1 / 45

Statistical Nonparametric Mapping - SnPM Thresholding without (m)any assumptions

Learn about SnPM, a nonparametric method for statistical mapping, and its application in controlling false positives in neuroimaging studies.

shanie
Download Presentation

Statistical Nonparametric Mapping - SnPM Thresholding without (m)any assumptions

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Statistical Nonparametric Mapping - SnPMThresholding without (m)any assumptions Thomas Nichols, Ph.D. Director, Modelling & GeneticsGlaxoSmithKline Clinical Imaging Centre http://www.fmrib.ox.ac.uk/~nichols ICN SPM Course May 10, 2007

  2. Overview • Multiple Comparisons Problem • Which of my 100,000 voxels are “active”? • SnPM • Permutation test to find threshold • Control chance of any false positives (FWER)

  3. 5% Parametric Null Distribution 5% Nonparametric Null Distribution Nonparametric Inference • Parametric methods • Assume distribution ofstatistic under nullhypothesis • Needed to find P-values, u • Nonparametric methods • Use data to find distribution of statisticunder null hypothesis • Any statistic!

  4. Permutation TestToy Example • Data from V1 voxel in visual stim. experiment A: Active, flashing checkerboard B: Baseline, fixation 6 blocks, ABABAB Just consider block averages... • Null hypothesis Ho • No experimental effect, A & B labels arbitrary • Statistic • Mean difference

  5. Permutation TestToy Example • Under Ho • Consider all equivalent relabelings

  6. Permutation TestToy Example • Under Ho • Consider all equivalent relabelings • Compute all possible statistic values

  7. Permutation TestToy Example • Under Ho • Consider all equivalent relabelings • Compute all possible statistic values • Find 95%ile of permutation distribution

  8. Permutation TestToy Example • Under Ho • Consider all equivalent relabelings • Compute all possible statistic values • Find 95%ile of permutation distribution

  9. Permutation TestToy Example • Under Ho • Consider all equivalent relabelings • Compute all possible statistic values • Find 95%ile of permutation distribution -8 -4 0 4 8

  10. Permutation TestStrengths • Requires only assumption of exchangeability • Under Ho, distribution unperturbed by permutation • Allows us to build permutation distribution • Subjects are exchangeable • Under Ho, each subject’s A/B labels can be flipped • fMRI scans not exchangeable under Ho • Due to temporal autocorrelation

  11. Permutation TestLimitations • Computational Intensity • Analysis repeated for each relabeling • Not so bad on modern hardware • No analysis discussed below took more than 3 hours • Implementation Generality • Each experimental design type needs unique code to generate permutations • Not so bad for population inference with t-tests

  12. MCP Solutions:Measuring False Positives • Familywise Error Rate (FWER) • Familywise Error • Existence of one or more false positives • FWER is probability of familywise error • False Discovery Rate (FDR) • R voxels declared active, V falsely so • Observed false discovery rate: V/R • FDR = E(V/R)

  13. FWER MCP Solutions • Bonferroni • Maximum Distribution Methods • Random Field Theory • Permutation

  14. FWER MCP Solutions: Controlling FWER w/ Max • FWER & distribution of maximum FWER = P(FWE) = P(One or more voxels u | Ho) = P(Max voxel u | Ho) • 100(1-)%ile of max distn controls FWER FWER = P(Max voxel u | Ho)   u

  15. FWER MCP Solutions • Bonferroni • Maximum Distribution Methods • Random Field Theory • Permutation

  16. 5% Parametric Null Max Distribution 5% Nonparametric Null Max Distribution Controlling FWER: Permutation Test • Parametric methods • Assume distribution ofmax statistic under nullhypothesis • Nonparametric methods • Use data to find distribution of max statisticunder null hypothesis • Again, any max statistic!

  17. Permutation TestOther Statistics • Collect max distribution • To find threshold that controls FWER • Consider smoothed variance t statistic • To regularize low-df variance estimate

  18. mean difference Permutation TestSmoothed Variance t • Collect max distribution • To find threshold that controls FWER • Consider smoothed variance t statistic t-statistic variance

  19. Permutation TestSmoothed Variance t • Collect max distribution • To find threshold that controls FWER • Consider smoothed variance t statistic SmoothedVariancet-statistic mean difference smoothedvariance

  20. Active ... ... yes Baseline ... ... D UBKDA N XXXXX no Permutation TestExample • fMRI Study of Working Memory • 12 subjects, block design Marshuetz et al (2000) • Item Recognition • Active:View five letters, 2s pause, view probe letter, respond • Baseline: View XXXXX, 2s pause, view Y or N, respond • Second Level RFX • Difference image, A-B constructedfor each subject • One sample, smoothed variance t test

  21. Maximum Intensity Projection Thresholded t Permutation DistributionMaximum t Permutation TestExample • Permute! • 212 = 4,096 ways to flip 12 A/B labels • For each, note maximum of t image .

  22. Permutation TestExample • Compare with Bonferroni •  = 0.05/110,776 • Compare with parametric RFT • 110,776 222mm voxels • 5.15.86.9mm FWHM smoothness • 462.9 RESELs

  23. 378 sig. vox. Smoothed Variance t Statistic,Nonparametric Threshold Test Level vs. t11 Threshold uRF = 9.87uBonf = 9.805 sig. vox. uPerm = 7.67 58 sig. vox. t11Statistic, Nonparametric Threshold t11Statistic, RF & Bonf. Threshold

  24. Does this Generalize?RFT vs Bonf. vs Perm.

  25. RFT vs Bonf. vs Perm.

  26. Reliability with Small Groups • Consider n=50 group study • Event-related Odd-Ball paradigm, Kiehl, et al. • Analyze all 50 • Analyze with SPM and SnPM, find FWE thresh. • Randomly partition into 5 groups 10 • Analyze each with SPM & SnPM, find FWE thresh • Compare reliability of small groups with full • With and without variance smoothing .

