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Mixture Components Inference for Sparse Regression: Introduction and Application for Estimation of Neuronal Signal from fMRI BOLD

Authors :
Pidnebesna, Anna
Fajnerova, Iveta
Horacek, Jiri
Hlinka, Jaroslav
Source :
Applied Mathematical Modelling, Volume 116, 2023, Pages 735-748, ISSN 0307-904X
Publication Year :
2022

Abstract

Sparse linear regression methods including the well-known LASSO and the Dantzig selector have become ubiquitous in the engineering practice, including in medical imaging. Among other tasks, they have been successfully applied for the estimation of neuronal activity from functional magnetic resonance data without prior knowledge of the stimulus or activation timing, utilizing an approximate knowledge of the hemodynamic response to local neuronal activity. These methods work by generating a parametric family of solutions with different sparsity, among which an ultimate choice is made using an information criteria. We propose a novel approach, that instead of selecting a single option from the family of regularized solutions, utilizes the whole family of such sparse regression solutions. Namely, their ensemble provides a first approximation of probability of activation at each time-point, and together with the conditional neuronal activity distributions estimated with the theory of mixtures with varying concentrations, they serve as the inputs to a Bayes classifier eventually deciding on the verity of activation at each time-point. We show in extensive numerical simulations that this new method performs favourably in comparison with standard approaches in a range of realistic scenarios. This is mainly due to the avoidance of overfitting and underfitting that commonly plague the solutions based on sparse regression combined with model selection methods, including the corrected Akaike Information Criterion. This advantage is finally documented in selected fMRI task datasets.

Details

Database :
arXiv
Journal :
Applied Mathematical Modelling, Volume 116, 2023, Pages 735-748, ISSN 0307-904X
Publication Type :
Report
Accession number :
edsarx.2203.07209
Document Type :
Working Paper
Full Text :
https://doi.org/10.1016/j.apm.2022.11.034