Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for...

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Will Penny Will Penny DCM for Time- Frequency DCM Course, Paris, 2012 DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling

Transcript of Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for...

Page 1: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Will PennyWill Penny

DCM for Time-Frequency

DCM Course, Paris, 2012DCM Course, Paris, 2012

1. DCM for Induced Responses

2. DCM for Phase Coupling

Page 2: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Dynamic Causal Models

Neurophysiological Phenomenological

• DCM for ERP

• DCM for SSR

• DCM for Induced Responses• DCM for Phase Coupling

spiny stellate

cells

inhibitory interneuron

s

PyramidalCells Time

Freq

uenc

y

Phase

Source locations not optimizedElectromagnetic forward model included

Page 3: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Region 1 Region 2

?

?

Changes in power caused by external input and/or coupling with other regions

Model comparisons: Which regions are connected? E.g. Forward/backward connections

(Cross-)frequency coupling: Does slow activity in one region affect fast activity in another ?

1. DCM for Induced Responses

Time

Freq

uenc

y

Freq

uenc

y

Time

Page 4: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Connection to Neural Mass Models

First and Second orderVolterra kernelsFrom Neural Mass model.

Strong(saturating)input leads tocross-frequencycoupling

Page 5: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Single region 1 11 1 1z a z cu

u2

u1

z1

z2

z1

u1

a11c

cf. Neural state equations in DCM for fMRI

Page 6: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Multiple regions

1 11 1 1

2 21 22 2 2

0

0

z a z uc

z a a z u

u2

u1

z1

z2

z1

z2

u1

a11

a22

c

a21

cf. DCM for fMRI

Page 7: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Modulatory inputs

1 11 1 1 12

2 21 22 2 21 2 2

0 0 0

0 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

cf. DCM for fMRI

Page 8: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

u1 u2

z1

z2

a11

a22

c

a12

a21

b21

Reciprocal connections

1 11 12 1 1 12

2 21 22 2 21 2 2

0 0

0 0

z a a z z ucu

z a a z b z u

u2

u1

z1

z2

cf. DCM for fMRI

Page 9: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

dg(t)/dt=A g(t)∙+C u(t)∙

DCM for induced responses

Where g(t) is a K x 1 vector of spectral responses

A is a K x K matrix of frequency coupling parameters

Also allow A to be changed by experimental condition

Time

Freq

uenc

y

Page 10: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

G=USV’

Use of Frequency Modes

Where G is a K x T spectrogram

U is K x K’ matrix with K frequency modes

V is K x T and contains spectral mode responses over time

Hence A is only K’ x K’, not K x K

Time

Freq

uenc

y

Page 11: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Connection to Neurobiology

From Neural Mass model.

Strong(saturating)input leads tocross-frequencycoupling

Page 12: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Connection to Neurobiology

Strong(saturating)input leads tocross-frequencycoupling

Page 13: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Connection to Neurobiology

Weak input does not

Page 14: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Differential equation model for spectral energy

KKij

Kij

Kijij

ij

AA

AA

A

1

111

Nonlinear (between-frequency) coupling

Linear (within-frequency) coupling

Extrinsic (between-source) coupling

)()()(1

1

1111

tu

C

C

tg

AA

AA

g

g

tg

JJJJ

J

J

Intrinsic (within-source) coupling

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

Page 15: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Modulatory connections

Extrinsic (between-source) coupling

1 11 1 11 1 1

1 1

( ) ( ) ( )J J

J J JJ J JJ J

g A A B B C

g t v g t u t

g A A B B C

Intrinsic (within-source) coupling

Page 16: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Example: MEG Data

Page 17: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

15

81

39

z

y

x

15

81

42

z

y

x

27

45

42

z

y

x

24

51

39

z

y

x

OFA OFA

FFAFFA

input

The “core” system

Page 18: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

nonlinear (and linear)

linear

Forward

Bac

kwar

d

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

Face selective effectsmodulate within hemisphereforward and backward cxs

Page 19: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.
Page 20: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

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

1000backward linear backward nonlinear

forward linearforward nonlinear

Model Inference

Winning model: FNBN

Both forward and backward connections are nonlinear

Page 21: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Parameter Inference: gamma affects alpha

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

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

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)

From 30Hz

To 10Hz

Page 22: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.
Page 23: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

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

Region 1

Region 3

Region 2

??

2. DCM for Phase Coupling2. DCM for Phase Coupling

( )i i jj

g PhaseInteractionFunction

Page 24: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Synchronization achieved by phase coupling between regions

Model comparisons: Which regions are connected? E.g. ‘master-slave’/mutual connections

Parameter inference: (frequency-dependent) coupling values

Region 1 Region 2

( )i i jj

?

?

Page 25: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Synchronization

Gamma sync synaptic plasticity, forming ensembles

Theta sync system-wide distributed control (phase coding)

Pathological (epilepsy, Parkinsons)

Phase Locking Indices, Phase Lag etc are useful characterising systems in their steady state

Sync – Steve Strogatz

Page 26: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

One Oscillator

f1

Page 27: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Two Oscillators

f1

f2

Page 28: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Two Coupled Oscillators

f1

)sin(3.0 122 f

0.3

Here we assume the Phase Interaction Function (PIF) is a sinewave

Page 29: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Different initial phases

f1

)sin(3.0 122 f

0.3

Page 30: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Stronger coupling

f1

2 2 10.6sin( )f

0.6

Page 31: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Bidirectional coupling

)sin(3.0 122 f

0.30.3

)sin(3.0 211 f

Page 32: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

j

j

i

DCM for Phase Coupling

)sin( jij

ijii af

sin( [ ]) cos( [ ])i i ijK i j ijK i jK j K j

f a K b K

Phase interaction function is an arbitrary order Fourier series

Allow connections to depend on experimental condition

ija

ija

Page 33: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Example: MEG data

Fuentemilla et al, Current Biology, 2010

Page 34: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Delay activity (4-8Hz)

Visual Cortex (VIS)Medial Temporal Lobe (MTL)Inferior Frontal Gyrus (IFG)

Page 35: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.
Page 36: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

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

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

• Which connections are modulated by memory task ?

Page 37: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

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 38: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Analysis

• 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. Data that we model are unwrapped phase time series in multiple regions.

• Use multiple trials per experimental condition

• Model inversion

Page 39: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

LogEv

Model

1 2 3 4 5 6 70

50

100

150

200

250

300

350

400

450MTL

VISIFG3

Page 40: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

MTL

VISIFG

2.89

2.46

0.89

0.77

sin([ ]) cos([ ])i i ij i j ij i jj j

f a b

Connection Strengths

Page 41: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.
Page 42: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Jones and Wilson, PLoS B, 2005

Recordings from rats doing spatial memory task:

Page 43: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.
Page 44: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

MTL-VIS

IF

G-

VIS

Control

Page 45: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

MTL-VIS

IF

G-

VIS

Memory

Page 46: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

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

dxx k x z w x P

dtdx

x k x z w xdtdx

x k x z w x Pdtdx

x k x z w x Pdt

1x

2x 3x

4xWilson-Cowan style model

Page 47: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.
Page 48: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Four-dimensional state space

Page 49: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

Hippocampus

Septum

A

A

B

B

Hopf Bifurcation

Page 50: Will Penny DCM for Time-Frequency DCM Course, Paris, 2012 1. DCM for Induced Responses 2. DCM for Phase Coupling.

cossin)( baz

For a generic Hopf bifurcation (Erm & Kopell…)

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