--- title: "Introduction to Splatter" author: "Luke Zappia" date: "`r Sys.Date()`" output: BiocStyle::html_document: toc: true vignette: > %\VignetteIndexEntry{An introduction to the Splatter package} %\VignetteEngine{knitr::rmarkdown} \usepackage[utf8]{inputenc} --- ```{r knitr-options, echo = FALSE, message = FALSE, warning = FALSE} # To render an HTML version that works nicely with github and web pages, do: # rmarkdown::render("vignettes/splatter.Rmd", "all") knitr::opts_chunk$set(fig.align = 'center', fig.width = 6, fig.height = 5, dev = 'png') # Use exact BSPARAM to avoid warnings options(BiocSingularParam.default = BiocSingular::ExactParam()) ``` ![Splatter logo](splatter-logo-small.png) Welcome to Splatter! Splatter is an R package for the simple simulation of single-cell RNA sequencing data. This vignette gives an overview and introduction to Splatter's functionality. # Installation Splatter can be installed from Bioconductor: ```{r install, eval = FALSE} if (!requireNamespace("BiocManager", quietly=TRUE)) install.packages("BiocManager") BiocManager::install("splatter") ``` To install the most recent development version from Github use: ```{r install-github, eval = FALSE} BiocManager::install("Oshlack/splatter", dependencies = TRUE, build_vignettes = TRUE) ``` # Quickstart Assuming you already have a matrix of count data similar to that you wish to simulate there are two simple steps to creating a simulated data set with Splatter. Here is an example a mock dataset generated with the `scater` package: ```{r quickstart} # Load package library(splatter) # Create mock data library(scater) set.seed(1) sce <- mockSCE() # Estimate parameters from mock data params <- splatEstimate(sce) # Simulate data using estimated parameters sim <- splatSimulate(params) ``` These steps will be explained in detail in the following sections but briefly the first step takes a dataset and estimates simulation parameters from it and the second step takes those parameters and simulates a new dataset. # The Splat simulation Before we look at how we estimate parameters let's first look at how Splatter simulates data and what those parameters are. We use the term 'Splat' to refer to the Splatter's own simulation and differentiate it from the package itself. The core of the Splat model is a gamma-Poisson distribution used to generate a gene by cell matrix of counts. Mean expression levels for each gene are simulated from a [gamma distribution][gamma] and the Biological Coefficient of Variation is used to enforce a mean-variance trend before counts are simulated from a [Poisson distribution][poisson]. Splat also allows you to simulate expression outlier genes (genes with mean expression outside the gamma distribution) and dropout (random knock out of counts based on mean expression). Each cell is given an expected library size (simulated from a log-normal distribution) that makes it easier to match to a given dataset. Splat can also simulate differential expression between groups of different types of cells or differentiation paths between different cells types where expression changes in a continuous way. These are described further in the [simulating counts] section. # The `SplatParams` object All the parameters for the Splat simulation are stored in a `SplatParams` object. Let's create a new one and see what it looks like. ```{r SplatParams} params <- newSplatParams() params ``` As well as telling us what type of object we have ("A `Params` object of class `SplatParams`") and showing us the values of the parameter this output gives us some extra information. We can see which parameters can be estimated by the `splatEstimate` function (those in parentheses), which can't be estimated (those in brackets) and which have been changed from their default values (those in ALL CAPS). For more details about the parameters of the Splat simulation refer to the [Splat parameters vignette](splat_params.html). ## Getting and setting If we want to look at a particular parameter, for example the number of genes to simulate, we can extract it using the `getParam` function: ```{r getParam} getParam(params, "nGenes") ``` Alternatively, to give a parameter a new value we can use the `setParam` function: ```{r setParam} params <- setParam(params, "nGenes", 5000) getParam(params, "nGenes") ``` If we want to extract multiple parameters (as a list) or set multiple parameters we can use the `getParams` or `setParams` functions: ```{r getParams-setParams} # Set multiple parameters at once (using a list) params <- setParams(params, update = list(nGenes = 8000, mean.rate = 0.5)) # Extract multiple parameters as a list getParams(params, c("nGenes", "mean.rate", "mean.shape")) # Set multiple parameters at once (using additional arguments) params <- setParams(params, mean.shape = 0.5, de.prob = 0.2) params ``` The parameters with have