Coupled Harmonic Bases for Longitudinal Characterization of Brain Networks.

2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)(2016)

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摘要
There is a great deal of interest in using large scale brain imaging studies to understand how brain connectivity evolves over time for an individual and how it varies over different levels/quantiles of cognitive function. To do so, one typically performs so-called tractography procedures on diffusion MR brain images and derives measures of brain connectivity expressed as graphs. The nodes correspond to distinct brain regions and the edges encode the strength of the connection. The scientific interest is in characterizing the evolution of these graphs over time or from healthy individuals to diseased. We pose this important question in terms of the Laplacian of the connectivity graphs derived from various longitudinal or disease time points - quantifying its progression is then expressed in terms of coupling the harmonic bases of a full set of Laplacians. We derive a coupled system of generalized eigenvalue problems (and corresponding numerical optimization schemes) whose solution helps characterize the full life cycle of brain connectivity evolution in a given dataset. Finally, we show a set of results on a diffusion MR imaging dataset of middle aged people at risk for Alzheimer's disease (AD), who are cognitively healthy. In such asymptomatic adults, we find that a framework for characterizing brain connectivity evolution provides the ability to predict cognitive scores for individual subjects, and for estimating the progression of participant's brain connectivity into the future.
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关键词
coupled harmonic bases,longitudinal brain network characterization,large-scale brain imaging,cognitive function,tractography procedures,diffusion MR brain images,brain connectivity measure,brain regions,connectivity graphs,longitudinal time points,disease time points,harmonic base coupling,generalized eigenvalue problems,numerical optimization scheme,diffusion MR imaging dataset,middle aged people,Alzheimer's disease risk,AD risk,cognitively healthy people,asymptomatic adults,cognitive score prediction
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