random shapes in brain mapping and astrophysics using an idea from geostatistics

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Random shapes in brain mapping and astrophysics using an idea from geostatistics Keith Worsley, McGill Jonathan Taylor, Stanford and Université de Montréal Arnaud Charil, Montreal Neurological Institute

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Random shapes in brain mapping and astrophysics using an idea from geostatistics. Keith Worsley, McGill Jonathan Taylor , Stanford and Universit é de Montr é al Arnaud Charil, Montreal Neurological Institute. CfA red shift survey, FWHM=13.3. 100. 80. 60. "Meat ball". 40. - PowerPoint PPT Presentation

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Page 1: Random shapes in brain mapping and astrophysics using an idea from geostatistics

Random shapes in brain mapping and astrophysics

using an idea from geostatistics

Keith Worsley,McGill

Jonathan Taylor, Stanford and Université de Montréal

Arnaud Charil, Montreal Neurological Institute

Page 2: Random shapes in brain mapping and astrophysics using an idea from geostatistics
Page 3: Random shapes in brain mapping and astrophysics using an idea from geostatistics

-5 -4 -3 -2 -1 0 1 2 3 4 5

-100

-80

-60

-40

-20

0

20

40

60

80

100CfA red shift survey, FWHM=13.3

Gaussian threshold

Eul

er C

hara

cter

istic

(E

C)

"Bubble"topology

"Sponge"topology

"Meat ball" topology

CfARandomExpected

Page 4: Random shapes in brain mapping and astrophysics using an idea from geostatistics

Brain imaging

Detect sparse regions of “activation”

Construct a test statistic image for detecting activation

Activated regions: test statistic > threshold

Choose threshold to control false positive rate to say 0.05

i.e. P(max test statistic > threshold) = 0.05

Bonferroni???

Page 5: Random shapes in brain mapping and astrophysics using an idea from geostatistics

-3

-2

-1

0

1

2

3

1

2

3

4

-2 0 2

-2

0

2

Z1~N(0,1) Z2~N(0,1)

Z1

Z2

Rejection regions,Excursion sets,

SearchRegion,

S

Threshold t

s2

s1

Example test statistic: ¹Â = max0· µ· ¼=2

Z1 cosµ+ Z2 sinµ

X t = fs : ¹Â ¸ tg Rt = fZ : ¹Â ¸ tg

Page 6: Random shapes in brain mapping and astrophysics using an idea from geostatistics

0 0.5 1 1.5 2 2.5 3 3.5 4-2

0

2

4

6

8

10

Eule

r ch

ara

cteri

stic

, EC

Threshold, t

Excursion sets, Xt

Observed

Expected

EC= 1 7 6 5 2 1 1 0

Search Region, S

Euler characteristic heuristic

P(maxs2S

¹Â(s) ¸ t)

¼E(E C) = 0:05

) t = 3:75

E(EC(S \ X t)) =DX

d=0

Ld(S)½d(t)

Page 7: Random shapes in brain mapping and astrophysics using an idea from geostatistics

2 4 6 8 10 12 14

2

4

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8

10

12

14

0

0.5

1

1.5

2

-2 0 2

-2

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1

0 0.5 1 1.5 20

50

100

150

0 0.5 10

0.1

0.2

0.3

0.4

Tube(λS,r) Radius, r Tube(Rt,r) Radius, r

Z2

Z1

Are

a

Radius of Tube, r

Pro

babili

ty

Radius of Tube, r

r

λS

r

Rt

E(E C(S \ X t)) =DX

d=0

Ld(S)½d(t)

L2(S)

2L1(S)r¼L0(S)r2

P(Tube(Rt;r))

P(Tube(Rt;r)) =1X

d=0

(2¼)d=2½d(t)rd=d!

p2¼½1(t)r

½0(t)¼½2(t)r2

jTube(¸S;r)j

jTube(¸S;r)j =DX

d=0

¼d

¡ (d=2+1)L D ¡ d(S)rd

Lipschitz-K illing curvature Ld(S) EC density ½d(t)

¸ = Sdµ

@Z@s

=

p4log2

FWHM

Page 8: Random shapes in brain mapping and astrophysics using an idea from geostatistics

P (Z1;Z2 2 Tube(Rt;r)) =1X

d=0

(2¼)d=2½d(t)rd=d!

= ½0(t) + (2¼)1=2½1(t)r + (2¼)½2(t)r2=2+¢¢¢

=

Z 1

t¡ r(2¼)¡ 1=2e¡ z2=2dz +e¡ (t¡ r )2=2=4

½0(t) =

Z 1

t(2¼)¡ 1=2e¡ z2=2dz + e¡ t2=2=4

½1(t) = (2¼)¡ 1e¡ t2=2 +(2¼)¡ 1=2e¡ t2=2t=4

½2(t) = (2¼)¡ 3=2e¡ t2=2t + (2¼)¡ 1e¡ t2=2(t2 ¡ 1)=8

...

