Title: A1259788553ZIVkM
1Blind Separation of sources in function MRI
Sequences
Presented By Eldad Klaiman Limor
Goldenberg Supervised By Michael Alex
Bronstein Dr. Michael Zibulevsky
The Kasher Contest - In memory of Yehoraz Kasher
2The Problem
- functional MRI
- Important tool for studying the human brain
activity. - High spatial resolution, flexibility,
harmlessness made it popular. - The BOLD technique produce an image of the
blood oxygenation level throughout the brain. - A sequence of scans is in a short period of time,
when the subject is asked to perform some task.
High oxygenation levels represent high activity
of the brain regions responsible for the task.
- Blind Source Separation
- Linear mixture of independent sources
- No a priori information is known about their
properties. - Blind Source Separation" the problem of
separating such sources. - There exist powerful tools to solve it.
- Focus on the approach of sparse representations,
which has proved its advantages in different
works in the field.
3fMRI-BSS Model
- Noise removal
- Identify Background
- Sparse Representation
4fMRI Simulation
- Background Brain Image.
- Spatial Function
- Hemodynamics
- Gaussian Noise
5fMRI simulator GUI
6fMRI Simulator - Results
fMRI frames
Hemodynamics
7Preprocessing Sparse Representations
- Wavelet Packets is used to create sparse
images. - Best Node is selected by sparseness Criteria
- Scatter plot of resulting images
- chasing the illusive X
8Geometric Separation
- Clustering - FCM.
- Angle Histogram.
9Separation Example
Source 1 3 spatial components
Source 2 2 spatial components
10Issues Encountered
- Preprocessing Zero-mean, LPF, etc.
- Sparseness Criteria Shannon entropy selected.
- Stability / Parametric Sensitivity thresholds.
11Principal Component Analysis
- Problems of high ordermore mixtures than
sources - Problem dimension reduced using PCA
-
PRINCOMP( )
12PCA Revelations
13ICA - Infomax
- Artificial Neural Network Viewpoint,maximize
output Entropy. - InfoMax ICA Matlab Toolbox(courtesy of Scott
Makeig Co.) - Preliminary Results can be obtained without
mixture preprocessing.
14ICA Separation Example
15ICA Notes
- Sign and Order limitations.
- Improved robustness and quality, compared to
geometric separation. - In most cases, the sparse representation improved
the quality of separation.
16Application on the Real Thing
17Real fMRI Issues
False Artifact Sources created due to head
movement, Noise.
Background separated from activity sources.
18Conclusions
- Achieved good results by geometric and ICA
separation. - ICA robustness, quality.
- PCA model selection, added values.
- Potential as fMRI analysis tool.
- Quick, low cost.
- Exact knowledge of simulation flow - not needed.
- Not relying on high time resolution.
19Further Progress
- A new horizon for fMRI-ICA academic research and
projects. - A friendly and enhanced fMRI-ICA application
was developed for simple, user-oriented
application of algorithm. - Experimental application of the separation
algorithm on LORETA (EEG-CAT).
20Thanks to
- Nethaniels Brain
- Dr. Michael Zibulevsky
- Johanan Erez and the Lab team
- Michael Alex Bronstein
- Anat Grinfeld
21Sparseness Criteria
- L1
- L0
- Shannon Entropy
- Clusters
Back