Title: Functional neuroimaging and brain connectivity
1Functional neuroimaging and brain connectivity
- A set of slides used during a discussion at the
Centre for Speech and Language April 2003 - Many of the ideas discussed here are covered in
greater detail, and with far greater elegance and
erudition, by the group led by Karl Friston at
the Institute of Cognitive Neuroscience,
www.fil.ion.ucl.ac.uk. - I also draw attention to the excellent early
papers by McIntosh and Gonzales-Lima (Hum. Brain
Mapp., 1994)
2Functional neuroimaging and brain connectivity
- Why bother?
- Brain adheres to certain principles of functional
segregation but these are insufficient to
describe its operations satisfactorily - A description of regional patterns of activity in
terms of causal relationships with other brain
regions obviates some of the theoretical
constraints in the simple brain mapping approach - A better model for some brain disorders?
3Functional Connectivity vs. Effective Connectivity
- Functional Connectivity
- the temporal correlation of spatially remote
neurophysiological events - Effective Connectivity
- The influential relationship between one brain
region and another
4An observed inter-regional correlation
r
These two regions are functionally connected. The
observation of correlation is an observation of
functional connectivity. They may be Effectively
connected. The observation of correlation is
compatible with this but also with other
possibilities.
5Why might we observe functional connectivity?
Because of effective connectivity i.e. a uni-or
bi-directional influential (effective)
relationship
6Why might we observe functional connectivity?
No effective connectivity between the two
regions. Correlation arises due to the common
influence of a third factor (region or task)
7How do we represent connectivity?
Functional
Data-led
- Descriptive
- Correlative
- Psychophysiological interaction/physiophysiologica
l interaction - Path analysis/structural equation modelling/DCM
Effective
Model-based
8Observation of task-related coactivation is a
rather unsatisfying index of inter-regional
connectivity
- Produced by a standard analysis of task-related
activation, representing simply a different
theoretical treatment of the results - Regions thus implicated may not be directly
correlated (correlation is not transitive)
9Non-transitivity of separate regional
task-associated activations
Task
Baseline
Region 1
Region 2
10Correlative analysis
Requires some a priori model (albeit a simple one)
Y (1-n) c ß.X (1-n) ?
X voxel/region of interest Y every other
region ß functional connectivity between X and Y
Ultimately, this approach - though it ensures
that two regions do indeed correlate - adds
little to a simple description of regional
co-activation.
11Psychophysiological interaction/Physiophysiologic
al interaction (PPI)
- The observation of task- or context-dependent
inter-regional covariance - Measures the ways in which a given region
predicts activity in other brain regions. - This has been referred to as the
(context-dependent) contribution of activity in
one area to that in another (here contribution is
used used in a statistical sense contributes to
an explanation of the variance)
12Task
Baseline
PFC
STG
Here, a simple correlation analysis would show a
negative correlation between PFC and STG. A PPI
asks the question does the strength of
correlation between the regions within the time
series associated with one task differ from that
associated with the time series in the other
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14Practical implementation of this PPI analysis
the old approach.Block designs only
- Choose the voxel/region of interest (i.e. some a
priori theorising is necessary) and obtain y - Mean-correct voxel/region values (separately for
task and baseline conditions) - Multiply the mean-corrected time series vector by
a column vector in which task is specified by 1
and baseline by 1. - Enter this vector as a covariate with a 1
weighting to identify task-specific positive
contributions from the ROI and 1 for the
reverse.
15PPI the new approach (SPM2b) Gitelman et al,
NeuroImage 2003
- addresses two problems -
- The inadequacy of using an interaction between
filtered/convolved signals as a measure of a
neuronal interaction. - A problem specific to event-related designs
specifying the context of the measurement.
16The convolved signal
- A burst of neuronal firing is succeeded by a
haemodynamic response (the form of which we think
that we know in advance). - In setting up our analytical model, we imagine
that our psychological variable is controlling
the neuronal firing and that we can specify when
the neuronal bursts will occur with reference to
when our cognitive events occurred. - These two pieces of information enable us,
through convolution of the neuronal burst with
the HRF, to predict the changes in BOLD signal
that should occur in activated areas.
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22Effects of convolution
- The signal that we work with in standard fMRI
analyses is quite a long way removed from the
effects that interest us (i.e. the neuronal
firing). - This becomes a serious issue when we consider
interactions between brain regions or between
psychological context and regional activity.
