Eric Egolf - PowerPoint PPT Presentation

1 / 9
About This Presentation
Title:

Eric Egolf

Description:

Eric Egolf. Functional Connectivity Toolbox. Year Long Project. Project Advisor: ... of Functional Connectivity. fMRI measures brain ... Connectivity ... – PowerPoint PPT presentation

Number of Views:130
Avg rating:3.0/5.0
Slides: 10
Provided by: starbase
Category:

less

Transcript and Presenter's Notes

Title: Eric Egolf


1
  • Eric Egolf
  • Functional Connectivity Toolbox
  • Year Long Project
  • Project Advisor Professor Armen

2
Introduction
  • Overview of fMRI, Functional Connectivity
  • Project Description
  • Algorithms and Implementations
  • Timeline

3
Overview of Functional Connectivity
  • fMRI measures brain activity. Measuring activity
    during cognitive tasks gives more knowledge about
    the brain.
  • Applying Mathematical Algorithms that measure
    Functional Connectivity, on fMRI data, detects
    concurrent brain activity.
  • A Voxel is a unit of measurement in the brain
  • fMRI data gets processed and outputs
    4D(x,y,z,t) images.

4
Project Description
  • Algorithms for Functional Connectivity
  • Correlation, ICA, Phase Relationships, Mutual
    Information
  • Implemented in Matlab
  • Use existing modules, platform independent,
    matrix library
  • Universal Input and Output Types

3D images
Toolbox (Matlab)
4D images
Graphical Displays
fMRI data
Processing
5
Correlation
  • Correlation Coefficient
  • Result Matrix of Voxels vs. Voxels
  • Element in Matrix is a voxel correlated to
    another voxel through time
  • Problems
  • Size of Matrix
  • (110592 110592 voxels)
  • Interpreting Results
  • Optimize Later

6
Independent Components Analysis
  • ICA is a method of Blind Source Signal Separation
  • Only knowing Mixed Signals extract Original
    Signals
  • Applied to fMRI(extracts two parts)
  • 1) Time course of voxel intensity
  • 2) Component or voxels in brain that follow this
    time course
  • Extracts Multiple (ComponentsTime Courses)
  • View on horizontal slices of the brain

Mixed Signals
Original Signals
7
  • Horizontal Slices
  • 3 components overlaid
  • on subjects brain
  • Each component is made
  • up of voxels above a
  • Threshold that are
  • Synchronized with a
  • time course
  • 1 components time
  • course

8
Progress with ICA
  • Extract time courses and components, store as 3D
    image.
  • Overlay multiple components on structural image.
  • Sort components based on time courses
    correlation to a reference function.
  • GUI.

9
Timeline
  • January Finish Single Subject ICA
  • Febuary ICA Group Analysis
  • March Optimize Correlation, Mutual Information
    as an Algorithm
  • April Group Analysis
Write a Comment
User Comments (0)
About PowerShow.com