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I have a cell array of p-values that have to be adjusted for multiple comparisons. How can I do that in Matlab? I can't find a built-in function.

In R I would do:

data.pValue_adjusted = p.adjust(data.pValue, method='bonferroni')

Is there a similiar function for Matlab? Ideally one that performs different adjustment methods (Bonferroni, Benjamini-Hochberg, FDR ...)?

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4 Answers 4

up vote 0 down vote accepted

This submission is probably what you are looking for, but it only implements the Bonferroni-Holm method. You would have to search the FEX for similar solutions to the other correction methods..

That said the Statistics Toolbox has the MULTCOMPARE method which is designed for multiple comparison tests, though it does not return the corrected p-values. Here is an example:

load fisheriris
[pVal tbl stats] = kruskalwallis(meas(:,1), species)   %# Kruskal-Wallis or ANOVA
title('Sepal Length'), xlabel('Groups'), ylabel('Value')

[c,m] = multcompare(stats, 'ctype','bonferroni', 'display','on');
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Bonferroni-Holm is good enough I think. I don't understand the details anyway ;) –  Martin Preusse Sep 6 '11 at 18:02
A quick read of the documentation suggests that multompare is only for anova-like measures (it seems to use t-test critical values - see the description of bonferroni - rather than adjusting p values) –  Eponymous Apr 1 '14 at 14:36
There is an important difference between Bonferroni* (FWER/Family-wise-error rate) and Benjamini* (FDR/False discovery rate). Very very roughly, the significance (aka alpha) in FWER is the probability that the test incorrectly rejects the null hypothesis even once. In FDR, the significance is the proportion of the rejections (discoveries) that are incorrect. So, if 40 are significant at a 95% level, under FWER that means that there is a 1 in 20 chance that 1 match is wrong. Whereas for FDR it means 1/20 are wrong - so on average 2 are wrong. –  Eponymous Apr 1 '14 at 14:55
@Eponymous: Thanks for the explanation. I think you are right about multcompare, seeing that its input is the stats structure which only contains the t-values not the p-values... As others have shown below, the solution is to use ttest2 to compute the raw p-values from multiple tests, then call mafdr from the Bioinformatics toolbox to get the adjusted p-values according to the Benjamini & Hochberg (FDR) method. I probably should have mentioned that I am not a statistician and this is not my area of expertise :) –  Amro Apr 1 '14 at 17:01

If you have Bioinformatics Toolbox, you can use MAFDR function to calculate p-values adjusted by False Discovery Rate.

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Good idea, thanks! –  Martin Preusse Aug 30 '11 at 15:43
For those without access to the Bioinformatics Toolbox there is an implementation of both Benjamini & Hochberg and Benjamini & Yekutieli at matlab central. Though not a drop-in replacement, it can be used instead of MAFDR. –  Eponymous Apr 2 '14 at 1:38
@Eponymous It's worth noting, though, that the official mafdr implementation by default uses the method of Storey (2002), which is generally more powerful than the original Benjamini-Hochberg version. Documentation here. –  Matt Jan 27 at 3:05

Have a look at T-test with Bonferroni Correction and related files in the Matlab File-exchange.

I hope this helps.

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Not really, I only need the correction for multiple testing. –  Martin Preusse Aug 27 '11 at 9:49

For people without the Bioinformatics Toolbox, the FDR (False Discovery Rate) method is also very nicely described here, it also provides a link with an fdr script.

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