Joint, Partially-joint, and Individual Independent Component Analysis in Multi-Subject fMRI Data

09/09/2019
by   Mansooreh Pakravan, et al.
0

Objective: Joint analysis of multi-subject brain imaging datasets has wide applications in biomedical engineering. In these datasets, some sources belong to all subjects (joint), a subset of subjects (partially-joint), or a single subject (individual). In this paper, this source model is referred to as joint/partially-joint/individual multiple datasets multidimensional (JpJI-MDM), and accordingly, a source extraction method is developed. Method: We present a deflation-based algorithm utilizing higher-order cumulants to analyze the JpJI-MDM source model. The algorithm maximizes a cost function which leads to an eigenvalue problem solved with a subspace iteration method. Furthermore, we introduce the JpJI-feature which indicates the spatial shape of each source and the amount of its jointness with other subjects. We use this feature to determine the type of sources. Results: We evaluate our algorithm by analyzing simulated data and two real functional magnetic resonance imaging (fMRI) datasets. In our simulation study, we will show that the proposed algorithm determines the type of sources with an accuracy of 95 2-class and 3-class clustering scenarios, respectively. Furthermore, our algorithm extracts meaningful joint and partially-joint sources from the two real datasets, which are consistent with the existing neuroscience studies. Conclusion: Our results in analyzing the real datasets reveal that both datasets follow the JpJI-MDM source model. This source model improves the accuracy of source extraction methods developed for multi-subject datasets. Significance: The proposed joint blind source separation algorithm is robust and avoids parameters which are difficult to fine-tune.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/24/2009

CanICA: Model-based extraction of reproducible group-level ICA patterns from fMRI time series

Spatial Independent Component Analysis (ICA) is an increasingly used dat...
research
05/14/2019

A Graph-Based Decoding Model for Incomplete Multi-Subject fMRI Functional Alignment

As a successful application of multi-view learning, Hyperalignment and S...
research
08/29/2018

Group-Representative Functional Network Estimation from Multi-Subject fMRI Data via MRF-based Image Segmentation

We propose a novel two-phase approach to functional network estimation o...
research
10/19/2016

Enhancing ICA Performance by Exploiting Sparsity: Application to FMRI Analysis

Independent component analysis (ICA) is a powerful method for blind sour...
research
10/03/2019

Multi-subject MEG/EEG source imaging with sparse multi-task regression

Magnetoencephalography and electroencephalography (M/EEG) are non-invasi...
research
11/11/2019

Multidataset Independent Subspace Analysis with Application to Multimodal Fusion

In the last two decades, unsupervised latent variable models—blind sourc...
research
08/16/2016

Enabling Factor Analysis on Thousand-Subject Neuroimaging Datasets

The scale of functional magnetic resonance image data is rapidly increas...

Please sign up or login with your details

Forgot password? Click here to reset