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A Hierarchical Bayesian Mixture Model Approach for Analysis of Resting-State Functional Brain Connectivity: An Alternative to Thresholding

机译:静态状态功能性大脑连通性分析的多层贝叶斯混合模型方法:阈值替代

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摘要

This article proposes a Bayesian hierarchical mixture model to analyze functional brain connectivity where mixture components represent “positively connected” and “non-connected” brain regions. Such an approach provides a data-informed separation of reliable and spurious connections in contrast to arbitrary thresholding of a connectivity matrix. The hierarchical structure of the model allows simultaneous inferences for the entire population as well as for each individual subject. A new connectivity measure, the posterior probability of a given pair of brain regions of a specific subject to be connected given the observed correlation of regions' activity, can be computed from the model fit. The posterior probability reflects the connectivity of a pair of regions relative to the overall connectivity pattern of an individual, which is overlooked in traditional correlation analyses. This article demonstrates that using the posterior probability might diminish the effect of spurious connections on inferences, which is present when a correlation is used as a connectivity measure. In addition, simulation analyses reveal that the sparsification of the connectivity matrix using the posterior probabilities might outperform the absolute thresholding based on correlations. Therefore, we suggest that posterior probability might be a beneficial measure of connectivity compared with the correlation. The applicability of the introduced method is exemplified by a study of functional resting-state brain connectivity in older adults.
机译:本文提出了一种贝叶斯分层混合模型,用于分析功能性大脑的连通性,其中混合成分代表“正连接”和“非连接”的大脑区域。与连接矩阵的任意阈值相反,这种方法提供了可靠和虚假连接的数据通知分离。该模型的层次结构允许对整个总体以及每个个体主题进行同时推断。可以从模型拟合中计算出一种新的连通性度量,即在给定观察到的区域活动相关性的情况下,要连接的特定对象的一对给定大脑区域对的后验概率。后验概率反映了一对区域相对于个人总体连通性模式的连通性,这在传统的相关分析中被忽略了。本文证明,使用后验概率可能会减少虚假连接对推论的影响,这种推论在将相关性用作连通性度量时会出现。此外,仿真分析表明,使用后验概率对连通性矩阵进行稀疏化可能会优于基于相关性的绝对阈值。因此,我们建议与相关性相比,后验概率可能是连通性的一种有益度量。通过研究老年人的功能性静息状态大脑连通性,可以举例说明所介绍方法的适用性。

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