Tube(Rt,r)

Z1~N(0,1)

r

Rejection region Rt

tt-r

Z2~N(0,1)

Taylor’s Gaussian Kinematic Formula:

EC density ½d(t)of the ¹Â statistic

Page 9: Random shapes in brain mapping and astrophysics using an idea from geostatistics

Tube(λS,r)

λS

r

Steiner-Weyl Volume of Tubes Formula:

Lipschitz-K illingcurvature L d(S)

Area(Tube(¸S;r)) =DX

d=0

¼d=2

¡ (d=2+1)LD ¡ d(S)rd

= L2(S) + 2L1(S)r +¼L0(S)r2

= Area(¸S) + Perimeter(¸S)r +EC(¸S)¼r2

L0(S) = EC(¸S) = Resels0(S)

L1(S) = 12Perimeter(¸S) =

p4log2 Resels1(S)

L2(S) = Area(¸S) = 4log2 Resels2(S)

Page 10: Random shapes in brain mapping and astrophysics using an idea from geostatistics

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. . . . . . . ... . . . . . .. . . . . .. . . . Lipschitz-Killing curvature of simplices

Lipschitz-Killing curvature of union of simplices

FW

HM

/√(4

log2

)

Edge length × λ

L0(²) = 1, L0(¡ ) = 1, L0(N) = 1L1(¡ ) = edge length, L1(N) = 1

2perimeterL2(N) = area

L0(S) =P

² L0(²) ¡P

¡ L0(¡ ) +P

N L0(N)L1(S) =

P¡ L1(¡ ) ¡

PN L1(N)

L2(S) =P

N L2(N)

How to ¯nd Lipschitz-K illing curvature L d(S)

Page 11: Random shapes in brain mapping and astrophysics using an idea from geostatistics

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. . . . . . . ... . . . . . .. . . . . .. . . .

Non-isotropic data?

Z~N(0,1)

Can we warp the data to isotropy?i.e. multiply edge lengths by λ?

Locally yes, but we may need extra dimensions.

Nash Embedding Theorem:dimensions ≤ D + D(D+1)/2

D=2: dimensions ≤ 5

¸ = Sdµ

@Z@s

=

p4log2

FWHMs2

s1

Page 12: Random shapes in brain mapping and astrophysics using an idea from geostatistics
Page 13: Random shapes in brain mapping and astrophysics using an idea from geostatistics

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-2

-1

0

1

2

3

0.06

0.08

0.1

0.12

0.14

4 6 8 102

4

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10

12

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Lipschitz-Killing curvature of simplices

Lipschitz-Killing curvature of union of simplices

L0(²) = 1, L0(¡ ) = 1, L0(N) = 1L1(¡ ) = edge length, L1(N) = 1

2perimeterL2(N) = area

L0(S) =P

² L0(²) ¡P

¡ L0(¡ ) +P

N L0(N)L1(S) =

P¡ L1(¡ ) ¡

PN L1(N)

L2(S) =P

N L2(N)

¸ = Sdµ

@Z@s

=

p4log2

FWHM

Warping to isotropy not needed – only warp the triangles

Z~N(0,1)

Edge length × λ

FW

HM

/√(4

log2

) Z~N(0,1)s2

s1

Page 14: Random shapes in brain mapping and astrophysics using an idea from geostatistics

Z1 Z2 Z3 Z4 Z5 Z6 Z7 Z8 Z9 Zn

We need independent & identically distributed random fieldse.g. residuals from a linear model

Replace coordinates of the simplices in S⊂RealD by(Z1,…,Zn) / ||(Z1,…,Zn)|| in Realn

Unbiased!

Unbiased!

Lipschitz-Killing curvature of simplices

Lipschitz-Killing curvature of union of simplices

L0(²) = 1, L0(¡ ) = 1, L0(N) = 1L1(¡ ) = edge length, L1(N) = 1

2perimeterL2(N) = area

L0(S) =P

² L0(²) ¡P

¡ L0(¡ ) +P

N L0(N)L1(S) =

P¡ L1(¡ ) ¡

PN L1(N)

L2(S) =P

N L2(N)

Estimating Lipschitz-K illing curvature L d(S)

Page 15: Random shapes in brain mapping and astrophysics using an idea from geostatistics

MS lesions and cortical thickness

Idea: MS lesions interrupt neuronal signals, causing thinning in down-stream cortex

Data: n = 425 mild MS patients Lesion density, smoothed 10mm Cortical thickness, smoothed 20mm Find connectivity i.e. find voxels in 3D, nodes

in 2D with high correlation(lesion density, cortical thickness)

Look for high negative correlations …

Page 16: Random shapes in brain mapping and astrophysics using an idea from geostatistics

0 10 20 30 40 50 60 70 80

1.5

2

2.5

3

3.5

4

4.5

5

5.5

Average lesion volume

Ave

rag

e co

rtic

al t

hic

kne

ssn=425 subjects, correlation = -0.568

Page 17: Random shapes in brain mapping and astrophysics using an idea from geostatistics

Thresholding? Cross correlation random field

Correlation between 2 fields at 2 different locations, searched over all pairs of locations one in R (D dimensions), one in S (E dimensions) sample size n

MS lesion data: P=0.05, c=0.325, T=7.07Cao & Worsley, Annals of Applied Probability (1999)

Page 18: Random shapes in brain mapping and astrophysics using an idea from geostatistics

Normalization

LD=lesion density, CT=cortical thickness Simple correlation:

Cor( LD, CT )

Subtracting global mean thickness: Cor( LD, CT – avsurf(CT) )

And removing overall lesion effect: Cor( LD – avWM(LD), CT – avsurf(CT) )

Page 19: Random shapes in brain mapping and astrophysics using an idea from geostatistics

0

0.5

1

1.5

2

2.5x 10

5

corr

elat

ion

Same hemisphere

0 50 100 150-0.5

-0.4

-0.3

-0.2

-0.1

0

0.1

0

0.2

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0.6

0.8

1

distance (mm)

corr

elat

ion

0 50 100 150-0.5

-0.4

-0.3

-0.2

-0.1

0

0.1

0

0.5

1

1.5

2

2.5

x 105

corr

elat

ion

Different hemisphere

0 50 100 150-0.5

-0.4

-0.3

-0.2

-0.1

0

0.1

0

0.2

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distance (mm)

corr

elat

ion

0 50 100 150-0.5

-0.4

-0.3

-0.2

-0.1

0

0.1

threshold

thresholdthreshold

threshold

Histogram

‘Conditional’ histogram: scaled to same max at each distance