Title: The General Linear Model and Statistical Parametric Mapping
1Experimental Design
Course Methods and models for fMRI data
analysis in neuroeconomics Christian
Ruff Laboratory for Social and Neural Systems
Research IEW, University of Zurich ICN FIL,
University College London With thanks to Rik
Henson Daniel Glaser
2Statistical parametric map (SPM)
Design matrix
Image time-series
Kernel
Realignment
Smoothing
General linear model
Gaussian field theory
Statistical inference
Normalisation
p lt0.05
Template
Parameter estimates
3Overview
- Categorical designs
- Subtraction - Pure insertion, evoked /
differential responses - Conjunction - Testing multiple hypotheses
- Parametric designs
- Linear - Adaptation, cognitive dimensions
- Nonlinear - Polynomial expansions, neurometric
functions - Factorial designs
- Categorical - Interactions and pure insertion
- Parametric - Linear and nonlinear interactions
- - Psychophysiological Interactions
4Cognitive Subtraction
- Aim
- Neural structures computing process P?
- Procedure
- Contrast Task with P control task without
P P - the critical assumption of pure insertion
5Cognitive Subtraction Baseline-problems
- ? Several components differ !
6Differential event-related fMRI
Evoked responses
SPMF testing for evoked responses
Parahippocampal responses to words
- Baseline here corresponds to session mean
(and thus processing during rest) - Null events or long SOAs essential for
estimation - Cognitive interpretation hardly possible,
but useful to define regions generally involved
in task
BOLD EPI fMRI at 2T, TR 3.2sec. Words presented
every 16 secs (i) studied words or (ii) new words
7Differential event-related fMRI
Differential responses
SPMF testing for evoked responses
Parahippocampal responses to words
SPMF testing for differences
studied words
new words
BOLD EPI fMRI at 2T, TR 3.2sec. Words presented
every 16 secs (i) studied words or (ii) new words
Peri-stimulus time secs
8A categorical analysis
Experimental design Word generation G Word
repetition R R G R G R G R G R G R G
G - R Intrinsic word generation under
assumption of pure insertion
9Overview
- Categorical designs
- Subtraction - Pure insertion, evoked /
differential responses - Conjunction - Testing multiple hypotheses
- Parametric designs
- Linear - Adaptation, cognitive dimensions
- Nonlinear - Polynomial expansions, neurometric
functions - Factorial designs
- Categorical - Interactions and pure insertion
- Parametric - Linear and nonlinear interactions
- - Psychophysiological Interactions
10Conjunctions
- One way to minimise the baseline/pure insertion
problem is to isolate the same process by two or
more separate comparisons, and inspect the
resulting simple effects for commonalities - A test for such activation common to several
independent contrasts is called Conjunction - Conjunctions can be conducted across a whole
variety of different contexts - tasks
- stimuli
- senses (vision, audition)
- etc.
- But the contrasts entering a conjunction have to
be truly independent!
11Conjunctions
Example Which neural structures support object
recognition, independent of task (naming vs
viewing)?
Visual Processing V Object Recognition
R Phonological Retrieval P (Object - Colour
viewing) (Object - Colour naming) ? 1 -1 0
0 0 0 1 -1 ? R,V - V P,R,V -
P,V R R R (assuming no
interaction RxP see later)
12Conjunctions
13Two flavours of inference about conjunctions
- SPM8 offers two general ways to test the
significance of conjunctions - Test of global null hypothesis Significant set
of consistent effects - ? which voxels show effects of similar
direction (but not necessarily individual
significance) across contrasts? - Test of conjunction null hypothesis Set of
consistently significant effects - ? which voxels show, for each specified
contrast, effects gt threshold? - Choice of test depends on hypothesis and
congruence of contrasts the global null test is
more sensitive (i.e., when direction of effects
hypothesised)
Friston et al. (2005). Neuroimage,
25661-7. Nichols et al. (2005). Neuroimage,
25653-60.
