热疗治疗计划中组织特性和灌注不确定性的量化:多项式混沌展开的多分析。
Quantification of tissue property and perfusion uncertainties in hyperthermia treatment planning: Multianalysis using polynomial chaos expansion.
机构信息
Amsterdam UMC location University of Amsterdam, Radiation Oncology, Meibergdreef 9, Amsterdam, the Netherlands; Cancer Center Amsterdam, Cancer biology and immunology, Amsterdam, the Netherlands; Cancer Center Amsterdam, Treatment and quality of life, Amsterdam, the Netherlands.
Amsterdam UMC location University of Amsterdam, Radiation Oncology, Meibergdreef 9, Amsterdam, the Netherlands; Cancer Center Amsterdam, Cancer biology and immunology, Amsterdam, the Netherlands; Cancer Center Amsterdam, Treatment and quality of life, Amsterdam, the Netherlands.
出版信息
Comput Methods Programs Biomed. 2023 Oct;240:107675. doi: 10.1016/j.cmpb.2023.107675. Epub 2023 Jun 10.
INTRODUCTION
Hyperthermia treatment planning (HTP) tools can guide treatment delivery, particularly with locoregional radiative phased array systems. Uncertainties in tissue and perfusion property values presently lead to quantitative inaccuracy of HTP, leading to sub-optimal treatment. Assessment of these uncertainties would allow for better judgement of the reliability of treatment plans and improve their value for treatment guidance. However, systematically investigating the impact of all uncertainties on treatment plans is a complex, high-dimensional problem and too computationally expensive for traditional Monte Carlo approaches. This study aims to systematically quantify the treatment-plan impact of tissue property uncertainties by investigating their individual contribution to, and combined impact on predicted temperature distributions.
METHODS
A novel Polynomial Chaos Expansion (PCE)-based HTP uncertainty quantification was developed and applied for locoregional hyperthermia of modelled tumours in the pancreatic head, prostate, rectum, and cervix. Patient models were based on the Duke and Ella digital human models. Using Plan2Heat, treatment plans were created to optimise tumour temperature (represented by T90) for treatment using the Alba4D system. For all 25-34 modelled tissues, the impact of tissue property uncertainties was analysed individually i.e., electrical and thermal conductivity, permittivity, density, specific heat capacity and perfusion. Next, combined analyses were performed on the top 30 uncertainties with the largest impact.
RESULTS
Uncertainties in thermal conductivity and heat capacity were found to have negligible impact on the predicted temperature ( < 1 × 10 °C), density and permittivity uncertainties had a small impact (< 0.3 °C). Uncertainties in electrical conductivity and perfusion can lead to large variations in predicted temperature. However, variations in muscle properties result in the largest impact at locations that could limit treatment quality, with a standard deviation up to almost 6 °C (pancreas) and 3.5 °C (prostate) for perfusion and electrical conductivity, respectively. The combined influence of all significant uncertainties leads to large variations with a standard deviation up to 9.0, 3.6, 3.7 and 4.1 °C for the pancreatic, prostate, rectal and cervical cases, respectively.
CONCLUSION
Uncertainties in tissue and perfusion property values can have a large impact on predicted temperatures from hyperthermia treatment planning. PCE-based analysis helps to identify all major uncertainties, their impact and judge the reliability of treatment plans.
简介
高热治疗计划(HTP)工具可以指导治疗的实施,尤其是使用局部区域性辐射相控阵系统时。目前,组织和灌注特性值的不确定性导致 HTP 的定量不准确,从而导致治疗效果不佳。评估这些不确定性可以更好地判断治疗计划的可靠性,并提高其作为治疗指导的价值。然而,系统地研究所有不确定性对治疗计划的影响是一个复杂的高维问题,对于传统的蒙特卡罗方法来说计算成本过高。本研究旨在通过研究其对预测温度分布的单独贡献和综合影响,系统地量化组织特性不确定性对治疗计划的影响。
方法
开发了一种新的基于多项式混沌展开(PCE)的 HTP 不确定性量化方法,并将其应用于模拟的胰腺头部、前列腺、直肠和子宫颈肿瘤的局部区域高温治疗。患者模型基于 Duke 和 Ella 数字人体模型。使用 Plan2Heat,为使用 Alba4D 系统治疗优化肿瘤温度(由 T90 表示)创建了治疗计划。对于所有 25-34 种模拟组织,分别分析了组织特性不确定性的影响,即电导率和热导率、介电常数、密度、比热和灌注。然后,对影响最大的前 30 个不确定性进行了综合分析。
结果
发现热导率和热容量的不确定性对预测温度的影响可以忽略不计(<1×10°C),密度和介电常数的不确定性的影响较小(<0.3°C)。电导率和灌注的不确定性会导致预测温度的大幅变化。然而,肌肉特性的变化会导致限制治疗质量的位置产生最大的影响,标准偏差高达近 6°C(胰腺)和 3.5°C(前列腺),分别用于灌注和电导率。所有显著不确定性的综合影响会导致大的变化,标准偏差分别高达 9.0、3.6、3.7 和 4.1°C,用于胰腺、前列腺、直肠和子宫颈病例。
结论
组织和灌注特性值的不确定性会对高温治疗计划的预测温度产生很大的影响。基于 PCE 的分析有助于识别所有主要不确定性及其影响,并判断治疗计划的可靠性。