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Computed tomography synthesis from magnetic resonance images in the pelvis using multiple random forests and auto-context features

机译:使用多个随机森林和自动上下文特征从骨盆中的磁共振图像合成计算机断层扫描

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摘要

In radiotherapy treatment planning that is only based on magnetic resonance imaging (MRI), the electron density information usually obtained from computed tomography (CT) must be derived from the MRI by synthesizing a so-called pseudo CT (pCT). This is a non-trivial task since MRI intensities are neither uniquely nor quantitatively related to electron density. Typical approaches involve either a classification or regression model requiring specialized MRI sequences to solve intensity ambiguities, or an atlas-based model necessitating multiple registrations between atlases and subject scans. In this work, we explore a machine learning approach for creating a pCT of the pelvic region from conventional MRI sequences without using atlases. We use a random forest provided with information about local texture, edges and spatial features derived from the MRI. This helps to solve intensity ambiguities. Furthermore, we use the concept of auto-context by sequentially training a number of classification forests to create and improve context features, which are finally used to train a regression forest for pCT prediction. We evaluate the pCT quality in terms of the voxel-wise error and the radiologic accuracy as measured by water-equivalent path lengths. We compare the performance of our method against two baseline pCT strategies, which either set all MRI voxels in the subject equal to the CT value of water, or in addition transfer the bone volume from the real CT. We show an improved performance compared to both baseline pCTs suggesting that our method may be useful for MRI-only radiotherapy.
机译:在仅基于磁共振成像(MRI)的放射治疗计划中,通常必须通过合成所谓的伪CT(pCT)来从MRI得出通常从计算机断层扫描(CT)获得的电子密度信息。这是一项艰巨的任务,因为MRI强度既不唯一也不定量地与电子密度相关。典型的方法包括需要专用MRI序列来解决强度歧义的分类或回归模型,或需要在图谱和受试者扫描之间进行多次配准的基于图谱的模型。在这项工作中,我们探索了一种无需使用地图集即可从常规MRI序列创建盆腔区域pCT的机器学习方法。我们使用随机森林,该森林提供了有关MRI得出的局部纹理,边缘和空间特征的信息。这有助于解决强度歧义。此外,我们通过依次训练许多分类林以创建和改进上下文特征来使用自动上下文的概念,最终将其用于训练用于pCT预测的回归林。我们通过水等效路径长度测量的体素方向误差和放射学准确性来评估pCT质量。我们将我们的方法的性能与两种基线pCT策略进行了比较,这两种策略要么将受试者的所有MRI体素设置为等于水的CT值,要么另外将骨骼体积从真实CT转移。与两个基线pCT相比,我们显示出更高的性能,这表明我们的方法可能仅对MRI放射治疗有用。

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