14Overview
- Categorical designs
- Subtraction - Pure insertion, evoked /
differential responses - Conjunction - Testing multiple hypotheses
- Parametric designs
- Linear - Adaptation, cognitive dimensions
- Nonlinear - Polynomial expansions, neurometric
functions - Factorial designs
- Categorical - Interactions and pure insertion
- Parametric - Linear and nonlinear interactions
- - Psychophysiological Interactions
15Parametric Designs General Approach
- Parametric designs approach the baseline problem
by - Varying a stimulus-parameter of interest on a
continuum, in multiple (ngt2) steps... - ... and relating blood-flow to this parameter
- Flexible choice of tests for such relations
- Linear
- Nonlinear Quadratic/cubic/etc.
- Data-driven (e.g., neurometric functions)
- Model-based
16A linear parametric contrast
Linear effect of time
17A nonlinear parametric contrast
The nonlinear effect of time assessed with the
SPMT
18Nonlinear parametric design matrix
E.g, F-contrast 0 1 0 on Quadratic Parameter gt
Inverted U response to increasing word
presentation rate in the DLPFC
Polynomial expansion f(x) b1 x b2 x2
... up to (N-1)th order for N levels
(SPM8 GUI offers polynomial expansion as option
during creation of parametric modulation
regressors)
19Parametric Designs Neurometric functions
versus
Rees, G., et al. (1997). Neuroimage, 6 27-78
Inverted U response to increasing word
presentation rate in the DLPFC
Rees, G., et al. (1997). Neuroimage, 6 27-78
20Parametric Designs Neurometric functions
- Coding of tactile stimuli in Anterior Cingulate
Cortex - Stimulus (a) presence, (b) intensity, and (c)
pain intensity - Variation of intensity of a heat stimulus applied
to the right hand - (300, 400, 500, and 600 mJ)
Büchel et al. (2002). The Journal of
Neuroscience, 22 970-6
21Parametric Designs Neurometric functions
Büchel et al. (2002). The Journal of
Neuroscience, 22 970-6
22Parametric Designs Model-based regressors
Seymour, ODoherty, et al. (2004). Nature.
23Overview
- Categorical designs
- Subtraction - Pure insertion, evoked /
differential responses - Conjunction - Testing multiple hypotheses
- Parametric designs
- Linear - Adaptation, cognitive dimensions
- Nonlinear - Polynomial expansions, neurometric
functions - Factorial designs
- Categorical - Interactions and pure insertion
- Parametric - Linear and nonlinear interactions
- - Psychophysiological Interactions
24Factorial designs Main effects and Interactions
- Main effect of task (A1 B1) (A2 B2)
- Main effect of stimuli (A1 A2) (B1 B2)
- Interaction of task and stimuli Can show a
failure of pure insertion - (A1 B1) (A2 B2)
interaction effect (Task x Stimuli)
Colours Objects
Colours Objects
Viewing
Naming
25Interactions and pure insertion
Components Visual processing V Object
recognition R Phonological retrieval P Interactio
n RxP Interaction (name object - colour) -
(view object - colour) ? 1 -1 0 0 - 0 0 1
-1 P,R,V RxP - P,V - R,V - V
RxP
Object-naming-specific activations
adjusted rCBF
Context no naming naming
26Interactions and pure insertion
Interactions cross-over and simple We
can selectively inspect our data for one or the
other by masking during inference
A1 A2 B1 B2
A1 A2 B1 B2
27Overview
- Categorical designs
- Subtraction - Pure insertion, evoked /
differential responses - Conjunction - Testing multiple hypotheses
- Parametric designs
- Linear - Adaptation, cognitive dimensions
- Nonlinear - Polynomial expansions, neurometric
functions - Factorial designs
- Categorical - Interactions and pure insertion
- Parametric - Linear and nonlinear interactions
- - Psychophysiological Interactions
28Linear Parametric Interaction
A (Linear) Time-by-Condition Interaction (Genera
tion strategy?)
