IHW 1.12.0
You will probably be familiar with multiple testing procedures that take a set of p-values and then calculate adjusted p-values. Given a significance level \(\alpha\), one can then declare the rejected hypotheses. In R this is most commonly done with the p.adjust
function in the stats package, and a popular choice is controlling the false discovery rate (FDR) with the method of (Benjamini and Hochberg 1995), provided by the choice method="BH"
in p.adjust
. A characteristic feature of this and other methods –responsible both for their versatility and limitations– is that they do not use anything else beyond the p-values: no other potential information that might set the tests apart, such as different signal quality, power, prior probability.
IHW (Independent Hypothesis Weighting) is also a multiple testing procedure, but in addition to the p-values it allows you to specify a covariate for each test. The covariate should be informative of the power or prior probability of each individual test, but is chosen such that the p-values for those hypotheses that are truly null do not depend on the covariate (Ignatiadis et al. 2016). Therefore the input of IHW is the following:
IHW then calculates weights for each p-value (non-negative numbers \(w_i \geq 0\) such that they average to 1, \(\sum_{i=1}^m w_i = m\)). IHW also returns a vector of adjusted p-values by applying the procedure of Benjamini Hochberg (BH) to the weighted p-values \(P^\text{weighted}_i = \frac{P_i}{w_i}\).
The weights allow different prioritization of the individual hypotheses, based on their covariate. This means that the ranking of hypotheses with p-value weighting is in general different than without. Two hypotheses with the same p-value can have different weighted p-values: the one with the higher weight will then have a smaller value of \(P^\text{weighted}_i\), and consequently it can even happen that one but not the other gets rejected by the subsequent BH procedure.
As an example, let’s see how to use the IHW package in analysing for RNA-Seq differential gene expression. and then also look at some other examples where the method is applicable.
We analyze the airway RNA-Seq dataset using DESeq2 (Love, Huber, and Anders 2014).
library("DESeq2")
library("dplyr")
data("airway", package = "airway")
dds <- DESeqDataSet(se = airway, design = ~ cell + dex) %>% DESeq
deRes <- as.data.frame(results(dds))
The output is a dataframe with the following columns, and one row for each tested hypothesis (i.e., for each gene):
colnames(deRes)
## [1] "baseMean" "log2FoldChange" "lfcSE" "stat"
## [5] "pvalue" "padj"
In particular, we have p-values and baseMean (i.e., the mean of normalized counts) for each gene. As argued in the DESeq2 paper, these two statistics are approximately independent under the null hypothesis. Thus we have all the ingredient necessary for a IHW analysis (p-values and covariates), which we will apply at a significance level 0.1.
First load IHW:
library("IHW")
ihwRes <- ihw(pvalue ~ baseMean, data = deRes, alpha = 0.1)
This returns an object of the class ihwResult. We can get, e.g., the total number of rejections.
rejections(ihwRes)
## [1] 4892
And we can also extract the adjusted p-values:
head(adj_pvalues(ihwRes))
## [1] 0.00102074 NA 0.16260848 0.86124686 1.00000000 1.00000000
sum(adj_pvalues(ihwRes) <= 0.1, na.rm = TRUE) == rejections(ihwRes)
## [1] TRUE
We can compare this to the result of applying the method of Benjamini and Hochberg to the p-values only:
padjBH <- p.adjust(deRes$pvalue, method = "BH")
sum(padjBH <= 0.1, na.rm = TRUE)
## [1] 4099
IHW produced quite a bit more rejections than that. How did we get this power? Essentially it was possible by assigning appropriate weights to each hypothesis. We can retrieve the weights as follows:
head(weights(ihwRes))
## [1] 2.366789 NA 2.366789 2.366789 1.263387 0.000000
Internally, what happened was the following: We split the hypotheses into \(n\) different strata (here \(n=22\)) based on increasing value of baseMean
and we also randomly split them into \(k\) folds (here \(k=5\)). Then, for each combination of fold and stratum, we learned the weights. The discretization into strata facilitates the estimation of the distribution function conditionally on the covariate and the optimization of the weights. The division into random folds helps us to avoid overfitting the data, something which could otherwise result in loss of control of the FDR (Ignatiadis et al. 2016).
The values of \(n\) and \(k\) can be accessed through
c(nbins(ihwRes), nfolds(ihwRes))
## [1] 22 5
In particular, each hypothesis test gets assigned a weight depending on the combination of its assigned fold and stratum.
