introduction to fmri
TRANSCRIPT
The magnetic field
• MRI scanners create strong magnetic fields (between 1.5 and 7 Tesla)
• 1 Tesla = 10,000 Gauss
• The strength of the magnetic field of the earth ranges from 0.25 -0.65 Gauss
Risks associated with the magnetic field
• magnetic field can pick up even large magnetic objects and pull them into
the scanner bore with great velocity
• Rotation of metal objects that are located in the body
• Malfunction of electronic devices (e.g. pacemakers)
• Electric burns can arise from electrically conductive objects in the magenetic
field
MRI physics (strongly oversimplified)
• a person goes into a strong magnet
• atomic nuclei reorient themselves along the magnetic field
• a radiofrequency pulse (1) flips the nuclei from the oriented position and (2)
synchronizes the precession of their spin axis
• a receiver measures the time until the nuclei return to their original
orientation (structural scans) or desynchronize (functional scans)
outside scanner inside scanner
precession
What is measured in fMRI?
• neurons consume oxygen and nutrients
• increased neural activity requires increased
supply of oxygen
• oxygen is bound to hemoglobin
(oxyhemoglobin vs. de-oxyhemoglobin)
• to supply neurons with oxygen and glucose,
blood flow is increased locally
• the local increase in blood flow leads to a
displacement of de-oxyhemoglobin
• MR signal is higher for oxygenated compared
to de-oxygenated blood
the blood oxygen level dependent (BOLD) response
300 10 20
0
time [s]
peak
undershoot
hemodynamic
lag
stimulus
…
1 Volume
= 1 image of entire brain
(in this case 36 horizontal slices)
1 Run (147 TRs)
TR* 1TR 2
TR 2 TR 147
*TR = Time of Repetition = time it takes to acquire one volume
4-D datasets
Outline of a scan session
1 Task instruction + safety screening
2 Put subject in the scanner
3 Localizer scan
4 Anatomical scan
5 Shimming
6 Test scan
7 Data collection
8 [Field map]
Face/Scene Localizer
scenes faces scrambled scenes scrambled faces
Stimuli presented in blocked design
Task: 1-back task
Beyond faces and scenes:
The FFA and PPA as ROIs for studying other cognitive functions
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FFA PPA
attend faces
attend scenes
Attend faces:
female vs. male
Attend scenes:
indoor vs. outdoor
Attention enhances responses to task-relevant information!
Identical physical stimulation during
the two attention conditions
Before we get started …
1. Log on to a Lab PC using the VMUser account
Username: .\VMUser
Password: @psychLAB
2. Open VMWare Player
3. Within VMWare Player, open FSLVm6_64
Preprocessing
1 Slice timing correction
Correct for the timing difference in the sequential acquisition of slices
2 Motion correction
Correct for subject’s head movements
3 Spatial smoothing
Increase signal-to-noise ratio
4 Temporal smoothing
Remove unwanted temporal components
5 Registration
Align functional to anatomical data
Align functional and anatomical data with a standard space (“Normalization”)
Slice-timing correction
• In our experiment we measured one
functional image (volume) of the brain every 2
seconds
• Each volume was acquired in 36 interleaved
horizontal slices
• This means that every slice was acquired at a
different time during the 2s TR
Sp
ace
[slic
es]
time [s]
volume (TR) volume (TR)
1
36
18
Slice-timing correction
To correct for this difference in timing, time-
series in each slice is phase-shifted so that it
appears as if all slices were acquired at the
same time
Sp
ace
[slic
es]
time [s]
volume (TR) volume (TR)
1
36
18
Motion correction
• Data are acquired in absolute spatial coordinates. If head movement occurs,
the time course of a voxel is derived from different parts of the brain
• Head movement is often correlated with the task
• Head motion decreases statistical power
before movement after movement
Dealing with head motion
During data acquisition
• Tell participants to be still in the scanner
• Head restraints
During preprocessing
• Remove time points with excessive movement
• Spatially align functional data to one reference image
• Adjust 6 parameters:
translational rotational
yaw pitch rollx, y, z
• Apply a Gaussian filter to effectively spread the intensity at each voxel to
neighboring voxels.
• Increases signal-to-noise ratio: blurring reduces high frequency noise while
retaining signal
Spatial smoothing
FWHM
= full width at
half maximum
before smoothingwith smoothing
FWHM 4mm
Temporal filtering
The MRI signal can contain unwanted temporal components:
• High-frequency noise
• Low-frequency drifts
Remove unwanted temporal components using filters
• High pass: remove frequencies below cut-off frequency
• Low pass: remove frequencies above cut-off frequency
rawfiltered
Normalization
Individual brains differ largely in size, form, and location of brain areas
Projecting data from different individual into a common standard space, allows
for
• combining data across subjects
• making comparisons across studies
Statistical analysis: regression
Core idea: observed data can be explained by a combination of weighted
regressors
Example: Explain miles per gallon (mpg) of a car, based on the car’s weight
and the driver’s height.
Observed data: mpg
Regressors: car’s weight, driver’s height
Weights: βcar’s weight = high; βdriver’s height = low
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1.4 1.6 1.8 2 2.2
mp
g
mp
g
Driver’s height [m]Car’s weight [t]
Regressors: timing of conditions combined with
assumptions about the shape of the BOLD
response
faces scenesscr scenes scr faces fixation scenesfixation
faces
scenes
scr(ambled) scenes
scr(ambled) faces
time
scr(ambled) scenes
scr(ambled) faces
faces scenesscr scenes scr faces fixation scenesfixation
faces
scenes
time
Regressors: timing of conditions combined with
assumptions about the shape of the BOLD
response
Regressors are combined into a single model
time
faces scenesscr scenes scr faces fixation scenesfixation
Regressors that account for a lot of variance in the
signal receive high beta values
time
faces scenesscr scenes scr faces fixation scenesfixation
model
data
weights