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重采样网络统计的混合效应模型提高了发现多主体功能连接差异的统计功效。

Mixed Effects Models for Resampled Network Statistics Improves Statistical Power to Find Differences in Multi-Subject Functional Connectivity.

作者信息

Narayan Manjari, Allen Genevera I

机构信息

Department of Electrical and Computer Engineering, Rice University Houston, TX, USA.

Department of Electrical and Computer Engineering, Rice UniversityHouston, TX, USA; Department of Statistics, Rice UniversityHouston, TX, USA; Jan and Dan Duncan Neurological Research Institute and Department of Pediatrics-Neurology at Baylor College of MedicineHouston, TX, USA.

出版信息

Front Neurosci. 2016 Apr 12;10:108. doi: 10.3389/fnins.2016.00108. eCollection 2016.

Abstract

Many complex brain disorders, such as autism spectrum disorders, exhibit a wide range of symptoms and disability. To understand how brain communication is impaired in such conditions, functional connectivity studies seek to understand individual differences in brain network structure in terms of covariates that measure symptom severity. In practice, however, functional connectivity is not observed but estimated from complex and noisy neural activity measurements. Imperfect subject network estimates can compromise subsequent efforts to detect covariate effects on network structure. We address this problem in the case of Gaussian graphical models of functional connectivity, by proposing novel two-level models that treat both subject level networks and population level covariate effects as unknown parameters. To account for imperfectly estimated subject level networks when fitting these models, we propose two related approaches-R (2) based on resampling and random effects test statistics, and R (3) that additionally employs random adaptive penalization. Simulation studies using realistic graph structures reveal that R (2) and R (3) have superior statistical power to detect covariate effects compared to existing approaches, particularly when the number of within subject observations is comparable to the size of subject networks. Using our novel models and methods to study parts of the ABIDE dataset, we find evidence of hypoconnectivity associated with symptom severity in autism spectrum disorders, in frontoparietal and limbic systems as well as in anterior and posterior cingulate cortices.

摘要

许多复杂的脑部疾病,如自闭症谱系障碍,表现出广泛的症状和残疾。为了了解在这些情况下大脑通信是如何受损的,功能连接性研究试图根据测量症状严重程度的协变量来理解大脑网络结构中的个体差异。然而,在实际中,功能连接性并非直接观测到,而是从复杂且有噪声的神经活动测量中估计出来的。不完美的个体网络估计可能会影响后续检测协变量对网络结构影响的工作。我们针对功能连接性的高斯图形模型解决了这个问题,提出了新颖的两级模型,将个体水平网络和总体水平协变量效应都视为未知参数。为了在拟合这些模型时考虑不完美估计的个体水平网络,我们提出了两种相关方法——基于重采样和随机效应检验统计量的R(2),以及另外采用随机自适应惩罚的R(3)。使用真实图形结构的模拟研究表明,与现有方法相比,R(2)和R(3)在检测协变量效应方面具有更高的统计功效,特别是当个体内部观测数量与个体网络规模相当时。使用我们新颖的模型和方法对ABIDE数据集的部分进行研究,我们发现了在自闭症谱系障碍中,前额顶叶和边缘系统以及前扣带回和后扣带回皮质中与症状严重程度相关的低连接性证据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d362/4828454/f865841d5d29/fnins-10-00108-g0001.jpg

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