网络发现通过约束张量分析的fMRI数据

I. Davidson, Sean Gilpin, Owen Carmichael, Peter B. Walker
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引用次数: 91

摘要

我们提出了网络发现问题,该问题涉及将时空数据简化为内聚区域(节点)和这些区域(边缘)之间的关系。这些问题自然存在于人类受试者的功能磁共振成像扫描中。随着时间的推移,这些扫描包括数千个体素的激活,目的是将它们简化为正在使用的潜在认知网络。我们提出了这个问题的监督和半监督变量,并假设了一个约束张量分解公式和一个相应的易于实现的交替最小二乘求解器。我们表明,该公式在监督不完整、多余和有噪声的控制实验中效果很好,并且能够恢复潜在的地面真值网络。然后,我们表明,对于真实的fMRI数据,我们的方法可以重现神经学中关于静息状态健康和阿尔茨海默病患者的默认模式网络的众所周知的结果。最后,我们证明了分解的重建误差提供了一个有用的网络强度度量,并且在预测关键的认知分数时非常有用,无论是它本身还是临床信息。
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Network discovery via constrained tensor analysis of fMRI data
We pose the problem of network discovery which involves simplifying spatio-temporal data into cohesive regions (nodes) and relationships between those regions (edges). Such problems naturally exist in fMRI scans of human subjects. These scans consist of activations of thousands of voxels over time with the aim to simplify them into the underlying cognitive network being used. We propose supervised and semi-supervised variations of this problem and postulate a constrained tensor decomposition formulation and a corresponding alternating least squares solver that is easy to implement. We show this formulation works well in controlled experiments where supervision is incomplete, superfluous and noisy and is able to recover the underlying ground truth network. We then show that for real fMRI data our approach can reproduce well known results in neurology regarding the default mode network in resting-state healthy and Alzheimer affected individuals. Finally, we show that the reconstruction error of the decomposition provides a useful measure of the network strength and is useful at predicting key cognitive scores both by itself and with clinical information.
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