1 / 22

fMRI Multiple Comparisons Problem

The False Discovery Rate A New Approach to the Multiple Comparisons Problem Thomas Nichols Department of Biostatistics University of Michigan. fMRI Multiple Comparisons Problem. 4-Dimensional Data 1,000 multivariate observations, each with 100,000 elements

tsuarez
Download Presentation

fMRI Multiple Comparisons Problem

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. The False Discovery RateA New Approach to the Multiple Comparisons ProblemThomas NicholsDepartment of BiostatisticsUniversity of Michigan

  2. fMRI Multiple Comparisons Problem • 4-Dimensional Data • 1,000 multivariate observations,each with 100,000 elements • 100,000 time series, each with 1,000 observations • Massively UnivariateApproach • 100,000 hypothesistests • Massive MCP! 1,000 . . . 3 2 1

  3. Solutions forMultiple Comparison Problem • A MCP Solution Must Control False Positives • How to measure multiple false positives? • Familywise Error Rate (FWER) • Chance of any false positives • Controlled by Bonferroni & Random Field Methods • False Discovery Rate (FDR) • Proportion of false positives among rejected tests

  4. Signal False Discovery RateIllustration: Noise Signal+Noise

  5. 11.3% 11.3% 12.5% 10.8% 11.5% 10.0% 10.7% 11.2% 10.2% 9.5% 6.7% 10.5% 12.2% 8.7% 10.4% 14.9% 9.3% 16.2% 13.8% 14.0% Control of Per Comparison Rate at 10% Percentage of Null Pixels that are False Positives Control of Familywise Error Rate at 10% FWE Occurrence of Familywise Error Control of False Discovery Rate at 10% Percentage of Activated Pixels that are False Positives

  6. p(i) i/V q/c(V) Benjamini & Hochberg Procedure • Select desired limit q on E(FDR) • Order p-values, p(1)p(2) ...  p(V) • Let r be largest i such that • Reject all hypotheses corresponding top(1), ... , p(r). 1 p(i) p-value i/V q/c(V) 0 0 1 i/V JRSS-B (1995) 57:289-300

  7. Benjamini & Hochberg Procedure • c(V) = 1 • Positive Regression Dependency on Subsets • Technical condition, special cases include • Independent data • Multivariate Normal with all positive correlations • Result by Benjamini & Yekutieli. • c(V) = i=1,...,V 1/i log(V)+0.5772 • Arbitrary covariance structure

  8. Signal Intensity 3.0 Signal Extent 1.0 Noise Smoothness 3.0 Benjamini & Hochberg:Varying Signal Extent p = z = 1

  9. Signal Intensity 3.0 Signal Extent 2.0 Noise Smoothness 3.0 Benjamini & Hochberg:Varying Signal Extent p = z = 2

  10. Signal Intensity 3.0 Signal Extent 3.0 Noise Smoothness 3.0 Benjamini & Hochberg:Varying Signal Extent p = z = 3

  11. Signal Intensity 3.0 Signal Extent 5.0 Noise Smoothness 3.0 Benjamini & Hochberg:Varying Signal Extent p = 0.000252 z = 3.48 4

  12. Signal Intensity 3.0 Signal Extent 9.5 Noise Smoothness 3.0 Benjamini & Hochberg:Varying Signal Extent p = 0.001628 z = 2.94 5

  13. Signal Intensity 3.0 Signal Extent 16.5 Noise Smoothness 3.0 Benjamini & Hochberg:Varying Signal Extent p = 0.007157 z = 2.45 6

  14. Signal Intensity 3.0 Signal Extent 25.0 Noise Smoothness 3.0 Benjamini & Hochberg:Varying Signal Extent p = 0.019274 z = 2.07 7

  15. Benjamini & Hochberg: Properties • Adaptive • Larger the signal, the lower the threshold • Larger the signal, the more false positives • False positives constant as fraction of rejected tests • Not a problem with imaging’s sparse signals • Smoothness OK • Smoothing introduces positive correlations

  16. FDR: Example • Verbal fluency data • 14 42-second blocks • ABABAB... • A: Two syllable words presented aurally • B: Silence • Imaging parameters • 2Tesla scanner, TR = 7 sec • 84 64x64x64 images of 3 x 3 x 3 mm voxels

  17. FDR Example:Plot of FDR Inequality p(i) ( i/V ) ( q/c(V) )

  18. FDR: Example FDR  0.05Indep/PRDSt0 = 3.8119 FDR  0.05Arbitrary Cov.t0 = 5.0747 FWER  0.05Bonferronit0 = 5.485

  19. FDR Software for SPM http://www.sph.umich.edu/~nichols/FDR

  20. FDR: Conclusions • False Discovery Rate • A new false positive metric • Benjamini & Hochberg FDR Method • Straightforward solution to fNI MCP • Just one way of controlling FDR • New methods under developmente.g. C. Genovese or J. Storey • Limitations • Arbitrary dependence result less sensitive Start Ill http://www.sph.umich.edu/~nichols/FDR Prop

  21. References • Benjamini Y, Hochberg Y (1995). Controlling the false discovery rate: A practical and powerful approach to multiple testing. Journal of the Royal Statistical Society, Series B, 57:289--300. • Benjamini, Y, Yekutieli D (2002). The control of the false discovery rate under dependence. Annals of Statistics. To appear. • Genovese CR, Lazar N, Nichols TE (2002). Thresholding of Statistical Maps in Functional Neuroimaging Using the False Discovery Rate. NeuroImage, 15:870-878.

  22. Positive Regression Dependency • Does fMRI data exhibit total positive correlation? • Example • 160 scan experiment • Spatialautocorrelationof residuals • Single voxelwith all others • Negative correlationexists!

More Related