LEARNING POPULATION AND SUBJECT-SPECIFIC BRAIN CONNECTIVITY NETWORKS VIA MIXED NEIGHBORHOOD SELECTION
成果类型:
Article
署名作者:
Monti, Ricardo Pio; Anagnostopoulos, Christoforos; Montana, Giovanni
署名单位:
Imperial College London; Imperial College London; Guy's & St Thomas' NHS Foundation Trust; University of London; King's College London
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/17-AOAS1067
发表日期:
2017
页码:
2142-2164
关键词:
inverse covariance estimation
functional connectivity
regression
摘要:
In neuroimaging data analysis, Gaussian graphical models are often used to model statistical dependencies across spatially remote brain regions known as functional connectivity. Typically, data is collected across a cohort of subjects and the scientific objectives consist of estimating population and subject-specific connectivity networks. A third objective that is often overlooked involves quantifying inter-subject variability, and thus identifying regions or subnetworks that demonstrate heterogeneity across subjects. Such information is crucial to thoroughly understand the human connectome. We propose Mixed Neighborhood Selection to simultaneously address the three aforementioned objectives. By recasting covariance selection as a neighborhood selection problem, we are able to efficiently learn the topology of each node. We introduce an additional mixed effect component to neighborhood selection to simultaneously estimate a graphical model for the population of subjects as well as for each individual subject. The proposed method is validated empirically through a series of simulations and applied to resting state data for healthy subjects taken from the ABIDE consortium.
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