--- title: 'fcoex: co-expression for single-cell data' author: - name: Tiago Lubiana affiliation: Computational Systems Biology Laboratory, University of São Paulo, Brazil output: html_document: toc: yes pdf_document: toc: yes prettydoc::html_pretty: highlight: github theme: cayman package: fcoex vignette: > %\VignetteIndexEntry{fcoex: co-expression for single-cell data} %\VignetteEngine{knitr::rmarkdown} \usepackage[utf8]{inputenc} --- ## Introduction and basic pipeline The goal of fcoex is to provide a simple and intuitive way to generate co-expression nets and modules for single cell data. It is based in 3 steps: - Pre-processing and label assignement (prior to fcoex) - Discretization of gene expression - Correlation and module detection via the FCBF algorithm (Fast Correlation-Based Filter) First of all, we will a already preprocessed single cell dataset from 10XGenomics ( preprocessed according to https://osca.bioconductor.org/a-basic-analysis.html#preprocessing-import-to-r, 14/08/2019). It contains peripheral blood mononuclear cells and the most variable genes. ```{r Loading datasets, message=FALSE } library(fcoex, quietly = TRUE) library(SingleCellExperiment, quietly = TRUE) data("mini_pbmc3k") ``` This is the single cell object we will explore in this vignette: ```{r Plotting single-cell object} mini_pbmc3k ``` ### Creating the fcoex object Now let's use the normalized data and the cluster labels to build the co-expresison networks. The labels were obtained by louvain clustering on a graph build from nearest neighbours. That means that these labels are a posteriori, and this depends on the choice of the analyst. The fcoex object is created from 2 different pieces: a previously normalized expression table (genes in rows) and a target factor with classes for the cells. ```{r Creating fcoex object, message=FALSE } target <- colData(mini_pbmc3k) target <- target$clusters exprs <- as.data.frame(assay(mini_pbmc3k, 'logcounts')) fc <- new_fcoex(data.frame(exprs),target) ``` The first step is the conversion of the count matrix into a discretized dataframe. The standar of fcoex is a simple binarization that works as follows: For each gene, the maximum and minimum values are stored. This range is divided in n bins of equal width (parameter to be set). The first bin is assigned to the class "low" and all the others to the class "high". ```{r Discretizing dataset, message=FALSE } fc <- discretize(fc, number_of_bins = 8) ``` ### Getting the modules Note that many other discretizations are avaible, from the implementations in the FCBF Bioconductor package. This step affects the final results in many ways. However, we found empirically that the default parameter often yields interesting results. After the discretization, we proceed to constructing a network and extracting modules. The co-expression adjacency matriz generated is modular in its inception. All correlations used are calculated via Symmetrical Uncertainty. Three steps are present: 1 - Selection of n genes to be considered, ranked by correlation to the target variable. 2 - Detection of predominantly correlated genes, a feature selection approach defined in the FCBF algorithm 3 - Building of modules around selected genes. Correlations between two genes are kept if they are more correlated to each other than to the target lables You can choose either to have a non-parallel processing, with a progress bar, or a faster parallel processing without progress bar. Up to you. ```{r Finding cbf modules, message=FALSE } fc <- find_cbf_modules(fc,n_genes = 200, verbose = FALSE, is_parallel = FALSE) ``` There are two functions that do the same: both get_nets and plot_interactions take the modules and plot networks. You can pick the name you like better. These visualizations were heavily inspired by the CEMiTool package, as much of the code in fcoex. We will take a look at the first two networks ```{r Plotting module networks, message=FALSE } fc <- get_nets(fc) # Taking a look at the first two networks: show_net(fc)[["CD79A"]] show_net(fc)[["HLA-DRB1"]] ``` To save the plots, you can run the save plots function, which will create a "./Plots" directory and store plots there. ```{r Saving plots, eval= FALSE, message=FALSE, results='hide'} save_plots(name = "fcoex_vignette", fc,force = TRUE, directory = "./Plots") ``` ### Running an enrichment analysis You can also run over-representation analysis to see if the modules correspond to any known biological pathway. In this example we will use the reactome groups available in the CEMiTool package. It is likely that some modules will not have any enrichment, leading to messages of the type "no gene can be mapped.". That is not a problem ```{r Running ORA analysis, warning=FALSE} gmt_fname <- system.file("extdata", "pathways.gmt", package = "CEMiTool") gmt_in <- pathwayPCA::read_gmt(gmt_fname) fc <- mod_ora(fc, gmt_in) fc <- plot_ora(fc) ``` Now we can save the plots again. Note that we have to set the force parameter equal to TRUE now, as the "./Plots" directory was already created in the previous step. ```{r Saving plots again, eval= FALSE, message=FALSE, results='hide'} save_plots(name = "fcoex_vignette", fc, force = TRUE, directory = "./Plots") ``` ### Reclustering the cells to find module-based populations. There is now a folder with the correlations, to explore the data. We will use the module assignments to subdivide the cells in populations of interest. This is a way to explore the data and look for possible novel groupings ignored in the previous clustering step. ```{r