We can also see this internal representation of the weights as a (\(n\) X \(k\)) matrix:
weights(ihwRes, levels_only = TRUE)
## [,1] [,2] [,3] [,4] [,5]
## [1,] 0.0000000 0.0000000 0.00000000 0.0000000 0.0000000
## [2,] 0.0000000 0.0000000 0.00000000 0.0000000 0.0000000
## [3,] 0.0000000 0.0000000 0.00000000 0.0000000 0.0000000
## [4,] 0.0000000 0.0000000 0.00000000 0.0000000 0.0000000
## [5,] 0.0000000 0.0000000 0.00000000 0.0000000 0.0000000
## [6,] 0.0000000 0.0000000 0.00000000 0.0000000 0.0000000
## [7,] 0.0000000 0.0000000 0.00000000 0.0000000 0.0000000
## [8,] 0.0000000 0.0000000 0.00000000 0.0000000 0.0000000
## [9,] 0.0000000 0.0000000 0.00000000 0.0000000 0.0000000
## [10,] 0.0000000 0.0000000 0.00000000 0.0000000 0.0000000
## [11,] 0.2109405 0.2081831 0.03842498 0.2571217 0.2597236
## [12,] 0.9162309 0.7947122 0.21091412 0.8534397 0.8345059
## [13,] 0.9254299 0.7947122 0.92276703 0.8534397 0.9075388
## [14,] 1.2633867 1.0511555 1.25975138 1.2265498 1.2389620
## [15,] 2.8869427 2.4482091 2.52720882 2.8097858 2.3857529
## [16,] 2.8869427 2.4482091 2.52720882 2.8097858 2.3857529
## [17,] 2.0875843 2.3667885 3.19833627 2.8097858 2.3503772
## [18,] 2.3930928 2.3667885 2.88745673 2.3268306 2.3503772
## [19,] 2.1950851 2.3667885 2.38786536 1.9327308 2.2688409
## [20,] 2.4675513 2.4159384 2.38786536 2.3956042 2.3637281
## [21,] 1.8521421 2.2447180 1.58228861 1.5405863 2.3335436
## [22,] 2.2744492 2.2447180 2.26790467 2.0358541 2.2112801
plot(ihwRes)
We see that the general trend is driven by the covariate (stratum) and is the same across the different folds. As expected, the weight functions calculated on different random subsets of the data behave similarly. For the data at hand, genes with very low baseMean
count get assigned a weight of 0, while genes with high baseMean count get prioritized.
plot(ihwRes, what = "decisionboundary")
The plot shows the implied decision boundaries for the unweighted p-values, as a function of the covariate.
library("ggplot2")
gg <- ggplot(as.data.frame(ihwRes), aes(x = pvalue, y = adj_pvalue, col = group)) +
geom_point(size = 0.25) + scale_colour_hue(l = 70, c = 150, drop = FALSE)
gg
gg %+% subset(as.data.frame(ihwRes), adj_pvalue <= 0.2)
The ihwResult object ihwRes
can be converted to a dataframe that contains the following columns:
ihwResDf <- as.data.frame(ihwRes)
colnames(ihwResDf)
## [1] "pvalue" "adj_pvalue" "weight" "weighted_pvalue"
## [5] "group" "covariate" "fold"
The standard IHW method presented above controls the FDR by using a weighted Benjamini-Hochberg procedure with data-driven weights. The same principle can be applied for FWER control by using a weighted Bonferroni procedure. Everything works exactly as above, just use the argument adjustment_type
. For example:
ihwBonferroni <- ihw(pvalue ~ baseMean, data = deRes, alpha = 0.1, adjustment_type = "bonferroni")
In which cases is IHW applicable? Whenever we have a covariate that is:
baseMean
, as illustrated above (Love, Huber, and Anders 2014).The power gains of IHW are related to property 1, while its statistical validity relies on properties 2 and 3. For many practically useful combinations of covariates with test statistics, property 2 is easy to prove (e.g. through Basu’s theorem as in the \(t\)-test / variance example), while for others it follows by the use of deterministic covariates and well calibrated p-values (as in the SNP-gene distance example). Property 3 is more complicated from a theoretical perspective, but rarely presents a problem in practice – in particular, when the covariate is well thought out, and when the test statistics is such that it is suitable for the Benjamini Hochberg method without weighting.
If one expects strong correlations among the tests, then one should take care to use a covariate that is not a driving force behind these correlations. For example, in genome-wide association studies, the genomic coordinate of each SNP tested is not a valid covariate, because the position is related to linkage disequilibrium (LD) and thus correlation among tests. On the other hand, in eQTL, the distance between SNPs and phenotype (i.e. transcribed gene) is not directly related to (i.e. does not notably increase or decrease) any potential correlations between test statistics, and thus is a valid covariate.
Below we describe a few useful diagnostics to check whether the criteria for the covariates are applicable. If any of these are violated, one should not use IHW with the given covariate.
