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Subject-Specific Structural Parcellations Based on Randomized AB-divergences

机译:基于随机AB散度的主题特定结构分类

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Brain parcellation provides a means to approach the brain in smaller regions. It also affords an appropriate dimensionality reduction in the creation of connectomes. Most approaches to creating connectomes start with registering individual scans to a template, which is then par-cellated. Data processing usually ends with the projection of individual scans onto the parcellation for extracting individual biomarkers, such as connectivity signatures. During this process, registration errors can significantly alter the quality of biomarkers. In this paper, we propose to mitigate this issue with a hybrid approach for brain parcellation. We use diffusion MRI (dMRI) based structural connectivity measures to drive the refinement of an anatomical prior parcellation. Our method generates highly coherent structural parcels in native subject space while maintaining interpretability and correspondences across the population. This goal is achieved by registering a population-wide anatomical prior to individual dMRI scan and generating connectivity signatures for each voxel. The anatomical prior is then deformed by re-parcellating the brain according to the similarity between voxel connectivity signatures while constraining the number of parcels. We investigate a broad family of signature similarities known as AB-divergences and explain how a divergence adapted to our segmentation task can be selected. This divergence is used for par-cellating a high-resolution dataset using two graph-based methods. The promising results obtained suggest that our approach produces coherent parcels and stronger connectomes than the original anatomical priors.
机译:脑碎裂提供了一种在较小区域接近大脑的方法。它还在创建连接组时提供了适当的降维效果。创建连接组的大多数方法都始于将单个扫描注册到模板,然后将其拆分。数据处理通常以将单个扫描投影到碎片上来结束,以提取单个生物标记,例如连通性签名。在此过程中,注册错误会大大改变生物标志物的质量。在本文中,我们建议使用混合方法进行脑部碎裂来减轻此问题。我们使用基于扩散核磁共振成像(dMRI)的结构连通性措施来驱动解剖学先前的椎间融合术的细化。我们的方法在本地主题空间中生成高度连贯的结构包,同时保持整个人群的可解释性和对应性。通过在单个dMRI扫描之前注册整个人群的解剖结构并为每个体素生成连接标记,可以实现此目标。然后,根据体素连接标记之间的相似性,通过重新拼凑大脑来限制解剖先验,同时限制包裹的数量。我们调查了广泛的签名相似性家族,称为AB分歧,并解释了如何选择适合于我们的细分任务的分歧。此差异用于使用两种基于图的方法对高分辨率数据集进行par-celling。获得的令人鼓舞的结果表明,我们的方法比原始的解剖学方法能够产生连贯的包裹和更强大的连接体。

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