Contrast 5 3 1 -1 -3 -5 ? -1 1 -5 5 -3 3
-1 1 1 -1 3 -3 5 -5
29Nonlinear Parametric Interaction
- Factorial Design with 2 factors
- Gen/Rep (Categorical, 2 levels)
- Time (Parametric, 6 levels)
- Time effects modelled with both linear and
quadratic components
30Overview
- Categorical designs
- Subtraction - Pure insertion, evoked /
differential responses - Conjunction - Testing multiple hypotheses
- Parametric designs
- Linear - Adaptation, cognitive dimensions
- Nonlinear - Polynomial expansions, neurometric
functions - Factorial designs
- Categorical - Interactions and pure insertion
- Parametric - Linear and nonlinear interactions
- - Psychophysiological Interactions
31Psycho-physiological Interaction (PPI)
Parametric, factorial design, in which one factor
is a psychological context ...and the other is
a physiological source (activity extracted from
a brain region of interest)
32Psycho-physiological Interaction (PPI)
Parametric, factorial design, in which one factor
is a psychological context ...and the other is
a physiological source (activity extracted from
a brain region of interest)
33Psycho-physiological Interaction (PPI)
V1 activity
time
attention
V5 activity
no attention
Attentional modulation of V1 - V5 contribution
V1 activity
34Psycho-physiological Interaction (PPI)
0 0 1
V1 activity
time
attention
V5 activity
no attention
V1 activity
35Psycho-physiological Interaction (PPI)
SPMZ
Stimuli Faces or objects
Faces
PPC
IT
adjusted rCBF
Objects
medial parietal activity
36Psycho-physiological Interaction (PPI)
- PPIs tested by a GLM with form
- y (V1?A).b1 V1.b2 A.b3 e c 1 0 0
- However, the interaction term of interest, V1?A,
is the product of V1 activity and Attention block
AFTER convolution with HRF - We are really interested in interaction at neural
level, but - (HRF ? V1) ? (HRF ? A) ? HRF ? (V1 ? A)
- (unless A low frequency, e.g., blocked mainly
problem for event-related PPIs) - SPM5 can effect a deconvolution of physiological
regressors (V1), before calculating interaction
term and reconvolving with the HRF the PPI
button
37Overview
- Categorical designs
- Subtraction - Pure insertion, evoked /
differential responses - Conjunction - Testing multiple hypotheses
- Parametric designs
- Linear - Adaptation, cognitive dimensions
- Nonlinear - Polynomial expansions, neurometric
functions - Factorial designs
- Categorical - Interactions and pure insertion
- Parametric - Linear and nonlinear interactions
- - Psychophysiological Interactions
38Mixed Designs
- Simultaneously measuring effects that are
- transient (item- or event-related)
- sustained (state- or epoch-related)
- What is the best design to estimate both?
39A bit more formallyEfficiency
- Sensitivity, or efficiency, e
- e(c,X) cT (XTX)-1 c -1
- XTX represents covariance of regressors in design
matrix - High covariance increases elements of (XTX)-1
- gt So, when correlation between regressors is
high, - sensitivity to each regressor alone is low
40Item effect only
Blocks 40s, Fixed SOA 4s
Efficiency 565 (Item Effect)
OK
41Item and state effects
Blocks 40s, Fixed SOA 4s
Efficiency 16 (Item Effect)
Correlation .97
Not good
42Item and state effects
Blocks 40s, Randomised SOAmin 2s
Efficiency 54 (Item Effect)
Correlation .78
Better!
43Mixed design example Chawla et al. (1999)
- Visual stimulus dots periodically changing in
colour or motion - Epochs of attention to 1) motion, or 2) colour
- Events are target stimuli differing in motion or
colour - Randomised, long SOAs between events (targets) to
decorrelate epoch and event-related covariates - Attention modulates BOTH
- 1) baseline activity (state-effect, additive)
- 2) evoked response (item-effect, multiplicative)
44Mixed design example Chawla et al. (1999)
Mixed Designs (Chawla et al 1999)