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Sensitivity and Specificity of FDR Methods in Neuroimaging

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Title: Sensitivity and Specificity of FDR Methods in Neuroimaging


1
Sensitivity and Specificity of FDR Methods in
Neuroimaging
  • Thomas Nichols, Wei Xie
  • Department of Biostatistics
  • University of Michigan
  • ENAR 2006

2
Outline
  • Background
  • Functional Neuroimaging
  • fMRI Characteristics
  • Spatially smooth noise
  • Spatially structured (blobby) signal
  • FDR methods perform under smoothness
  • BH FDR method
  • Adaptive FDR methods
  • Conclusions

3
Functional Neuroimaging and fMRI
  • ? Neuronal Activity ? Blood Flow
  • Many functional neuroimaging methods
    measurecorrelates of blood flow
  • fMRI Functional Magnetic Resonance Imaging
  • BOLD Blood Oxygenation Level Dependent effect
  • ? Blood flow ? fMRI Signal

Tap fingers
Rest
4
Characteristics of Functional Neuroimaging
Statistic Images
  • Spatial Structure of Noise
  • Always have some correlationdue to physics and
    physiology
  • Data often smoothed as pre-processing step
  • Spatial Structure of Signal
  • Sparse, sharp activations
  • Spatially extended patterns of activation

5
DataExamples
  • Smooth noise
  • Small signal

Single subj. fMRI t237Oddball Target vs.
Standard Window -4 4
6
DataExamples
  • Some-what smoothnoise
  • Extensive signal

2 group FDG PET t82Norm AlzheimersWindow
-10 10
7
DataExamples
  • Less smooth noise
  • Subtle, sparse signal

1 group FDG PET t50AlzheimersFDG on
MMSEWindow -5 5
8
DataExamples
  • Smooth noise
  • Extended signal

50 subj. fMRI t49Oddball Target vs.
Standard Window -15 15
9
Statistic Image CharacteristicsWhy smooth!?
  • Ideally no one would smooth
  • Spatial structure of signalwould be explicitly
    modeled
  • Why is smoothing common
  • Part of the culture
  • Increases sensitivity inexchange for spatial
    detail
  • Imperfect intersubjectregistration
    necessitatessome smoothing

10
Evaluating FDR under Smooth Noise
  • Benjamini Hochberg (1995) FDR (BH)
  • Linear step-up procedure
  • Developed assuming independence
  • Controls FDR q m0/m ? q
  • Conservative by null-fraction of the image
    (m0/m)
  • Benjamini Yekutieli (2001)
  • Showed BH is valid under positive dependence
  • Valid, but possibly conservative
  • Degree of conservativeness unknown
  • How BH FDR perform under smoothness?

m0 Null Voxels m Total Voxels
11
Notation
  • False Discovery Proportion
  • FDP V / R IRgt0
  • False Discovery rate
  • FDR E( FDP )
  • False Discovery Exceedance
  • FDX P ( FDP gt q)

V False Positives R Positives
12
Control of FDX
  • Common misinterpretation
  • Threshold image with FDR at level-q
  • Users assume q ? R false positives present,
    butE ( V / R IRgt0 ) q ?? E( V ) q?? E(
    R IRgt0 )
  • FDX avoids this problem
  • Threshold image w/ FDX at level-q with ?
    confidence FDX P(FDP gt q)
    ? ? 1 - FDX ?P(FDP q) ? 1-
    ?
  • Can be confident no more than q?? R false
    positivesP ( V / R IRgt0 q) 1 - ? ?? P (
    V lt q ? R) 1 - ?

FDR control
Expd FPs
FDX control
Confidence of FPs being less than q ? R
13
Simulation Methods
  • Benjamini Hochbergs FDR, q 0.05
  • Images Gaussian T(6) images
  • 10,000 realizations
  • 32x32x32 voxels
  • Smoothed with Gaussian kernels
  • FWHM 0, 1.5, 3, 6 and 12 voxels
  • Signal Spherical constant signals
  • Radii 0, 1, 2, 4 and 8 voxels
  • 0, 0.02, 0.10, 0.85 and 6.64 of the volume
  • Signal magnitudes of 0.5, 1, 2, 4 8

14
Specificity Metrics
  • FDR
  • Small FDR, good specificity
  • FDR gt q 0.05, method invalid
  • FDR lt q 0.05, method inexact
  • FDX
  • Small FDX, good specificity
  • FDX is controlled if this is less than 0.05
  • No guarantee that FDX is controlled

15
Sensitivity Metrics
  • Average Power
  • The probability of detecting a given voxel with a
    (non-null) signal.
  • Equivalently, the chance, averaged over all
    signal voxels, of a detection.
  • Familywise Power
  • The probability of detecting one or more signal
    voxels.
  • Conditional Familywise Power
  • Conditional on detecting at least one voxel of
    any kind at all, the probability of detecting one
    or more signal voxels.

