Title: Biophysics of BOLD and common image artefacts
1Biophysics of BOLD and common image artefacts
- Overview
- Biophysics of BOLD signal
- - Neural gt Hemodynamic gt MRI
- Complications at each level
- - and what to do about them
2Stimulus to signal
Arthurs Boniface (2002)
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4What aspect of neuronal activity determines BOLD
response??
- LFP (Logothetis et al, 2001)
- Simultaneous BOLD FMRI electrophysiological
recording - Measured Local Field Potentials (pre-synaptic,
input) and Multi Unit Activity (spiking, output) - Both provided reasonable fit to BOLD activity,
but LFPs better - Energy use/oxygen consumption (Hoge et al, 1999)
- Used MRI to measure CBF oxygenation
- Found linear relationship
- Neurotransmitter (Attwell Iadecola, 2002)
- Assessment of energy use by different processes
- Spiking very energy expensive
- Most used by postsynaptic currents action
potentials - Argue hemodynamic response is driven by
neurotransmitter signalling and not local energy
use - Glutamate/GABA?
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6Hemodynamic response (HDR)
- Increase in volume
- Increase in volume throughout system, from
arterioles to capillaries, venules veins - Fastest and greatest response in arterioles
(Vanzetta, Hildenshen Grinwald, 2005) - Large increase in flow
- Oxygenation
- Initial de-oxygenation in capillaries (Vanzetta
et al, 2005) - Then, flow increase leads to a increase in
oxygenation relative to the baseline state (i.e.,
OEF decreases, Ogawa et al, 1990 Bandettini et
al, 1997)
7Influences on spatial distribution of HDR
- Spatial characteristics influenced by
- Neurovascular coupling (Malonek Grinvald, 1995)
- Vascular plumbing structure
- Intracortical vessels
- Pial network
- Larger vessels
- Size of region activated (Turner, 2002)
- Larger regions may give signal from veins further
away
8Influences on temporal profile of HDR
- Temporal characteristics influenced by
- By neurovascular coupling in arterioles/capillarie
s - Flow times
- Function of vessel size
- Blood velocity proportional to radius much of
delay in small vessels - Mixing due to laminar flow within vessels (de
Zwart, 2005) - Should include diffusion (Parrot)
- Other effects (e.g., vessel size dependence of
post-stimulus adaptation Mandeville et al,
1999 Yacoub et al, 2006)
9The Balloon Model
Similar elements incorporated into SPMs DCM
forward model
Buxton, Uludag, Dubowitz, Liu (2004)
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11Hemodynamic-MRI coupling
- HDR affects MRI signal through several mechanisms
(Hoogenraad et al, 2001) - Extravascular reduced field gradients around
venules veins - Reduced deoxygenation causes magnetic property
(susceptibility) of blood to become more similar
to surrounding tissue - Reduced field gradients in GM CSF
- Intravascular change in T2
- Reduced phase mismatch between signal from inside
and outside venules veins - Change in blood volume
- Affected by parameters of MR acqusition
- Field strength (higher field more sensitivity,
particularly to smaller vessels/capillaries)
(Haacke, 1994 Yacoub et al, 2003) - Gradient echo vs. spin echo latter insensitive
to large vessels less signal, but more
spatially specific (Lee et al, 1999 Zhao et al,
2006)
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14Non-linearities in the BOLD signal
measured
linear
BOLD Response
Signal
Stimulus timing
0.25 s
0.5 s
1 s
2 s
20 s
Brief stimuli produce larger responses than
expected Degree of non-linearity varies across
space Neural in origin
Slide adapted from Bandettini Birn, Saad
Bandettini (2001)
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17Vascular artefacts
- Vascular structure can affect signal at many
levels - Vascular signal
- Larger in magnitude
- More noisy
- Group level
- Large variability in venous structure reduces
chance of bias - May be more important in case studies or MVPA/
functional localiser studies
Cusack et al (in preparation)
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19Fields should be flat
- MRI scanners apply a strong magnetic field
- 3 Tesla at the WBIC
- Ideally, field should be homogeneous
- Easy to arrange when it is empty, but ruined as
soon as a head is put in - Different materials act to strengthen (para) or
weaken (dia) magnetic fields
With Shaihan Malik
200
0.27
-0.27
Field strength relative to 3 Tesla(parts per
million)
21Tackling inhomogeneneity artefacts
- Distortion
- Optimise acquisition
- Acquire fieldmaps undistort
- Distortion by movement interaction
- Put movement parameters into model
- Use Realign unwarp (Andersson, 2001)
- Dropout
- Optimise acquisition parameters (e.g., TE, slice
orientation, voxel size) - Z-shimming
- Use spin echo (Schwarzbauer)
- Passive shimming (Wilson, Jezzard and colleagues
Cusack et al, 2004) - Choose the right subjects
22Fieldmap undistortion evaluation by eye
UndistortedEPI mean
UndistortedEPI mean
Structural
EPI mean
Structural
EPI mean
Cusack, Brett Osswald (2004)
23Quantitative evaluation - shape match to
structural scan - Measure similarity in shapes
between structural scan and EPIs before and after
undistortion - Use mutual information statistic
Cusack, Brett Osswald (2004)
24Overlap across subjects
Cusack, Brett Osswald (2004)
25Undistortion on data from Siemens Trio
- Shimming apply corrective field gradients
- Much better on modern machines
- Higher order shims optimised automatically
- Shims only optimised for volume being acquired in
EPI - Acquire smaller volumes
- Undistortion most important for regions near
inhomogeneities
26Comparative studies
- Watch out when comparing to other models
- Field inhomogeneities vary dramatically
- Human vs. sphinx vs. supine
27Passive shimming
EPI
BOLD
Wilson colleagues, FMRIB, Oxford Cusack et al
(2005)
28Optimising parameters to reduce dropout
From Rik Henson
29Summary
- BOLD FMRI involves a complicated set of couplings
- Be careful when interpreting effects, or
comparing FMRI with other imaging modalities - It can fail in many ways
- Optimise acquisition and analysis
- Perform proper quality control