To check whether the covariate is informative about power under the alternative (property 1), plot the p-values (or usually better, \(-\log_{10}(\text{p-values})\)) against the ranks of the covariate:
deRes <- na.omit(deRes)
deRes$geneid <- as.numeric(gsub("ENSG[+]*", "", rownames(deRes)))
# set up data frame for ggplotting
rbind(data.frame(pvalue = deRes$pvalue, covariate = rank(deRes$baseMean)/nrow(deRes),
covariate_type="base mean"),
data.frame(pvalue = deRes$pvalue, covariate = rank(deRes$geneid)/nrow(deRes),
covariate_type="gene id")) %>%
ggplot(aes(x = covariate, y = -log10(pvalue))) + geom_hex(bins = 100) +
facet_grid( . ~ covariate_type) + ylab(expression(-log[10]~p))
On the left, we plotted \(-\log_{10}(\text{p-value})\) agains the (normalized) ranks of the base mean of normalized counts. This was the covariate we used in our DESeq2 example above. We see the trend: low p-values are enriched at high covariate values. For very low covariate values, there are almost no small p-values. This indicates that the base mean covariate is correlated with power under the alternative.
On the other hand, the right plot uses a less useful statistic; the gene identifiers interpreted as numbers. Here, there is no obvious trend to be detected.
One of the most useful diagnostic plots is the p-value histogram (before applying any multiple testing procedure). We first do this for our DESeq2 p-values:
ggplot(deRes, aes(x = pvalue)) + geom_histogram(binwidth = 0.025, boundary = 0)
This is a well calibrated histogram. As expected, for large p-values (e.g., for p-values \(\geq 0.5\)) the distribution looks uniform. This part of the histogram corresponds mainly to null p-values. On the other hand, there is a peak close to 0. This is due to the alternative hypotheses and can be observed whenever the tests have enough power to detect the alternative. In particular, in the airway dataset, as analyzed with DESeq2, we have a lot of power to detect differentially expressed genes. If you are not familiar with these concepts and more generally with interpreting p-value histograms, we recommend reading David Robinson’s blog post.
Now, when applying IHW with covariates, it is instrumental to not only check the histogram over all p-values, but also to check histograms stratified by the covariate.
Here we split the hypotheses by the base mean of normalized counts into a few strata and then visualize the conditional histograms:
deRes$baseMeanGroup <- groups_by_filter(deRes$baseMean, 8)
ggplot(deRes, aes(x=pvalue)) +
geom_histogram(binwidth = 0.025, boundary = 0) +
facet_wrap( ~ baseMeanGroup, nrow = 2)
Note that all of these histograms are well calibrated, since all of them show a uniform distribution at large p-values. In many realistic examples, if this is the case, then IHW will control the FDR. Thus, this is a good check of whether properties 2 and 3 hold. In addition, these conditional histograms also illustrate whether property 1 holds: as we move to strata with higher mean counts, the peak close to 0 becomes taller and the height of the uniform tail becomes lower. This means that the covariate is associated with power under the alternative.
The empirical cumulative distribution functions (ECDF) offer a variation of this visualisation. Here, one should check whether the curves can be easily distinguished and whether they are almost linear for high p-values.
ggplot(deRes, aes(x = pvalue, col = baseMeanGroup)) + stat_ecdf(geom = "step")
Finally, as an example of an invalid covariate, we use the estimated log fold change. Of course, this is not independent of the p-values under the null hypothesis. We confirm this by plotting conditional histograms / ECDFs, which are not well calibrated:
deRes$lfcGroup <- groups_by_filter(abs(deRes$log2FoldChange),8)
ggplot(deRes, aes(x = pvalue)) +
geom_histogram(binwidth = 0.025, boundary = 0) +
facet_wrap( ~ lfcGroup, nrow=2)
ggplot(deRes, aes(x = pvalue, col = lfcGroup)) + stat_ecdf(geom = "step")
For more details regarding choice and diagnostics of covariates, please also consult the Independent Filtering paper (Bourgon, Gentleman, and Huber 2010), as well as the genefilter vignettes.
So far, we have assumed that a complete list of p-values is available, i.e. for each test that was performed we know the resulting p-value. However, this information is not always available or practical.
Since rejections take place at the low end of the p-value distribution, we do not lose a lot of information by discarding the exact values of the higher p-values, as long as we keep track of how many of them there are. Thus, the above situations can be easily handled.