Reclustering , message=FALSE} fc <- recluster(fc) ``` We generated new labels based on each fcoex module. Now we will visualize them using UMAP. Let's see the population represented in the modules CD79A and HLA-DRB1. Notably, the patterns are largely influenced by the patterns of header genes. It is interesting to see that two groups are present, header-positive (HP) and header negative (HN) clusters. The stratification and exploration of different clustering points of view is one of the core ### Plotting clusters with scater ```{r Visualizing} colData(mini_pbmc3k) <- cbind(colData(mini_pbmc3k), `mod_HLA-DRB1` = idents(fc)$`HLA-DRB1`) colData(mini_pbmc3k) <- cbind(colData(mini_pbmc3k), mod_CD79A = idents(fc)$CD79A) library(scater) # Let's see the original clusters plotReducedDim(mini_pbmc3k, dimred="UMAP", colour_by="clusters") library(gridExtra) p1 <- plotReducedDim(mini_pbmc3k, dimred="UMAP", colour_by="mod_HLA-DRB1") p2 <- plotReducedDim(mini_pbmc3k, dimred="UMAP", colour_by="HLA-DRB1") p3 <- plotReducedDim(mini_pbmc3k, dimred="UMAP", colour_by="mod_CD79A") p4 <- plotReducedDim(mini_pbmc3k, dimred="UMAP", colour_by="CD79A") grid.arrange(p1, p2, p3, p4, nrow=2) ``` ## Integration to Seurat Another popular framework for single-cell analysis is Seurat. Let's see how to integrate it with fcoex. ```{r Running Seurat pipeline, warning=FALSE} library(Seurat) library(fcoex) library(ggplot2) data(pbmc_small) exprs <- data.frame(GetAssayData(pbmc_small)) target <- Idents(pbmc_small) fc <- new_fcoex(data.frame(exprs),target) fc <- discretize(fc) fc <- find_cbf_modules(fc,n_genes = 70, verbose = FALSE, is_parallel = FALSE) fc <- get_nets(fc) ``` Once again we can use the Reactome pathways from the package CEMiTool to exemplify how to run an enrichment for human genes. It is likely that some modules will not have any enrichment, leading to messages of the type "no gene can be mapped.". That is not a problem. If you are not working with human genes, you can just skip this part. ```{r} gmt_fname <- system.file("extdata", "pathways.gmt", package = "CEMiTool") gmt_in <- pathwayPCA::read_gmt(gmt_fname) fc <- mod_ora(fc, gmt_in) # In Seurat's sample data, pbmc small, no enrichments are found. # That is way plot_ora is commented out. #fc <- plot_ora(fc) ``` ```{r Saving Seurat plots, eval = FALSE} save_plots(name = "fcoex_vignette_Seurat", fc, force = TRUE, directory = "./Plots") ``` ### Plotting clusters with Seurat Now let's recluster fcoex and visualize the new clusters via the UMAP saved in the Seurat object. ```{r Plotting and saving reclusters, eval = FALSE} fc <- recluster(fc) file_name <- "pbmc3k_recluster_plots.pdf" directory <- "./Plots/" pbmc_small <- RunUMAP(pbmc_small, dims = 1:10) pdf(paste0(directory,file_name), width = 3, height = 3) print(DimPlot(pbmc_small)) for (i in names(module_genes(fc))){ Idents(pbmc_small ) <- idents(fc)[[i]] mod_name <- paste0("M", which(names(idents(fc)) == i), " (", i,")") plot2 <- DimPlot(pbmc_small, reduction = 'umap', cols = c("darkgreen", "dodgerblue3")) + ggtitle(mod_name) print(plot2) } dev.off() ``` The clusters generate by fcoex match possible matches different Seurat clusters. Looking at the HN clusters: M1 matches cluster 1 (likely monocytes), M2 and M4 match clusters 1 and 2 (likely APCs, B + monocytes), M5 matches cluster 2 (likeky B) M7 maches a subset of cluster 0, and as it includes granzymes and granulolysins, this subset of 0 is likely cytotoxic cells (either NK or CD8) Let's just take a look at the M2 individually: ```{r} fc <- recluster(fc) pbmc_small <- RunUMAP(pbmc_small, dims = 1:10) Idents(pbmc_small ) <- target p1 <- DimPlot(pbmc_small) Idents(pbmc_small ) <- idents(fc)[["HLA-DRB1"]] mod_name <- paste0("M", which(names(idents(fc)) == "HLA-DRB1"), " (", "HLA-DRB1",")") p2 <- DimPlot(pbmc_small, cols = c("darkgreen", "dodgerblue3")) + ggtitle(mod_name) # CD79A is a marker of B cells CD79A <- FeaturePlot(pbmc_small, "CD79A") # AIF1 is a marker of monocytes AIF1 <- FeaturePlot(pbmc_small, "AIF1") library(gridExtra) grid.arrange(p1, p2, p3,p4, ncol = 2) ``` ### Detecting anticorrelated genes in the modules As the dataset used here is a small subset of the original, some cells might be in unexpected clusters. The modules capture also negative correlations. These can be especially interesting, as they point to complementary cell types. Let's look if the module genes are enriched in the cluster HP ( header positive, in blue) or HN (header negative, in green). ```{r, message=FALSE} for (i in names(module_genes(fc))){ Idents(pbmc_small ) <- fc@mod_idents[[i]] # This bit prints which gene in the module belongs to each cluster. # HP is the header-positive cluster (containing SOX19A), HN is the header negative cluster (not containing SOX19A) # The "features = fc@module_list[[i]]" parameter tells Seurat to compare only the genes in the module "i" # By removing this parameter, you can potentially expand the list that was retrieved originally by fcoex # Run only for module genes: module_genes_in_clusters <- FindAllMarkers(pbmc_small, logfc.threshold = 1, only.pos = TRUE, features = fc@module_list[[i]] ) if("HN" %in% module_genes_in_clusters$cluster){ module_genes_in_clusters$module = i message(paste0("anticorrelated genes found for module ", i)) print(module_genes_in_clusters) } } ``` There seems that only in the module HLA-DRB1 we have negative correlations. Let's visualize then ```{r} TUBB1 <- FeaturePlot(pbmc_small, "TUBB1") DRB1 <- FeaturePlot(pbmc_small, "HLA-DRB1") library(gridExtra) grid.arrange(p1, p2, TUBB1, DRB1, ncol = 2) ```