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Validating Dose Uncertainty Estimates Produced by AUTODIRECT: An Automated Program to Evaluate Deformable Image Registration Accuracy

机译:验证由AUTODIRECT产生的剂量不确定性估计:评估变形图像配准精度的自动化程序

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摘要

Deformable image registration is a powerful tool for mapping information, such as radiation therapy dose calculations, from one computed tomography image to another. However, deformable image registration is susceptible to mapping errors. Recently, an automated deformable image registration evaluation of confidence tool was proposed to predict voxel-specific deformable image registration dose mapping errors on a patient-by-patient basis. The purpose of this work is to conduct an extensive analysis of automated deformable image registration evaluation of confidence tool to show its effectiveness in estimating dose mapping errors. The proposed format of automated deformable image registration evaluation of confidence tool utilizes 4 simulated patient deformations (3 B-spline-based deformations and 1 rigid transformation) to predict the uncertainty in a deformable image registration algorithm’s performance. This workflow is validated for 2 DIR algorithms (B-spline multipass from Velocity and Plastimatch) with 1 physical and 11 virtual phantoms, which have known ground-truth deformations, and with 3 pairs of real patient lung images, which have several hundred identified landmarks. The true dose mapping error distributions closely followed the Student t distributions predicted by automated deformable image registration evaluation of confidence tool for the validation tests: on average, the automated deformable image registration evaluation of confidence tool–produced confidence levels of 50%, 68%, and 95% contained 48.8%, 66.3%, and 93.8% and 50.1%, 67.6%, and 93.8% of the actual errors from Velocity and Plastimatch, respectively. Despite the sparsity of landmark points, the observed error distribution from the 3 lung patient data sets also followed the expected error distribution. The dose error distributions from automated deformable image registration evaluation of confidence tool also demonstrate good resemblance to the true dose error distributions. Automated deformable image registration evaluation of confidence tool was also found to produce accurate confidence intervals for the dose–volume histograms of the deformed dose.
机译:可变形图像配准是一种功能强大的工具,可将信息(例如放射治疗剂量计算)从一个计算机断层扫描图像映射到另一个。但是,可变形图像配准容易受到制图错误的影响。近来,提出了一种自动的可变形图像配准置信度评估工具,以逐个患者地预测体素特定的可变形图像配准剂量映射误差。这项工作的目的是对置信度工具的可自动变形图像配准评估进行广泛的分析,以显示其在估计剂量映射误差中的有效性。建议的自动置信度可变形图像配准评估工具格式采用4种模拟的患者变形(3种基于B样条的变形和1种刚性变形)来预测可变形图像配准算法性能的不确定性。该工作流程已针对2种DIR算法(来自Velocity和Plastimatch的B样条多程验证)进行了验证,该算法具有1个物理模型和11个虚拟体模,它们具有已知的地面真实变形,并具有3对真实的患者肺部图像,具有数百个已识别的界标。真实剂量映射误差分布与效度置信度自动可变形图像配准工具评估测试所预测的学生t分布密切相关:平均而言,置信度工具可自动变形图像配准工具评估–产生的置信度分别为50%,68%, 95%和95%分别包含来自Velocity和Plastimatch的实际误差的48.8%,66.3%和93.8%和50.1%,67.6%和93.8%。尽管界标点稀疏,但从3个肺部患者数据集中观察到的误差分布也遵循预期的误差分布。来自置信度工具的自动可变形图像配准评估的剂量误差分布也显示出与真实剂量误差分布的良好相似性。还发现对置信工具的自动可变形图像配准评估可以为变形剂量的剂量-体积直方图产生准确的置信区间。

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