶区表面积是建模放射外科正常组织毒性风险的一个独立变量。