A hierarchical independent component analysis model for longitudinal Neuroimaging studies
Yikai Wang, Ying Guo

TL;DR
This paper introduces a novel hierarchical longitudinal ICA model (L-ICA) for analyzing repeated neuroimaging data, enabling more accurate detection of brain network changes over time and disease progression.
Contribution
The paper develops a new L-ICA framework with subject-specific effects and efficient EM algorithms, advancing longitudinal neuroimaging analysis.
Findings
L-ICA improves estimation of brain network changes over time.
Application to ADNI2 reveals insights into Alzheimer’s disease progression.
The method outperforms existing ICA approaches in longitudinal settings.
Abstract
In recent years, longitudinal neuroimaging study has become increasingly popular in neuroscience research to investigate disease-related changes in brain functions. In current neuroscience literature, one of the most commonly used tools to extract and characterize brain functional networks is independent component analysis (ICA). However, existing ICA methods are not suited for modelling repeatedly measured imaging data. In this paper, we propose a novel longitudinal independent component model (L-ICA) which provides a formal modeling framework for extending ICA to longitudinal studies. By incorporating subject-specific random effects and visit-specific covariate effects, L-ICA is able to provide more accurate estimates of changes in brain functional networks on both the population- and individual-level, borrow information across repeated scans within the same subject to increase…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Blind Source Separation Techniques · Neural dynamics and brain function
