Probabilistic Independent Component Analysis for Functional Magnetic Resonance Imaging
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- 6 February 2004
- journal article
- research article
- Published by Institute of Electrical and Electronics Engineers (IEEE) in IEEE Transactions on Medical Imaging
- Vol. 23 (2) , 137-152
- https://doi.org/10.1109/tmi.2003.822821
Abstract
We present an integrated approach to probabilistic independent component analysis (ICA) for functional MRI (FMRI) data that allows for nonsquare mixing in the presence of Gaussian noise. In order to avoid overfitting, we employ objective estimation of the amount of Gaussian noise through Bayesian analysis of the true dimensionality of the data, i.e., the number of activation and non-Gaussian noise sources. This enables us to carry out probabilistic modeling and achieves an asymptotically unique decomposition of the data. It reduces problems of interpretation, as each final independent component is now much more likely to be due to only one physical or physiological process. We also describe other improvements to standard ICA, such as temporal prewhitening and variance normalization of timeseries, the latter being particularly useful in the context of dimensionality reduction when weak activation is present. We discuss the use of prior information about the spatiotemporal nature of the source processes, and an alternative-hypothesis testing approach for inference, using Gaussian mixture models. The performance of our approach is illustrated and evaluated on real and artificial FMRI data, and compared to the spatio-temporal accuracy of results obtained from classical ICA and GLM analyses.Keywords
This publication has 39 references indexed in Scilit:
- Bayesian source separation for reference function determination in fMRIMagnetic Resonance in Medicine, 2001
- Cortex-based independent component analysis of fMRI time-seriesNeuroImage, 2001
- Inferring the eigenvalues of covariance matrices from limited, noisy dataIEEE Transactions on Signal Processing, 2000
- Generalizable Patterns in Neuroimaging: How Many Principal Components?NeuroImage, 1999
- Mixture model mapping of brain activation in functional magnetic resonance imagesHuman Brain Mapping, 1998
- Functional Data AnalysisPublished by Springer Nature ,1997
- SUSAN—A New Approach to Low Level Image ProcessingInternational Journal of Computer Vision, 1997
- Statistical methods of estimation and inference for functional MR image analysisMagnetic Resonance in Medicine, 1996
- Modeling by shortest data descriptionAutomatica, 1978
- Fitting autoregressive models for predictionAnnals of the Institute of Statistical Mathematics, 1969