Department of Physics, Duke University, Durham, NC 27705, United States of America. Carl E Ravin Advanced Imaging Laboratories, Duke University, Durham, NC 27705, United States of America. Author to whom any correspondence should be addressed.
Phys Med Biol. 2019 Nov 4;64(21):215020. doi: 10.1088/1361-6560/ab467f.
The increasing awareness of the adverse effects associated with radiation exposure in computed tomography (CT) has necessesitated the quantification of dose delivered to patients for better risk assessment in the clinic. The current methods for dose quantification used in the clinic are approximations, lacking realistic models for the irradiation conditions utilized in the scan and the anatomy of the patient being imaged, which limits their relevance for a particular patient. The established gold-standard technique for individualized dose quantification uses Monte Carlo (MC) simulations to obtain patient-specific estimates of organ dose in anatomically realistic computational phantoms to provide patient-specific estimates of organ dose. Although accurate, MC simulations are computationally expensive, which limits their utility for time-constrained applications in the clinic. To overcome these shortcomings, a real-time GPU-based MC tool based on FDA's MC-GPU framework was developed for patient and scanner-specific dosimetry in the clinic. The tool was validated against (1) AAPM's TG-195 reference datasets and (2) physical measurements of dose acquired using TLD chips in adult and pediatric anthropomorphic phantoms. To demonstrate its utility towards providing individualized dose estimates, it was integrated with an automatic segmentation method for generating patient-specific models, which were then used to estimate patient- and scanner-specific organ doses for a select population of 50 adult patients using a clinically relevant CT protocol. The organ dose estimates were compared to corresponding dose estimates from a previously validated MC method based on Penelope. The dose estimates from our MC tool agreed within 5% for all organs (except thyroid) tabulated by TG-195 and within 10% for all TLD locations in the adult and pediactric phantoms, across all validation cases. Compared against Penelope, the organ dose estimates agreed within 3% on average for all organs in the patient population study. The average run duration for each patient was estimated at 23.79 s, representing a significant speedup (~700×) over existing non-parallelized MC methods. The accuracy of dose estimates combined with a significant improvement in execution times suggests a feasible solution utilizing the proposed MC tool for real-time individualized dosimetry in the clinic.
随着人们日益认识到与计算机断层扫描(CT)相关的辐射暴露的不良影响,因此需要对患者所接受的剂量进行量化,以便在临床实践中更好地进行风险评估。目前在临床中使用的剂量量化方法是近似值,缺乏对扫描中使用的照射条件和被成像患者解剖结构的真实模型,这限制了它们对特定患者的相关性。用于个体化剂量量化的既定金标准技术是使用蒙特卡罗(MC)模拟来获得解剖学真实计算体模中器官剂量的患者特异性估计值,以提供器官剂量的患者特异性估计值。尽管 MC 模拟是准确的,但计算成本很高,这限制了它们在临床时间紧迫的应用中的实用性。为了克服这些缺点,我们基于 FDA 的 MC-GPU 框架开发了一种基于实时 GPU 的 MC 工具,用于临床中的患者和扫描仪特定剂量测定。该工具经过验证,符合以下标准:(1)AAPM 的 TG-195 参考数据集和(2)使用 TLD 芯片在成人和儿科人体模型中获得的剂量的物理测量值。为了证明其提供个体化剂量估计的实用性,我们将其与自动分割方法集成在一起,以生成患者特异性模型,然后使用临床相关 CT 协议为 50 名成年患者的特定人群估算患者和扫描仪特异性器官剂量。将器官剂量估计值与以前基于 Penelope 验证的 MC 方法的相应剂量估计值进行比较。在所有验证案例中,我们的 MC 工具的剂量估计值与 TG-195 列出的所有器官(甲状腺除外)的 5%以内和成人和儿科体模中所有 TLD 位置的 10%以内相符。与 Penelope 相比,在患者人群研究中,所有器官的平均器官剂量估计值相差 3%。为每位患者估计的平均运行时间约为 23.79 秒,与现有非并行 MC 方法相比,速度提高了约 700 倍。剂量估计值的准确性与执行时间的显著提高相结合,表明利用所提出的 MC 工具在临床中进行实时个体化剂量测定是可行的解决方案。