Independent component analysis of fMRI data: a model based approach for artifacts separation
Conference Paper
Publication Date:
2003
abstract:
Independent Component Analysis applied to functional magnetic resonance imaging is a promising technique for non invasive study of brain function. In this work we examine the behavior of spatial ICA decomposition applying ICA to simulated data sets. We study the ICA performances in presence of movement correlated and uncorrelated with activation task, taking also into account the presence of rician distributed noise. We show that the presence of image artifacts due to simulated subject movement and MRI noise greatly affects the method ability to reveal the activation, especially in presence of movement correlated with activation task. Spatial smoothing of data, before ICA, seems to overcome this problem, allowing to retrieve the original sources also in presence of both correlated movement and high noise level.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Independent Component Analysis
List of contributors:
Landini, Luigi; Santarelli, MARIA FILOMENA
Published in: