--- title: "Introduction to mashr" author: "Matthew Stephens" date: "`r Sys.Date()`" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{mashr intro} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r setup, include=FALSE} knitr::opts_chunk$set(echo = TRUE,comment = "#",fig.width = 5, fig.height = 4,fig.align = "center") ``` # Goal This vignette introduces the `mashr` software for someone who is familiar with the basic idea in [Urbut et al.][urbut-biorxiv], which we strongly recommend reading before proceeding. In this first vignette we use only the "canonical" covariance matries to simplify presentation. However, an important aspect of `mashr` is the use of data-driven covariance matrices that are learned from the data, so when you are done here you should look at [the data-driven vignette](intro_mash_dd.html) and the [non-canonical matrix vignette](simulate_noncanon.html). If you think you may have correlations in your data measurements then also look at how to incorporate [correlations](intro_correlations.html). # Outline This package implements the "multivariate adaptive shrinkage" (mash) method from [Urbut et al.][urbut-biorxiv]. Mash is a method for dealing with large numbers of tests in many (e.g. dozens) different conditions. Here "conditions" can mean many different things: it could be different tissues (as in Urbut et al), or different time points, or different treatments, or even different phenotypes (think of testing multiple phenotypes at many genetic variants in a GWAS). There are essentially four steps to a mash analysis - Read in the data - Set up the covariance matrices to be used - Fit the model - Extract posterior summaries and other quantities of interest Here we go through an example that illustrates each of these steps in turn. In this example we use the same (simulated) data at each step. In complex practical applications -- especially very large applications -- one might want to use different subsets of the data at different steps. For example, one might only want to extract posterior summaries (step 4) for a subset of the tests. We will deal with such complications in later vignettes. For now, we note the one crucial rule: *The Crucial Rule:* Step 3 (fitting the `mash` model) must be performed with either *all* the tests you performed, or -- if that causes computational challenges -- a *large random subset* of tests. In particular, you must not use only a set of selected "significant" or "strong" tests in step 3. This is because `mash` uses step 3 to learn about the null signal in the data, as well as the non-null signal. In particular, in settings where most tests are null or nearly-null, this is the point where `mash` learns this, and consequently "shrinks" ("corrects") the posterior estimates towards 0. (Effectively this step is analogous to a "multiple testing correction" step.) # Simulate some data First we simulate some data for illustration. ```{r} library(ashr) library(mashr) set.seed(1) simdata = simple_sims(500,5,1) ``` This simulation routine creates a dataset with 5 conditions, and four different types of effect: null, independent among conditions, condition-specific in condition 1, and shared (equal effects in all conditions). It creates 500 effects of each type for a total of 2000 effects. # Step 1: Read in the data To run `mash` you need data consisting of a matrix of effects (`Bhat`) and a matrix of standard errors (`Shat`), for $J$ effects (rows) in $R$ conditions (columns). [If you have only access to $Z$ scores, you can set `Bhat` to the Z scores, and set `Shat` to be the matrix with all 1s]. The simulation above created both these matrices for us (in `simdata$Bhat` and `simdata$Shat`). To get these ready for applying `mash` you must first use `mash_set_data` to create a data object with those two pieces of information: ```{r} data = mash_set_data(simdata$Bhat, simdata$Shat) ``` # Step 2: Set up the covariance matrices There are two types of covariance matrix you can use in `mash`: "canonical" and "data-driven". The canonical ones are very easy to set up and so we use those here for illustration. However, in applications you will likely also want to use data-driven matrices, and this is an important feature of `mash`. See [the data-driven vignette](intro_mash_dd.html) for more details on how to do this. The function to set up canonical covariance matries is `cov_canonical`. The following sets up canonical covariances in `U.c` (we used `.c` to indicate canonical), which is a named list of matrices. ```{r} U.c = cov_canonical(data) print(names(U.c)) ``` # Step 3: fit the model Having set up the data and covariance matrices you are ready to fit the model using the `mash` function: ```{r} m.c = mash(data, U.c) ``` This can take a little time. What this does is to fit a mixture model to the data, estimating the mixture proportions. Specifically the model is that the true effects follow a mixture of multivariate normal distributions: $B \sim \sum_k \sum_l \pi_{kl} N(0, \omega_l U_k)$ where the $\omega_l$ are scaling factors set by the "grid" parameter in `mash` and the $U_k$ are the covariance matrices (here specified by `U.c`). Remember the Crucial Rule! This step must be peformed using all the tests (or a large random subset), because this is where `mash` learns that many tests are null and corrects for it. # Step 4: Extract Posterior Summaries You can extract estimates (posterior means and posterior standard deviations) and measures of significance (local false sign rates) using functions like `get_pm` (posterior mean), `get_psd` (posteriore standard deviation) and `get_lfsr` (local false sign rate): ```{r} head(get_lfsr(m.c)) head(get_pm(m.c)) head(get_psd(m.c)) ``` Each of these are $J \times R$ matrices. Use `get_significant_results` to find the indices of effects that are "significant", which here means they have lfsr less than t in at least one condition, where t is a threshold you specify (default 0.05). The output is ordered from most significant to least significant. ```{r} head(get_significant_results(m.c)) print(length(get_significant_results(m.c))) ``` You can also get the significant results in just a subset of conditions. For example ```{r} print(head(get_significant_results(m.c, conditions=1))) ``` ## Sharing Use `get_pairwise_sharing` to assess sharing of significant signals among each pair of conditions. Here the default definition of shared is "the same sign and within a factor 0.5 of each other". ```{r} print(get_pairwise_sharing(m.c)) ``` You can change the factor if you like. For example, here by setting the factor to be 0 you assess only if they are the same sign: ```{r} print(get_pairwise_sharing(m.c, factor=0)) ``` ## Measure of fit (log-likelihood) Use `get_loglik` to find the log-likelihood of the fit (this will only be useful when you have other fits to compare it with!) ```{r} print(get_loglik(m.c)) ``` ## Estimated mixture proportions Use `get_estimated_pi` to extract the estimates of the mixture proportions for different types of covariance matrix: ```{r} print(get_estimated_pi(m.c)) barplot(get_estimated_pi(m.c),las = 2) ``` Here we can see most of the mass is on the null, identity, `singletons_1` (which corresponds to effects that are specific to condition 1) and `equal_effects`. This reassuringly matches the way that these data were generated. ## Metaplot The following produces a meta-plot based on the posterior means and posterior variances of an effect. Here we look at the most significant result. ```{r} mash_plot_meta(m.c,get_significant_results(m.c)[1]) ``` # Session information. ```{r info} print(sessionInfo()) ``` [urbut-biorxiv]: https://www.biorxiv.org/content/10.1101/096552v4