Before proceeding with the walkthrough for handling such cases with IHW, we quickly review how this is handled by p.adjust
. We first simulate some data, where the power under the alternative depends on a covariate X
. p-values are calculated by a simple one-sided z-test.
sim <- tibble(
X = runif(100000, min = 0, max = 2.5), # covariate
H = rbinom(length(X), size = 1, prob = 0.1), # hypothesis true or false
Z = rnorm(length(X), mean = H * X), # Z-score
p = 1 - pnorm(Z)) # pvalue
We can apply the Benjamini-Hochberg procedure to these p-values:
sim <- mutate(sim, padj = p.adjust(p, method="BH"))
sum(sim$padj <= 0.1)
## [1] 549
Now assume we only have access to the p-values \(\leq 0.1\):
reporting_threshold <- 0.1
sim <- mutate(sim, reported = (p <= reporting_threshold))
simSub <- filter(sim, reported)
Then we can still use p.adjust
on simSub
, as long as we inform it of how many hypotheses were originally. We specify this by setting the n
function argument.
simSub = mutate(simSub, padj2 = p.adjust(p, method = "BH", n = nrow(sim)))
ggplot(simSub, aes(x = padj, y = padj2)) + geom_point(cex = 0.2)
The plot shows the BH-adjusted p-values computed from all p-values and then subset (x-axis) versus the BH-adjusted p-values computed from the subset of reported
p-values only, using the n
argument of p.adjust
(y-axis).
stopifnot(with(simSub, max(abs(padj - padj2)) <= 0.001))
We see that the results agree. Now, the same approach can be used with IHW, but is slighly more complicated. In particular, we need to provide information about how many hypotheses were tested at each given value of the covariate. This means that there are two modifications to the standard IHW workflow:
groups_by_filter
is provided, which returns a factor that stratifies a numeric covariate into a given number of groups with approximately the same number of hypotheses in each of the groups. This is a very simple function, largely equivalent to cut(., quantile(., probs = seq(0, 1, length.out = nbins))
.m_groups
argument. (When there is only 1 bin, IHW reduces to BH and m_groups
would be equivalent to the n
argument of p.adjust
.)For example, if the whole grouping factor is available (e.g., when it was generated by using groups_by_filter
on the full vector of covariates), then one can apply the table
function to it to calculate the number of hypotheses per bin. This is then used as an input for the m_groups
argument. More elaborate strategies are needed in more complicated cases, e.g., when the full vector of covariates does not fit into memory.
nbins <- 20
sim <- mutate(sim, group = groups_by_filter(X, nbins))
m_groups <- table(sim$group)
Now we can apply IHW to the data subset that results from only keeping low p-values (reported
is TRUE
), with the manually specified m_groups
.
ihwS <- ihw(p ~ group, alpha = 0.1, data = filter(sim, reported), m_groups = m_groups)
ihwS
## ihwResult object with 13711 hypothesis tests
## Nominal FDR control level: 0.1
## Split into 20 bins, based on an ordinal covariate
For comparison, let’s also call IHW on the full dataset (in a real application, this would normally not be available).
ihwF <- ihw(p ~ group, alpha = 0.1, data = sim)
Now we can compare ihwS
and ihwF
. This is a little bit more subtle than above for the BH method, because
unlike BH, IHW also uses the information available in higher p-values to determine the weights (i.e. the Grenander estimator of the p-value distribution will be slighly different if you only use a subset of small p-values), and more importantly
because IHW involves “random” data splitting, which pans out differently when the set of hypotheses is different.
Modulo these two aspects, the results should be approximately the same, in terms of the weights curves and the final number of rejections.
gridExtra::grid.arrange(
plot(ihwS),
plot(ihwF),
ncol = 2)
c(rejections(ihwS),
rejections(ihwF))
## [1] 935 934
We can also plot the weighted, BH-adjusted p-values against each other:
qplot(adj_pvalues(ihwF)[sim$reported], adj_pvalues(ihwS), cex = I(0.2),
xlim = c(0, 0.1), ylim = c(0, 0.1)) + coord_fixed()
Benjamini, Yoav, and Yosef Hochberg. 1995. “Controlling the False Discovery Rate: A Practical and Powerful Approach to Multiple Testing.” Journal of the Royal Statistical Society. Series B (Statistical Methodology), 289–300.
Bourgon, Richard, Robert Gentleman, and Wolfgang Huber. 2010. “Independent Filtering Increases Detection Power for High-Throughput Experiments.” Proceedings of the National Academy of Sciences (PNAS) 107 (21):9546–51.
Ignatiadis, Nikolaos, Bernd Klaus, Judith B Zaugg, and Wolfgang Huber. 2016. “Data-Driven Hypothesis Weighting Increases Detection Power in Genome-Scale Multiple Testing.” Nature Methods. https://doi.org/10.1038/nmeth.3885.
Love, Michael I, Wolfgang Huber, and Simon Anders. 2014. “Moderated Estimation of Fold Change and Dispersion for RNA-Seq Data with DESeq2.” Gnome Biology 15 (12):550.
Ochoa, Alejandro, John D Storey, Manuel Llinás, and Mona Singh. 2015. “Beyond the E-Value: Stratified Statistics for Protein Domain Prediction.” PLoS Computational Biology 11 (11):e1004509.
Shabalin, Andrey A. 2012. “Matrix eQTL: Ultra Fast eQTL Analysis via Large Matrix Operations.” Bioinformatics 28 (10):1353–8.