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Organ-At-Risk Segmentation in Brain MRI using Model-Based Segmentation: Benefits of Deep Learning-Based Boundary Detectors

机译:使用基于模型的分割在脑部MRI中进行器官风险分割:基于深度学习的边界检测器的好处

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摘要

Organ-at-risk (OAR) segmentation is a key step for radiotherapy treatment planning. Model-based segmentation (MBS) has been successfully used for the fully automatic segmentation of anatomical structures and it has proven to be robust to noise due to its incorporated shape prior knowledge. In this work, we investigate the advantages of combining neural networks with the prior anatomical shape knowledge of the model-based segmentation of organs-at-risk for brain radiotherapy (RT) on Magnetic Resonance Imaging (MRI). We train our boundary detectors using two different approaches: classic strong gradients as described in [] and as a locally adaptive regression task, where for each triangle a convolutional neural network (CNN) was trained to estimate the distances between the mesh triangles and organ boundary, which were then combined into a single network, as described by []. We evaluate both methods using a 5-fold cross- validation on both T1w and T2w brain MRI data from sixteen primary and metastatic brain cancer patients (some post-surgical). Using CNN-based boundary detectors improved the results for all structures in both T1w and T2w data. The improvements were statistically significant (p < 0.05) for all segmented structures in the T1w images and only for the auditory system in the T2w images.
机译:高危器官(OAR)分割是放射疗法治疗计划的关键步骤。基于模型的分割(MBS)已成功用于解剖结构的全自动分割,并且由于其结合的形状先验知识而被证明对噪声具有鲁棒性。在这项工作中,我们研究了将神经网络与基于模型的脑部放射疗法(RT)的磁共振波谱(MRI)的危险器官模型分割的先前解剖形状知识相结合的优势。我们使用两种不同的方法训练边界检测器:如[]中所述的经典强梯度训练和作为局部自适应回归任务,其中针对每个三角形训练卷积神经网络(CNN)来估计网格三角形与器官边界之间的距离,然后将其合并为一个网络,如[]所述。我们对来自16名原发性和转移性脑癌患者(部分在手术后)的T1w和T2w脑MRI数据使用5倍交叉验证来评估这两种方法。使用基于CNN的边界检测器可改善T1w和T2w数据中所有结构的结果。对于T1w图像中的所有分段结构,仅对于T2w图像中的听觉系统,这种改善具有统计学意义(p <0.05)。

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