23PPI and convolution
- Imagine two regions A and B
- Their activity is given by xA and xB
respectively. - The convolved signals, i.e. BOLD signals, from
each are given by - yA HxA and yB HxB
- A neuronal (physio-physiological) interaction is
expressed by xA xB - yA yB (i.e. HxA HxB) is not equivalent to H(xA xB
) - Likewise for psychophysiological interactions,
- HPyA (i.e.(HP)(HxA)) is not equivalent to H(PxA)
24PPI and convolution block design
Box-car design
25Neuronal firing
26Expected and actual BOLD signal
27PPI regressor produced by multiplying BOLD signal
by task design (yPX HP x HX)
28PPI regressor produced by multiplying neuronal
signal by task design and then convolving - yPX
H(P x X)
29PPI and block design - summary
- The use of the convolved signal in setting up the
PPI does not seem too problematic. - The resultant regressor differs only a little
from that produced in the more correct way (using
the convolved product of the task vector and the
neuronal firing vector).
30PPI event-related designs
- Two problems
- The use of the convolved signal in producing the
PPI regressor is much less satisfactory - A given BOLD measurement is produced by
convolution with a history of neuronal events,
which have been stimulated under a number of
different contexts.
31Activity Xa
32Activity Xb
33BOLD response HXa
34BOLD response - HXb
35PPI regressor produced by multiplying BOLD signal
by task design (yXaXb HXa x HXb)
36PPI regressor produced by multiplying neuronal
signal by task design and then convolving (yXaXb
H(Xa x Xb)
37PPI and event-related design - summary
- The use of the convolved signal in setting up the
PPI is an inaccurate reflection of the (task x
neuronal) or (neuronal x neuronal) interaction. - The convolved response loses its context in the
setting of rapidly changing events.
38PPI and e-r fMRInew approach
- Gitelman et al 2003
- Take the BOLD signal from the region of interest
- Deconvolve (PEB) to produce an educated guess at
the train of neuronal firing that may have
generated it - Express the interaction between, say, task and
neuronal firing as the product of the task design
and the deconvolved signal - Reconvolve the interaction with HRF.
- Use this new signal as the regressor in a
standard implementation of GLM
39Closer to causal relationships Structural
Equation Modelling
- This is a much more intricately specified model,
less data-led requiring the inclusion of more a
priori information - It is, like the other analysis options, based
upon regression analysis (this time estimated
simultaneously as an interlocked system of
relationships). - See McIntosh and Gonzales-Lima, 1994, Hum Brain
Mapp. for very clear discussion
40The value of this simultaneous estimation lies in
the possibility that it offers a move from
correlational analysis (inherently
bi-directional) to uni-directional connections
(paths) which imply causality
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42SEM requires
- An anatomical model
- Specified regions and directionally specified
connections - A functional model
- A correlation matrix generating, through the path
equations, the path strengths
43SEM therefore involves
- A much fuller (but, ultimately, highly
simplistic) model than previously described
approaches. - Assumptions that, though they may be backed by
known neuroanatomy, are sometimes difficult to
justify.
44But
- Lack of temporal information
- Causality exists within the model. The model may
or may not be compatible with the real world (the
data) but never proves the state of affairs in
the real world.
45And now
- Dynamic Causal Modelling (DCM)
- Friston et al www.fil.ion.ucl.ac.uk
- The central idea behind DCM is to treat the brain
as a "deterministic, nonlinear, dynamic system"
46Deterministic?
- DCM seeks to evaluate coupling of activity across
different regions as a response to an input that
is known and is produced by the experimental
manipulation. Most models of connectivity, while
they strive for context-specificity (and, indeed,
must be represented in context-specific terms)
actually treat the input as unknown and
stochastic.
47Non-Linear?
- The majority of models are linear in the sense
that they assume that the brains responses are
additive. That is, a response is a weighted
linear mixture of the inputs. Thus, while easy to
analyse, they have a limited repertoire. - Non-linear models on the other hand are complex
and may be intractable. - DCM uses a bilinear model, in which inputs may
have two sorts of effect - perturbation and modulation.
48Dynamic?
- DCM is concerned primarily with changes in
effective connectivity in response to inputs to
the system. - These inputs correspond to experimental
manipulations.
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51SEM and DCM
- SEM
- Output Activation (intrinsic) plus activation
(connected regions forward and backward) - DCM
- Output Activation (intrinsic) plus activation
(connected regions forward and backward) - plus
- Perturbation by exp. manipulation (cu)
- Modulation by exp. manipulation (bu)