全图像分辨率下结构全脑连通性的非参数贝叶斯聚类

Karen Sandø Ambrosen, K. J. Albers, T. Dyrby, Mikkel N. Schmidt, Morten Mørup
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引用次数: 8

摘要

扩散磁共振成像能够以高空间分辨率测量人类大脑的结构连通性。局部噪声连接估计可以使用神经束成像方法和统计模型来量化大脑的显著结构组织。然而,对这些庞大的结构连接数据集进行统计建模是一项具有计算挑战性的任务。我们为无限关系模型(一个突出的非参数贝叶斯模型,用于将网络聚类成结构相似的组)开发了一个高性能的推理程序,该模型在统计支持的分辨率下定义了结构单元。我们将该模型应用于全图像分辨率的大脑结构连接网络,该网络拥有超过10万个区域(灰质边界的体素)和大约1亿个连接。导出的聚类识别了1000个显著结构单元,我们发现识别的单元提供了比使用完整图或两个常用地图集预测更好的预测性能。在全图像分辨率下提取大脑连接的结构单元可以帮助理解潜在的连接模式,并且所提出的大规模数据驱动的结构单元生成方法提供了一个有前途的框架,可以利用不断增加的空间分辨率的神经成像技术。
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Nonparametric Bayesian clustering of structural whole brain connectivity in full image resolution
Diffusion magnetic resonance imaging enables measuring the structural connectivity of the human brain at a high spatial resolution. Local noisy connectivity estimates can be derived using tractography approaches and statistical models are necessary to quantify the brain's salient structural organization. However, statistically modeling these massive structural connectivity datasets is a computational challenging task. We develop a high-performance inference procedure for the infinite relational model (a prominent non-parametric Bayesian model for clustering networks into structurally similar groups) that defines structural units at the resolution of statistical support. We apply the model to a network of structural brain connectivity in full image resolution with more than one hundred thousand regions (voxels in the gray-white matter boundary) and around one hundred million connections. The derived clustering identifies in the order of one thousand salient structural units and we find that the identified units provide better predictive performance than predicting using the full graph or two commonly used atlases. Extracting structural units of brain connectivity at the full image resolution can aid in understanding the underlying connectivity patterns, and the proposed method for large scale data driven generation of structural units provides a promising framework that can exploit the increasing spatial resolution of neuro-imaging technologies.
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