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基于相关抽样方差减少技术的快速个体化蒙特卡罗近距离治疗剂量计算。

Fast patient-specific Monte Carlo brachytherapy dose calculations via the correlated sampling variance reduction technique.

机构信息

Department of Radiation Oncology, Virginia Commonwealth University, Richmond, VA 23298, USA.

出版信息

Med Phys. 2012 Feb;39(2):1058-68. doi: 10.1118/1.3679018.

Abstract

PURPOSE

To demonstrate potential of correlated sampling Monte Carlo (CMC) simulation to improve the calculation efficiency for permanent seed brachytherapy (PSB) implants without loss of accuracy.

METHODS

CMC was implemented within an in-house MC code family (PTRAN) and used to compute 3D dose distributions for two patient cases: a clinical PSB postimplant prostate CT imaging study and a simulated post lumpectomy breast PSB implant planned on a screening dedicated breast cone-beam CT patient exam. CMC tallies the dose difference, ΔD, between highly correlated histories in homogeneous and heterogeneous geometries. The heterogeneous geometry histories were derived from photon collisions sampled in a geometrically identical but purely homogeneous medium geometry, by altering their particle weights to correct for bias. The prostate case consisted of 78 Model-6711 (125)I seeds. The breast case consisted of 87 Model-200 (103)Pd seeds embedded around a simulated lumpectomy cavity. Systematic and random errors in CMC were unfolded using low-uncertainty uncorrelated MC (UMC) as the benchmark. CMC efficiency gains, relative to UMC, were computed for all voxels, and the mean was classified in regions that received minimum doses greater than 20%, 50%, and 90% of D(90), as well as for various anatomical regions.

RESULTS

Systematic errors in CMC relative to UMC were less than 0.6% for 99% of the voxels and 0.04% for 100% of the voxels for the prostate and breast cases, respectively. For a 1 × 1 × 1 mm(3) dose grid, efficiency gains were realized in all structures with 38.1- and 59.8-fold average gains within the prostate and breast clinical target volumes (CTVs), respectively. Greater than 99% of the voxels within the prostate and breast CTVs experienced an efficiency gain. Additionally, it was shown that efficiency losses were confined to low dose regions while the largest gains were located where little difference exists between the homogeneous and heterogeneous doses. On an AMD 1090T processor, computing times of 38 and 21 sec were required to achieve an average statistical uncertainty of 2% within the prostate (1 × 1 × 1 mm(3)) and breast (0.67 × 0.67 × 0.8 mm(3)) CTVs, respectively.

CONCLUSIONS

CMC supports an additional average 38-60 fold improvement in average efficiency relative to conventional uncorrelated MC techniques, although some voxels experience no gain or even efficiency losses. However, for the two investigated case studies, the maximum variance within clinically significant structures was always reduced (on average by a factor of 6) in the therapeutic dose range generally. CMC takes only seconds to produce an accurate, high-resolution, low-uncertainly dose distribution for the low-energy PSB implants investigated in this study.

摘要

目的

展示相关抽样蒙特卡罗(CMC)模拟在提高永久性种子近距离放射治疗(PSB)植入物计算效率而不损失准确性方面的潜力。

方法

CMC 在内部 MC 代码库(PTRAN)中实现,并用于计算两个患者病例的 3D 剂量分布:临床 PSB 植入后前列腺 CT 成像研究和计划在筛查专用乳房锥形束 CT 患者检查上进行的模拟乳房 PSB 植入后 lumpectomy 乳房。CMC 计算同质和异质几何形状中高度相关历史之间的剂量差异 ΔD。异质几何形状历史记录是通过改变其粒子权重从在几何形状完全相同但纯同质介质中采样的光子碰撞中得出的,以校正偏差。前列腺病例包括 78 个 Model-6711(125)I 种子。乳房病例包括 87 个 Model-200(103)Pd 种子,嵌入模拟 lumpectomy 腔周围。使用低不确定性非相关 MC(UMC)作为基准,展开 CMC 中的系统和随机误差。计算了相对于 UMC 的 CMC 效率增益,适用于所有体素,并将平均值分类为接收剂量大于 20%、50%和 90%的 D(90)的区域,以及各种解剖区域。

结果

对于前列腺和乳房病例,CMC 相对于 UMC 的系统误差小于 99%的体素的 0.6%,小于 100%的体素的 0.04%。对于 1×1×1mm(3)剂量网格,在前列腺和乳房临床靶区(CTV)中分别实现了 38.1 倍和 59.8 倍的平均增益。在前列腺和乳房 CTV 中,超过 99%的体素获得了效率增益。此外,还表明效率损失仅限于低剂量区域,而最大增益位于同质和异质剂量之间差异较小的区域。在 AMD 1090T 处理器上,分别需要 38 和 21 秒的计算时间才能在前列腺(1×1×1mm(3))和乳房(0.67×0.67×0.8mm(3))CTV 中实现平均统计不确定性为 2%的平均效率增益。

结论

CMC 支持相对于传统非相关 MC 技术平均提高 38-60 倍的平均效率,尽管有些体素没有增益甚至效率损失。然而,对于这两个研究案例,在治疗剂量范围内,通常总是降低具有临床意义的结构内的最大方差(平均降低 6 倍)。对于本研究中调查的低能 PSB 植入物,CMC 只需几秒钟即可生成准确、高分辨率、低不确定性的剂量分布。

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