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DCM for Time Frequency Will Penny Will Penny Wellcome Trust Centre for Neuroimaging, Wellcome Trust Centre for Neuroimaging, University College London, UK University College London, UK SPM MEG/EEG Course, Oct 27, 2009 SPM MEG/EEG Course, Oct 27, 2009

DCM for Time Frequency

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DCM for Time Frequency. Will Penny. Wellcome Trust Centre for Neuroimaging, University College London, UK. SPM MEG/EEG Course, Oct 27, 2009. DCM for Induced Responses. Region 2. Region 1. ?. ?. Relate change of power in one region and frequency to change in power in others. - PowerPoint PPT Presentation

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Page 1: DCM  for  Time Frequency

DCM for Time Frequency

Will PennyWill Penny

Wellcome Trust Centre for Neuroimaging,Wellcome Trust Centre for Neuroimaging,University College London, UKUniversity College London, UK

SPM MEG/EEG Course, Oct 27, 2009SPM MEG/EEG Course, Oct 27, 2009

Page 2: DCM  for  Time Frequency

DCM for Induced ResponsesRegion 1

Region 3

Region 2

??

How does slow activityin one region affectfast activity in another ?

Relate change of powerin one region and frequency to change in power in others.

Page 3: DCM  for  Time Frequency

Single region 1 11 1 1z a z cu

u2

u1

z1

z2

z1

u1

a11c

DCM for fMRI

Page 4: DCM  for  Time Frequency

Multiple regions

1 11 1 1

2 21 22 2 2

00

z a z ucz a a z u

u2

u1

z1

z2

z1

z2

u1

a11

a22

c

a21

Page 5: DCM  for  Time Frequency

Modulatory inputs

1 11 1 1 12

2 21 22 2 21 2 2

0 0 00 0

z a z z ucu

z a a z b z u

u2

u1

z1

z2

u2

z1

z2

u1

a11

a22

c

a21

b21

Page 6: DCM  for  Time Frequency

Reciprocal connections

1 11 12 1 1 12

2 21 22 2 21 2 2

0 00 0

z a a z z ucu

z a a z b z u

u2

u1

z1

z2

u2

z1

z2

u1

a11

a22

c

a12

a21

b21

Page 7: DCM  for  Time Frequency

Single Region

dg(t)/dt=Ag(t)+Cu(t)

DCM for induced responses

Where g(t) is a K x 1 vector of spectral responsesA is a K x K matrix of frequency coupling parametersDiagonal elements of A (linear – within freq)Off diagonal (nonlinear – between freq)Also allow A to be changed by experimental condition

Page 8: DCM  for  Time Frequency

DCM for induced responses

Specify the DCM:• 2 areas (A1 and A2) • 2 frequencies (F and S)• 2 inputs (Ext. and Con.)• Extrinsic and intrinsic coupling

Integratethe state equations

A1 A2

2

1

2

1

),(),(),(),(

A

A

A

A

tSxtSxtFxtFx

Page 9: DCM  for  Time Frequency

Differential equation model for spectral energy

KKij

Kij

Kijij

ij

AA

AAA

1

111

Nonlinear (between-frequency) coupling

Linear (within-frequency) coupling

Extrinsic (between-source) coupling

)()()(1

1

1111

tuC

Ctg

AA

AA

g

gtg

JJJJ

J

J

Intrinsic (within-source) coupling

How frequency K in region j affects frequency 1 in region i

Page 10: DCM  for  Time Frequency

Modulatory connections

Intrinsic (within-source) coupling

Extrinsic (between-source) coupling

state equation

JJJJ

J

JJJ

J

JC

C

tutwx

BB

BB

tu

AA

AA

x

x

W, tx

1

1

111

1

1111

)(),()()(.

Page 11: DCM  for  Time Frequency

Connection to Neurobiology

First and Second orderVolterra kernelsFrom Neural Mass model.

Strong(saturating)input leads tocross-frequencycoupling

Page 12: DCM  for  Time Frequency

Single Region

G=USV’

Use of Frequency Modes

Where G is a K’ x T spectrogramU is K’xK matrix with K frequency modesV is K’ x T and contains spectral mode responsesHence A is only K x K, not K’ x K’

Page 13: DCM  for  Time Frequency

MEG Data

Page 14: DCM  for  Time Frequency

158139

zyx

158142

zyx

274542

zyx

245139

zyx

OFA OFA

FFAFFA

input

The “core” system

Page 15: DCM  for  Time Frequency

nonlinear (and linear)

linear

Forward

Back

ward

linear nonlinear

linea

rno

nlin

ear

FLBL FNBL

FLNB FNBN

OFA OFA

Input

FFAFFA

FLBL

Input

FNBL

OFA OFA

FFAFFA

FLBN

OFA OFA

Input

FFAFFA

FNBN

OFA OFA

Input

FFAFFA

Page 16: DCM  for  Time Frequency

FLBL FNBL FLBN *FNBN

-59890

-16308 -16306 -11895

-70000

-60000

-50000

-40000

-30000

-20000

-10000

0

-8000

-7000

-6000

-5000

-4000

-3000

-2000

-1000

0

1000 backward linear backward nonlinear

forward linearforward nonlinear

Inference on model I

• Both forward and backward connections are nonlinear

Page 17: DCM  for  Time Frequency

From 32 Hz (gamma) to 10 Hz (alpha) t = 4.72; p = 0.002

4 12 20 28 36 44

44

36

28

20

12

4

SPM t df 72; FWHM 7.8 x 6.5 Hz

Freq

uenc

y (H

z)