  27. SPM t11: 5 groups of 10 vs all 505% FWE Threshold T>10.93 T>11.04 T>11.01 10 subj 10 subj 10 subj 2 8 11 15 18 35 41 43 44 50 1 3 20 23 24 27 28 32 34 40 9 13 14 16 19 21 25 29 30 45 T>10.69 T>10.10 T>4.66 10 subj 10 subj all 50 4 5 10 22 31 33 36 39 42 47 6 7 12 17 26 37 38 46 48 49

  28. SnPM t: 5 groups of 10 vs. all 505% FWE Threshold T>9.00 Arbitrary thresh of 9.0 T>7.06 T>8.28 T>6.3 10 subj 10 subj 10 subj 2 8 11 15 18 35 41 43 44 50 1 3 20 23 24 27 28 32 34 40 9 13 14 16 19 21 25 29 30 45 T>6.49 T>6.19 T>4.09 10 subj 10 subj all 50 4 5 10 22 31 33 36 39 42 47 6 7 12 17 26 37 38 46 48 49

  29. SnPM SmVar t: 5 groups of 10 vs. all 505% FWE Threshold T>9.00 all 50 Arbitrary thresh of 9.0 T>4.69 T>5.04 T>4.57 10 subj 10 subj 10 subj 2 8 11 15 18 35 41 43 44 50 1 3 20 23 24 27 28 32 34 40 9 13 14 16 19 21 25 29 30 45 T>4.84 T>4.64 10 subj 10 subj 4 5 10 22 31 33 36 39 42 47 6 7 12 17 26 37 38 46 48 49

  30. Conclusions • t random field results conservative for • Low df & smoothness • 9 df & 12 voxel FWHM; 19 df & < 10 voxel FWHM(based on Monte Carlo simulations, not shown) • Bonferroni not so bad for low smoothness • Nonparametric methods perform well overall

  31. Monte Carlo Evaluations • What’s going wrong? • Normality assumptions? • Smoothness assumptions? • Use Monte Carlo Simulations • Normality strictly true • Compare over range of smoothness, df • Previous work • Gaussian (Z) image results well-validated • t image results hardly validated at all!

  32. Monte Carlo EvaluationsChallenges • Accurately simulating t images • Cannot directly simulate smooth t images • Need to simulate  smooth Gaussian images ( = degrees of freedom) • Accounting for all sources of variability • Most M.C. evaluations use known smoothness • Smoothness not known • We estimated it residual images

  33. Autocorrelation Function Monte Carlo Evaluations • Simulated One Sample T test • 32x32x32 Images (32767 voxels) • Smoothness: 0, 1.5, 3, 6,12 FWHM • Degrees of Freedom: 9, 19, 29 • Realizations: 3000 • Permutation • 100 relabelings • Threshold: 95%ile of permutation distn of maximum • Random Field • Threshold: { u : E(u| Ho) = 0.05 } • Also Gaussian FWHM

  34. Inf. df FamilywiseErrorThresholds • RFT valid but conservative • Gaussian not so bad (FWHM >3) • t29 somewhat worse 29df more

  35. Inf df FamilywiseRejectionRates • Need > 6 voxel FWHM 29 df more

  36. 19 df FamilywiseErrorThresholds • RF & Perm adapt to smoothness • Perm & Truth close • Bonferroni close to truth for low smoothness 9 df more

  37. 19 df FamilywiseRejectionRates • Bonf good on low df, smoothness • Bonf bad for high smoothness • RF only good for high df, high smoothness • Perm exact 9 df more

  38. 19 df FamilywiseRejectionRates • Smoothness estimation is not (sole) problem 9 df cont

  39. Performance Summary • Bonferroni • Not adaptive to smoothness • Not so conservative for low smoothness • Random Field • Adaptive • Conservative for low smoothness & df • Permutation • Adaptive (Exact)

  40. Understanding Performance Differences • RFT Troubles • Multivariate Normality assumption • True by simulation • Smoothness estimation • Not much impact • Smoothness • You need lots, more at low df • High threshold assumption • Doesn’t improve for 0 less than 0.05 (not shown) HighThr

  41. Conclusions • t random field results conservative for • Low df & smoothness • 9 df & 12 voxel FWHM; 19 df & < 10 voxel FWHM • Bonferroni surprisingly satisfactory for low smoothness • Nonparametric methods perform well overall • More data and simulations needed • Need guidelines as to when RF is useful • Better understand what assumption/approximation fails

  42. References • TE Nichols and AP Holmes.Nonparametric Permutation Tests for Functional Neuroimaging: A Primer with Examples. Human Brain Mapping, 15:1-25, 2002. • http://www.sph.umich.edu/~nichols Data ThrRslt MC ThrRslt MC P Rslt EstSmCf

  43. Permutation TestExample • Permute! • 212 = 4,096 ways to flip A/B labels • For each, note max of smoothed variance t image . Permutation DistributionMax Smoothed Variance t Maximum Intensity Projection Threshold Sm. Var. t

  44. Back

More Related