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Improving multi-atlas segmentation accuracy by leveraging local neighborhood information during label-fusion

机译:通过在标签融合过程中利用本地邻域信息来提高多图集分割的准确性

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Multi-atlas segmentation techniques typically comprise generation of multiple candidate labels that are then combined at a final label fusion stage. Label fusion strategies usually leverage information contained in these training labels but ignore local neuroanatomical information. Here, we address this limitation by explicitly incorporating local information at the label fusion stage. The proposed method - Autocorrecting Walks over Localized Markov Random Fields (AWoL-MRF) - is initialized using a set of candidate labels from the atlas library to partition a specific structure into high and low confidence regions. The labels of the low confidence regions are updated based on a localized Markov random field model and a novel sequential inference process (walks), which mimics manual segmentation protocols. The approach combines a priori information from the atlas library with the local spatial constraints improving the accuracy and robustness of the existing segmentation methods.
机译:多图谱分割技术通常包括生成多个候选标记,然后在最终的标记融合阶段对其进行合并。标签融合策略通常利用这些训练标签中包含的信息,但忽略局部神经解剖信息。在这里,我们通过在标签融合阶段明确合并本地信息来解决此限制。提出的方法-局部马尔可夫随机场上的自动校正遍历(AWoL-MRF)-使用来自Atlas库的一组候选标签初始化,以将特定结构划分为高置信度和低置信度区域。低置信度区域的标签基于局部马尔可夫随机场模型和模仿手动分割协议的新颖顺序推理过程(行走)进行更新。该方法将来自图集库的先验信息与局部空间约束相结合,从而提高了现有分割方法的准确性和鲁棒性。

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