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Bayesian Spatial Blind Source Separation via the Thresholded Gaussian Process

Ben Wu, Ying Guo, Jian Kang

2022Journal of the American Statistical Association11 citationsDOIOpen Access PDF

Abstract

Blind source separation (BSS) aims to separate latent source signals from their mixtures. For spatially dependent signals in high dimensional and large-scale data, such as neuroimaging, most existing BSS methods do not take into account the spatial dependence and the sparsity of the latent source signals. To address these major limitations, we propose a Bayesian spatial blind source separation (BSP-BSS) approach for neuroimaging data analysis. We assume the expectation of the observed images as a linear mixture of multiple sparse and piece-wise smooth latent source signals, for which we construct a new class of Bayesian nonparametric prior models by thresholding Gaussian processes. We assign the vMF priors to mixing coefficients in the model. Under some regularity conditions, we show that the proposed method has several desirable theoretical properties including the large support for the priors, the consistency of joint posterior distribution of the latent source intensity functions and the mixing coefficients, and the selection consistency on the number of latent sources. We use extensive simulation studies and an analysis of the resting-state fMRI data in the Autism Brain Imaging Data Exchange (ABIDE) study to demonstrate that BSP-BSS outperforms the existing method for separating latent brain networks and detecting activated brain activation in the latent sources.

Topics & Concepts

Prior probabilityBlind signal separationComputer scienceBayesian probabilityLatent variablePattern recognition (psychology)Artificial intelligencePosterior probabilityMixture modelComputer networkChannel (broadcasting)Blind Source Separation TechniquesFunctional Brain Connectivity StudiesSpectroscopy and Chemometric Analyses