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Pseudo-CT generation by conditional inference random forest for MRI-based radiotherapy treatment planning

机译:基于条件推理随机森林的伪CT生成,用于基于MRI的放射治疗计划

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Dose calculation from MRI is a topical issue. New treatment systems combining a linear accelerator with a MRI have been recently being developed. MRI has good soft tissue contrast without ionizing radiation exposure. However, unlike CT, MRI does not provide electron density information necessary for dose calculation. We propose in this paper a machine learning method to simulate a CT from a target MRI and co-registered CT-MRI training set. Ten prostate MR and CT images have been considered. Firstly, a reference image was randomly selected in the training set. A common space has been built thanks to affine registrations between the training set and the reference image. Multiscale image descriptors such as spatial information, gradients and texture features were extracted from MRI patches at dilïerent levels of a Gaussian pyramid and used as voxel-wise characteristics in the learning scheme. A Conditional Inference Random Forest (CIRF) modelled the relation between MRI descriptors and CT patches. For validation, test images were spatially normalized and the same descriptors were computed to generate a new pCT. Leave-one out experiments were performed. We obtained a MAE = 45.79 (pCT vs CT). Dose volume histograms inside PTV and organs at risk are in close agreement. The D98% was 0.45 % (inside PTV) and the 3D gamma pass rate (1mm, 1%) was 99,2%. Our method has better results than direct bulk assignment. And the results suggest that the method may be used for dose calculations in an MR based planning system.
机译:MRI的剂量计算是一个热门话题。最近已经开发了将线性加速器与MRI相结合的新治疗系统。 MRI具有良好的软组织对比度,而不会电离辐射。但是,与CT不同,MRI不提供剂量计算所需的电子密度信息。我们在本文中提出了一种机器学习方法,该方法可从目标MRI和共同注册的CT-MRI训练集模拟CT。已考虑十张前列腺MR和CT图像。首先,在训练集中随机选择参考图像。由于训练集和参考图像之间的仿射配准,已经建立了一个公共空间。多尺度图像描述符(例如空间信息,梯度和纹理特征)是从MRI高斯金字塔不同级别的补丁中提取的,并在学习方案中用作体素特征。条件推理随机森林(CIRF)对MRI描述符和CT斑块之间的关系进行了建模。为了验证,对测试图像进​​行了空间归一化,并计算了相同的描述符以生成新的pCT。进行留一实验。我们获得了MAE = 45.79(pCT vs CT)。 PTV和有风险的器官内的剂量体积直方图非常吻合。 D98%为0.45%(在PTV内部),3D伽玛通过率(1mm,1%)为99.2%。与直接批量分配相比,我们的方法具有更好的结果。结果表明,该方法可用于基于MR的计划系统中的剂量计算。

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