Home            Contact us            FAQs
    
      Journal Home      |      Aim & Scope     |     Author(s) Information      |      Editorial Board      |      MSP Download Statistics

     Research Journal of Applied Sciences, Engineering and Technology

    Abstract
2013(Vol.5, Issue:24)
Article Information:

Independent Component Analysis of Functional Magnetic Resonance Imaging (fMRI) Data: A simple Approach

Amir, A. Khaliq, I.M. Qureshi, Ihsanulhaq and Jawad A. Shah
Corresponding Author:  Amir 
Submitted: August 17, 2012
Accepted: September 08, 2012
Published: May 30, 2013
Abstract:
Independent Component Analysis (ICA) separates spatial and temporal components of fMRI data which may consist of activation patterns, cardiac and respiratory tasks and other artifacts. In this study sources of (fMRI) data are separated using ICA based on simple fixed point iteration method and steepest ascent method. Both are the simplest methods used in optimization. However in this study complete matrix W (un-mixing matrix) is updated in each iteration instead of vector based updating of W. This makes the source separation process very fast. Simulated fMRI data is processed using the proposed method and the results are compared with other ICA approaches in terms of speed and accuracy.

Key words:  Blind source separation, fMRI, ICA, , , ,
Abstract PDF HTML
Cite this Reference:
Amir, A. Khaliq, I.M. Qureshi, Ihsanulhaq and Jawad A. Shah , . Independent Component Analysis of Functional Magnetic Resonance Imaging (fMRI) Data: A simple Approach. Research Journal of Applied Sciences, Engineering and Technology, (24): 5494-5502.
ISSN (Online):  2040-7467
ISSN (Print):   2040-7459
Submit Manuscript
   Information
   Sales & Services
Home   |  Contact us   |  About us   |  Privacy Policy
Copyright © 2024. MAXWELL Scientific Publication Corp., All rights reserved