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Evaluation of proton and photon dose distributions recalculated on 2D and 3D Unet-generated pseudoCTs from T1-weighted MR head scans

机译:对T1加权MR HEAD SHANS的2D和3D UNET产生的质子和光子剂量分布的质子和光子剂量分布的评价

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Introduction: The recent developments of magnetic resonance (MR) based adaptive strategies for photon and, potentially for proton therapy, require a fast and reliable conversion of MR images to X-ray computed tomography (CT) values. CT values are needed for photon and proton dose calculation. The improvement of conversion results employing a 3D deep learning approach is evaluated. Material and methods: A database of 89 T1-weighted MR head scans with about 100 slices each, including rigidly registered CTs, was created. Twenty-eight validation patients were randomly sampled, and four patients were selected for application. The remaining patients were used to train a 2D and a 3D U-shaped convolutional neural network (Unet). A stack size of 32 slices was used for 3D training. For all application cases, volumetric modulated arc therapy photon and single-field uniform dose pencil-beam scanning proton plans at four different gantry angles were optimized for a generic target on the CT and recalculated on 2D and 3D Unet-based pseudoCTs. Mean (absolute) error (MAE/ME) and a gradient sharpness estimate were used to quantify the image quality. Three-dimensional gamma and dose difference analyses were performed for photon (gamma criteria: 1%, 1 mm) and proton dose distributions (gamma criteria: 2%, 2 mm). Range (80% fall off) differences for beam's eye view profiles were evaluated for protons. Results: Training 36 h for 1000 epochs in 3D (6h for 200 epochs in 2D) yielded a maximum MAE of 147 HU (135 HU) for the application patients. Except for one patient gamma pass rates for photon and proton dose distributions were above 96% for both Unets. Slice discontinuities were reduced for 3D training at the cost of sharpness.Conclusions: Image analysis revealed a slight advantage of 2D Unets compared to 3D Unets. Similar dose calculation performance was reached for the 2D and 3D network.
机译:简介:最近的光子磁共振的发展(MR)的光子的自适应策略,可能是质子治疗的可能性,需要将MR图像的快速且可靠地转换为X射线计算断层扫描(CT)值。光子和质子剂量计算需要CT值。评估采用3D深度学习方法的转换结果的提高。材料和方法:创建了89个T1加权MR头扫描的数据库,其中包括约100个切片,包括刚性注册的CTS,包括刚性注册的CTS。随机取样28名验证患者,选择了四名患者申请。其余患者用于培训2D和3D U形卷积神经网络(UNET)。 32片的堆叠尺寸用于3D培训。对于所有施用例,体积调制的电弧治疗光子和单场均匀剂量铅笔束扫描质子计划以四种不同的龙门角度针对CT上的通用目标进行了优化,并在2D和3D基于UNET的伪图上重新计算。平均(绝对)错误(MAE / ME)和梯度锐度估计用于量化图像质量。对光子(γ标准:1%,1mM)和质子剂量分布进行三维γ和剂量差分分析(γ标准:2%,2mm)。针对质子评估了梁眼视图型材的范围(80%掉落)差异的差异。结果:培训36小时3D中的3D时期(2D中的200个时期为6小时),为应用患者提供了最大的147u(135 Hu)的最大MAE。除了一个患者的伽留通率除外,两种蛋白质的光子和质子剂量分布高于96%。在锐度成本的成本下减少了切片不连续性。结论:图像分析显示,与3D缺盘相比,2D unets的略有优势。为2D和3D网络达到了类似的剂量计算性能。

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