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在潜在空间建模中纳入解剖学知识建立组级脑结构连接。

Establishing group-level brain structural connectivity incorporating anatomical knowledge under latent space modeling.

机构信息

Department of Biostatistics and Health Data Science, Indiana University School of Medicine, United States of America.

Department of Statistics, Virginia University, United States of America.

出版信息

Med Image Anal. 2025 Jan;99:103309. doi: 10.1016/j.media.2024.103309. Epub 2024 Aug 23.

Abstract

Brain structural connectivity, capturing the white matter fiber tracts among brain regions inferred by diffusion MRI (dMRI), provides a unique characterization of brain anatomical organization. One fundamental question to address with structural connectivity is how to properly summarize and perform statistical inference for a group-level connectivity architecture, for instance, under different sex groups, or disease cohorts. Existing analyses commonly summarize group-level brain connectivity by a simple entry-wise sample mean or median across individual brain connectivity matrices. However, such a heuristic approach fully ignores the associations among structural connections and the topological properties of brain networks. In this project, we propose a latent space-based generative network model to estimate group-level brain connectivity. Within our modeling framework, we incorporate the anatomical information of brain regions as the attributes of nodes to enhance the plausibility of our estimation and improve biological interpretation. We name our method the attributes-informed brain connectivity (ABC) model, which compared with existing group-level connectivity estimations, (1) offers an interpretable latent space representation of the group-level connectivity, (2) incorporates the anatomical knowledge of nodes and tests its co-varying relationship with connectivity and (3) quantifies the uncertainty and evaluates the likelihood of the estimated group-level effects against chance. We devise a novel Bayesian MCMC algorithm to estimate the model. We evaluate the performance of our model through extensive simulations. By applying the ABC model to study brain structural connectivity stratified by sex among Alzheimer's Disease (AD) subjects and healthy controls incorporating the anatomical attributes (volume, thickness and area) on nodes, our method shows superior predictive power on out-of-sample structural connectivity and identifies meaningful sex-specific network neuromarkers for AD.

摘要

脑结构连接捕捉了通过弥散磁共振成像(dMRI)推断的大脑区域之间的白质纤维束,为大脑解剖结构提供了独特的特征描述。使用结构连接性需要解决的一个基本问题是如何正确总结和进行组水平连接结构的统计推断,例如在不同的性别组或疾病队列中。现有的分析通常通过对个体脑连接矩阵进行简单的逐点样本均值或中位数来总结组水平脑连接。然而,这种启发式方法完全忽略了结构连接之间的关联和大脑网络的拓扑性质。在这个项目中,我们提出了一种基于潜在空间的生成网络模型来估计组水平脑连接。在我们的建模框架中,我们将大脑区域的解剖信息作为节点的属性纳入其中,以增强我们估计的合理性并提高生物学解释。我们将我们的方法命名为属性感知脑连接(ABC)模型,与现有的组水平连接估计方法相比,(1)为组水平连接提供了一个可解释的潜在空间表示,(2)纳入了节点的解剖知识并测试了它与连接的共变关系,以及(3)量化了不确定性并评估了针对机会的估计组水平效应的可能性。我们设计了一种新的贝叶斯 MCMC 算法来估计模型。我们通过广泛的模拟来评估我们模型的性能。通过将 ABC 模型应用于 AD 患者和健康对照组的性别分层脑结构连接研究,同时纳入节点上的解剖属性(体积、厚度和面积),我们的方法在结构连接的样本外预测方面表现出更好的预测能力,并确定了有意义的性别特异性 AD 网络神经标志物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8d30/11609031/91ec34c994a1/nihms-2018744-f0001.jpg

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