Right hemisphereLeft hemisphere-0.1

-0.08

-0.06

-0.04

-0.02

0

0.02

0.04

0.06

0.08

0.1

Forward Backward

-0.1

-0.08

-0.06

-0.04

-0.02

0

0.02

0.04

0.06

0.08

0.1

Forward Backward

• Left forward – excitatory -- activating effect of gamma- alpha coupling in the forward connections

• Right backward - inhibitory -- suppressive effect of gamma- alpha coupling in backward connections

Gamma affects Alpha

Page 18: DCM  for  Time Frequency

“Gamma activity in input areas induces slowerdynamics in higher areas as prediction error is accumulated. Nonlinear coupling

in high-level area induces gamma activity in that higher area which then accelerates the decay of activity in the lower level. This decay is manifest as

damped alpha oscillations.”

• C.C. Chen , S. Kiebel, KJ Friston , Dynamic causal modelling of induced responses. NeuroImage, 2008; (41):1293-1312.

 • C.C. Chen, R.N. Henson, K.E. Stephan, J.M. Kilner, and K.J. Friston1.

Forward and backward connections in the brain: A DCM study of functional asymmetries in face processing. NeuroImage, 2009 Apr 1;45(2):453-62

 

Page 19: DCM  for  Time Frequency

For studying synchronization among brain regions Relate change of phase in one region to phase in others

Region 1

Region 3

Region 2

??

DCM for Phase Coupling

( )i i jj

g

Page 20: DCM  for  Time Frequency

Connection to Neurobiology:Septo-Hippocampal theta rhythm

Denham et al. 2000: Hippocampus

Septum

11 1 1 13 3 3

22 2 2 21 1

13 3 3 34 4 3

44 4 4 42 2

( ) ( )

( ) ( )

( ) ( )

( ) ( )

e e CA

i i

i e CA

i i S

dx x k x z w x Pdtdx x k x z w xdt

dx x k x z w x Pdtdx x k x z w x Pdt

1x

2x 3x

4xWilson-Cowan style model

Page 21: DCM  for  Time Frequency
Page 22: DCM  for  Time Frequency

Four-dimensional state space

Page 23: DCM  for  Time Frequency

Hippocampus

Septum

A

A

B

B

Hopf Bifurcation

Page 24: DCM  for  Time Frequency

cossin)( baz

For a generic Hopf bifurcation (Erm & Kopell…)

See Brown et al. 04, for PRCs corresponding to other bifurcations

Page 25: DCM  for  Time Frequency

01 sin( ) cos( )2

iij i j ij i j

j

d f a bdt

3

2

1

12a

13a

DCM for Phase Coupling

12b

13b

Page 26: DCM  for  Time Frequency

MEG Example Fuentemilla et al 09

+

+

+

1 sec 3 sec 5 sec 5 sec

1) No retention (control condition): Discrimination task

2) Retention I (Easy condition): Non-configural task

3) Retention II (Hard condition): Configural task

ENCODING MAINTENANCE PROBE

Page 27: DCM  for  Time Frequency

Delay activity (4-8Hz)

Page 28: DCM  for  Time Frequency
Page 29: DCM  for  Time Frequency

Questions

• Duzel et al. find different patterns of theta-coupling in the delay period dependent on task.

• Pick 3 regions based on [previous source reconstruction]

1. Right MTL [27,-18,-27] mm2. Right VIS [10,-100,0] mm3. Right IFG [39,28,-12] mm

• Fit models to control data (10 trials) and hard data (10 trials). Each trial comprises first 1sec of delay period.

• Find out if structure of network dynamics is Master-Slave (MS) or (Partial/Total) Mutual Entrainment (ME)

• Which connections are modulated by (hard) memory task ?

Page 30: DCM  for  Time Frequency

Data Preprocessing

• Source reconstruct activity in areas of interest (with fewer sources than sensors and known location, then pinv will do; Baillet 01)

• Bandpass data into frequency range of interest

• Hilbert transform data to obtain instantaneous phase

• Use multiple trials per experimental condition

Page 31: DCM  for  Time Frequency

MTL

VISIFG

MTL

VISIFG

MTL

VISIFG

MTL

VISIFG

MTL

VISIFG

MTL

VISIFG1

MTL

VISIFG2

3

4

5

6

7

Master-Slave

PartialMutualEntrainment

TotalMutualEntrainment

MTL Master VIS Master IFG Master

Page 32: DCM  for  Time Frequency

LogEv

Model

1 2 3 4 5 6 70

50

100

150

200

250

300

350

400

450

Page 33: DCM  for  Time Frequency

MTL

VISIFG

2.89

2.46

0.89

0.77

Page 34: DCM  for  Time Frequency

MTL-VIS

IFG

-V

IS

Control

Page 35: DCM  for  Time Frequency

MTL-VIS

IFG

-V

IS

Memory

Page 36: DCM  for  Time Frequency
Page 37: DCM  for  Time Frequency