16
ResultsSpecificity
  • FDR falls below nominal as smoothness increases
  • FDX happens to be controlled for small radius
    signals...

Signal mag. 2
17
ResultsSpecificity
  • FDR falls below nominal as smoothness increases
  • FDX happens to be controlled for small radius
    signals... but for larger magnitudes is not

Signal mag. 4
18
ResultsSensitivity
  • Average power slightly increases with smoothness
  • Familywise power actually falls with increasing
    smoothness

Signal mag. 2
19
ResultsSensitivity
Average Power
1
0.8
  • Average power slightly increases with smoothness
  • And of course w/ mag.
  • Familywise power actually falls with increasing
    smoothness

0.6
P( True Detection at a Voxel )
0.4
0.2
0
0
2
4
6
8
10
12
Smoothness, Voxels FWHM
Signal mag. 4
20
Perplexing Results
  • Smoothness ? Average Power ?
  • Smoothness ? Familywise Power ?
  • Strange?
  • Of course, a familywise true positive can only
    occur if there are any positives
  • Maybe no positives are more likely

21
ResultsSensitivity
  • Condl Familywise Power grows with smoothness
  • Ruling out the no-detection cases, the chance of
    any true positives does indeed grow

Signal mag. 2
22
ResultsSensitivity
  • Condl Familywise Power grows with smoothness
  • Ruling out the no-detection cases, the chance of
    any true positives does indeed grow

Signal mag. 4
23
Strangeness Discussion
  • As smoothness grows
  • Average power doesnt change
  • Familywise power falls
  • Conditional familywise power rises
  • For high smoothness
  • On data sets where you detect anything you are
    probably getting more true positives than at
    lower smoothness

24
Results Summary
  • BH-FDR controls FDR
  • When signal subtle, FDX is controlled
  • Familywise power falls with smoothness But
    average power doesnt

25
Conservativeness of BH FDR Procedure
m0 Null Voxels m Total Voxels
  • BH FDR
  • Can control the FDR at precisely qm0/m ? q
  • But conservative by the same factor m0/m
  • If m0 is known, then we can improve BH procedure.
  • Oracle BH Procedure
  • Use qqm/m0 in BH procedure.
  • Control FDR at precisely level q in independent
    case
  • More powerful

26
Two-Stage FDR Procedures
  • How to estimate the unknown m0 from the data
  • Two-Stage FDR Procedures
  • Benjamini, Krieger Yekutieli (2005)
  • Idea m0 can be estimated from one-stage BH
    procedure
  • 3 Procedures selected for simulation
  • TST Two-Stage Linear Step-Up Procedure
  • MTST Modified TST
  • ASD Adaptive Step-Down Procedure

27
Two-Stage FDR Procedures
  • TST Two-Stage Linear Step-Up Procedure
  • Stage I Use BH at
  • r1 rejected hypothesis
  • r1 0 or r1 m, then stop
  • Otherwise,
  • Stage II Use BH at

28
Two-Stage FDR Procedures
  • MTST Modified TST
  • Stage I Use BH at level q, estimate m0
  • Stage II Use BH at
  • ASD Adaptive Step-Down Procedure
  • Simplified version of a multi-stage procedure
  • Question
  • Will these adaptive procedures overcome the
    conservativeness under smoothness?

29
Results for FDR
30
ResultsSpecificity
Mag. 2Rad. 8
  • Oracle has the best performance
  • ASD is the most conservative
  • Others perform similar to BH

31
ResultsSpecificity
Mag. 4Rad. 8
  • ASD is the best only for large signal magnitude
  • FDX is still not controlled

32
ResultsSensitivity
Mag. 2Rad. 8
  • ASD is the most conservative one
  • Others dont have much difference

33
ResultsSensitivity
Mag. 4Rad. 8
  • ASD is the most conservative one
  • Others dont have much difference

34
Results Summary
  • Still have conservative control on FDR
  • FDX is not controlled
  • In general, the two-stage FDR procedures dont
    overcome the conservativeness for smoothed data

35
Conclusions
  • BH-FDR
  • Appropriate for smooth data
  • Controls FDR
  • Controls FDX, when signal subtle
  • Familywise power falls with smoothness, but
    average power does not
  • Two-stage FDR procedures
  • Do not overcome the conservativeness under
    smoothness
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