changed are now shown in ALL CAPS to indicate that they been changed form the default. We can also set parameters directly when we call `newSplatParams`: ```{r newSplatParams-set} params <- newSplatParams(lib.loc = 12, lib.scale = 0.6) getParams(params, c("lib.loc", "lib.scale")) ``` # Estimating parameters Splat allows you to estimate many of it's parameters from a data set containing counts using the `splatEstimate` function. ```{r splatEstimate} # Get the mock counts matrix counts <- counts(sce) # Check that counts is an integer matrix class(counts) typeof(counts) # Check the dimensions, each row is a gene, each column is a cell dim(counts) # Show the first few entries counts[1:5, 1:5] params <- splatEstimate(counts) ``` Here we estimated parameters from a counts matrix but `splatEstimate` can also take a `SingleCellExperiment` object. The estimation process has the following steps: 1. Mean parameters are estimated by fitting a gamma distribution to the mean expression levels. 2. Library size parameters are estimated by fitting a log-normal distribution to the library sizes. 3. Expression outlier parameters are estimated by determining the number of outliers and fitting a log-normal distribution to their difference from the median. 4. BCV parameters are estimated using the `estimateDisp` function from the `edgeR` package. 5. Dropout parameters are estimated by checking if dropout is present and fitting a logistic function to the relationship between mean expression and proportion of zeros. For more details of the estimation procedures see `?splatEstimate`. # Simulating counts Once we have a set of parameters we are happy with we can use `splatSimulate` to simulate counts. If we want to make small adjustments to the parameters we can provide them as additional arguments, alternatively if we don't supply any parameters the defaults will be used: ```{r splatSimulate} sim <- splatSimulate(params, nGenes = 1000) sim ``` Looking at the output of `splatSimulate` we can see that `sim` is `SingleCellExperiment` object with `r nrow(sim)` features (genes) and `r ncol(sim)` samples (cells). The main part of this object is a features by samples matrix containing the simulated counts (accessed using `counts`), although it can also hold other expression measures such as FPKM or TPM. Additionally a `SingleCellExperiment` contains phenotype information about each cell (accessed using `colData`) and feature information about each gene (accessed using `rowData`). Splatter uses these slots, as well as `assays`, to store information about the intermediate values of the simulation. ```{r SCE} # Access the counts counts(sim)[1:5, 1:5] # Information about genes head(rowData(sim)) # Information about cells head(colData(sim)) # Gene by cell matrices names(assays(sim)) # Example of cell means matrix assays(sim)$CellMeans[1:5, 1:5] ``` An additional (big) advantage of outputting a `SingleCellExperiment` is that we get immediate access to other analysis packages, such as the plotting functions in `scater`. For example we can make a PCA plot: ```{r pca} # Use scater to calculate logcounts sim <- logNormCounts(sim) # Plot PCA sim <- runPCA(sim) plotPCA(sim) ``` (**NOTE:** Your values and plots may look different as the simulation is random and produces different results each time it is run.) For more details about the `SingleCellExperiment` object refer to the [vignette] [SCE-vignette]. For information about what you can do with `scater` refer to the `scater` documentation and [vignette][scater-vignette]. The `splatSimulate` function outputs the following additional information about the simulation: * **Cell information (`colData`)** * `Cell` - Unique cell identifier. * `Group` - The group or path the cell belongs to. * `ExpLibSize` - The expected library size for that cell. * `Step` (paths only) - How far along the path each cell is. * **Gene information (`rowData`)** * `Gene` - Unique gene identifier. * `BaseGeneMean` - The base expression level for that gene. * `OutlierFactor` - Expression outlier factor for that gene (1 is not an outlier). * `GeneMean` - Expression level after applying outlier factors. * `DEFac[Group]` - The differential expression factor for each gene in a particular group (1 is not differentially expressed). * `GeneMean[Group]` - Expression level of a gene in a particular group after applying differential expression factors. * **Gene by cell information (`assays`)** * `BaseCellMeans` - The expression of genes in each cell adjusted for expected library size. * `BCV` - The Biological Coefficient of Variation for each gene in each cell. * `CellMeans` - The expression level of genes in each cell adjusted for BCV. * `TrueCounts` - The simulated counts before dropout. * `Dropout` - Logical matrix showing which counts have been dropped in which cells. Values that have been added by Splatter are named using `UpperCamelCase` to separate them from the `underscore_naming` used by `scater` and other packages. For more information on the simulation see `?splatSimulate`. ## Simulating groups So far we have only simulated a single population of cells but often we are interested in investigating a mixed population of cells and looking to see what cell types are present or what differences there are between them. Splatter is able to simulate these situations by changing the `method` argument Here we are going to simulate two groups, by specifying the `group.prob` parameter and setting the `method` parameter to `"groups"`: (**NOTE:** We have also set the `verbose` argument to `FALSE` to stop Splatter printing progress messages.) ```{r groups} sim.groups <- splatSimulate(group.prob = c(0.5, 0.5), method = "groups", verbose = FALSE) sim.groups <- logNormCounts(sim.groups) sim.groups <- runPCA(sim.groups) plotPCA(sim.groups, colour_by = "Group") ``` As we have set both the group probabilities to 0.5 we should get approximately equal numbers of cells in each group (around 50 in this case). If we wanted uneven groups we could set `group.prob` to any set of probabilities that sum to 1. ## Simulating paths The other situation that is often of interest is a differentiation process where one cell type is changing into another. Splatter approximates this process by simulating a series of steps between two groups and randomly assigning each cell to a step. We can create this kind of simulation using the `"paths"` method. ```{r paths} sim.paths <- splatSimulate(de.prob = 0.2, nGenes = 1000, method = "paths", verbose = FALSE) sim.paths <- logNormCounts(sim.paths) sim.paths <- runPCA(sim.paths) plotPCA(sim.paths, colour_by = "Step") ``` Here the colours represent the "step" of each cell or how far along the differentiation path it is. We can see that the cells with dark colours are more similar to the originating cell type and the light coloured cells are closer to the final, differentiated, cell type. By setting additional parameters it is possible to simulate more complex process (for example multiple mature cell types from a single progenitor). ## Batch effects Another factor that is important in the analysis of any sequencing experiment are batch effects, technical variation that is common to a set of samples processed at the same time. We apply batch effects by telling Splatter how many cells are in each batch: ```{r batches} sim.batches <- splatSimulate(batchCells = c(50, 50), verbose = FALSE) sim.batches <- logNormCounts(sim.batches) sim.batches <- runPCA(sim.batches) plotPCA(sim.batches, colour_by = "Batch") ``` This looks at lot like when we simulated groups and that is because the process is very similar. The difference is that batch effects are applied to all genes, not just those that are differentially expressed, and the effects are usually smaller. By combining groups and batches we can simulate both unwanted variation that we aren't interested in (batch) and the wanted variation we are looking for (group): ```{r batch-groups} sim.groups <- splatSimulate(batchCells = c(50, 50), group.prob = c(0.5, 0.5), method = "groups", verbose = FALSE) sim.groups <- logNormCounts(sim.groups) sim.groups <- runPCA(sim.groups) plotPCA(sim.groups, shape_by = "Batch", colour_by = "Group") ``` Here we see that the effects of the group (first component) are stronger than the batch effects (second component) but by adjusting the parameters we could made the batch effects dominate. ## Convenience functions Each of the Splatter simulation methods has it's own convenience function. To simulate a single population use `splatSimulateSingle()` (equivalent to `splatSimulate(method = "single")`), to simulate groups use `splatSimulateGroups()` (equivalent to `splatSimulate(method = "groups")`) or to simulate paths use `splatSimulatePaths()` (equivalent to `splatSimulate(method = "paths")`). # Other simulations As well as it's own Splat simulation method the Splatter package contains implementations of other single-cell RNA-seq simulations that have been published or wrappers around simulations included in other packages. To see all the available simulations run the `listSims()` function: ```{r listSims} listSims() ``` Each simulation has it's own prefix which gives the name of the functions associated with that simulation. For example the prefix for the simple simulation is `simple` so it would store it's parameters in a `SimpleParams` object that can be created using `newSimpleParams()` or estimated from real data using `simpleEstimate()`. To simulate data using that simulation you would use `simpleSimulate()`. Each simulation returns a `SingleCellExperiment` object with intermediate values similar to that returned by `splatSimulate()`. For more detailed information on each simulation see the appropriate help page (eg. `?simpleSimulate` for information on how the simple simulation works or `? lun2Estimate` for details of how the Lun 2 simulation estimates parameters) or refer to the appropriate paper or package. # Other expression values Splatter is designed to simulate count data but some analysis methods expect other expression values, particularly length-normalised values such as TPM or FPKM. The `scater` package has functions for adding these values to a `SingleCellExperiment` object but they require a length for each gene. The `addGeneLengths` function can be used to simulate these lengths: ```{r lengths} sim <- simpleSimulate(verbose = FALSE) sim <- addGeneLengths(sim) head(rowData(sim)) ``` We can then use `scater` to calculate TPM: ```{r TPM} tpm(sim) <- calculateTPM(sim, rowData(sim)$Length) tpm(sim)[1:5, 1:5] ``` The default method used by `addGeneLengths` to simulate lengths is to generate values from a log-normal distribution which are then rounded to give an integer length. The parameters for this distribution are based on human protein coding genes but can be adjusted if needed (for example for other species). Alternatively lengths can be sampled from a provided vector (see `?addGeneLengths` for details and an example). # Comparing simulations and real data One thing you might like to do after simulating data is to compare it to a real dataset, or compare simulations with different parameters or models. Splatter provides a function `compareSCEs` that aims to make these comparisons easier. As the name suggests this function takes a list of `SingleCellExperiment` objects, combines the datasets and produces some plots comparing them. Let's make two small simulations and see how they compare. ```{r comparison} sim1 <- splatSimulate(nGenes = 1000, batchCells = 20, verbose = FALSE) sim2 <- simpleSimulate(nGenes = 1000, nCells = 20, verbose = FALSE) comparison <- compareSCEs(list(Splat = sim1, Simple = sim2)) names(comparison) names(comparison$Plots) ``` The returned list has three items. The first two are the combined datasets by gene (`RowData`) and by cell (`ColData`) and the third contains some comparison plots (produced using `ggplot2`), for example a plot of the distribution of means: ```{r comparison-means} comparison$Plots$Means ``` These are only a few of the plots you might want to consider but it should be easy to make more using the returned data. For example, we could plot the number of expressed genes against the library size: ```{r comparison-libsize-features} library("ggplot2") ggplot(comparison$ColData, aes(x = sum, y = detected, colour = Dataset)) + geom_point() ``` ## Comparing differences Sometimes instead of visually comparing datasets it may be more interesting to look at the differences between them. We can do this using the `diffSCEs` function. Similar to `compareSCEs` this function takes a list of `SingleCellExperiment` objects but now we also specify one to be a reference. A series of similar plots are returned but instead of showing the overall distributions they demonstrate differences from the reference. ```{r difference} difference <- diffSCEs(list(Splat = sim1, Simple = sim2), ref = "Simple") difference$Plots$Means ``` We also get a series of Quantile-Quantile plot that can be used to compare distributions. ```{r difference-qq} difference$QQPlots$Means ``` ## Making panels Each of these comparisons makes several plots which can be a lot to look at. To make this easier, or to produce figures for publications, you can make use of the functions `makeCompPanel`, `makeDiffPanel` and `makeOverallPanel`. These functions combine the plots into a single panel using the `cowplot` package. The panels can be quite large and hard to view (for example in RStudio's plot viewer) so it can be better to output the panels and view them separately. Luckily `cowplot` provides a convenient function for saving the images. Here are some suggested parameters for outputting each of the panels: ```{r save-panels, eval = FALSE} # This code is just an example and is not run panel <- makeCompPanel(comparison) cowplot::save_plot("comp_panel.png", panel, nrow = 4, ncol = 3) panel <- makeDiffPanel(difference) cowplot::save_plot("diff_panel.png", panel, nrow = 3, ncol = 5) panel <- makeOverallPanel(comparison, difference) cowplot::save_plot("overall_panel.png", panel, ncol = 4, nrow = 7) ``` # Citing Splatter If you use Splatter in your work please cite our paper: ```{r citation} citation("splatter") ``` # Session information {-} ```{r sessionInfo} sessionInfo() ``` [gamma]: https://en.wikipedia.org/wiki/Gamma_distribution [poisson]: https://en.wikipedia.org/wiki/Poisson_distribution [scater-vignette]: https://bioconductor.org/packages/release/bioc/vignettes/scater/inst/doc/vignette.html [SCE-vignette]: https://bioconductor.org/packages/devel/bioc/vignettes/SingleCellExperiment/inst/doc/intro.html