## ----knitr-options, echo=FALSE, message=FALSE, warning=FALSE------------- library(knitr) opts_chunk$set(fig.align = 'center', fig.width = 6, fig.height = 5, dev = 'png') ## ---- message=FALSE, warning=FALSE--------------------------------------- library(scater) library(SC3) treutlein[1:3, 1:3] ## ------------------------------------------------------------------------ # cell annotation ann <- data.frame(cell_type1 = colnames(treutlein)) pd <- new("AnnotatedDataFrame", data = ann) # cell expression tmp <- treutlein colnames(tmp) <- rownames(ann) # SCESEt object sceset <- newSCESet(fpkmData = tmp, phenoData = pd, logExprsOffset = 1) ## ------------------------------------------------------------------------ sceset <- calculateQCMetrics(sceset) ## ------------------------------------------------------------------------ plotPCA(sceset, colour_by = "cell_type1") ## ------------------------------------------------------------------------ # Note that n_cores = 1 is required for compilation of this vignette. # Please remove this parameter when running on your computer: # sceset <- sc3(sceset, ks = 2:4, biology = TRUE) sceset <- sc3(sceset, ks = 2:4, biology = TRUE, n_cores = 1) ## ---- eval=FALSE--------------------------------------------------------- # sc3_interactive(sceset) ## ----eval=FALSE---------------------------------------------------------- # sc3_export_results_xls(sceset) ## ------------------------------------------------------------------------ p_data <- pData(sceset) head(p_data[ , grep("sc3_", colnames(p_data))]) ## ------------------------------------------------------------------------ plotPCA( sceset, colour_by = "sc3_3_clusters", size_by = "sc3_3_log2_outlier_score" ) ## ------------------------------------------------------------------------ f_data <- fData(sceset) head(f_data[ , grep("sc3_", colnames(f_data))]) ## ------------------------------------------------------------------------ plotFeatureData( sceset, aes( x = sc3_3_markers_clusts, y = sc3_3_markers_auroc, colour = sc3_3_markers_padj ) ) ## ---- fig.height=6------------------------------------------------------- sc3_plot_consensus(sceset, k = 3) ## ---- fig.height=6, fig.width=8------------------------------------------ sc3_plot_consensus( sceset, k = 3, show_pdata = c( "cell_type1", "log10_total_features", "sc3_3_clusters", "sc3_3_log2_outlier_score" ) ) ## ------------------------------------------------------------------------ sc3_plot_silhouette(sceset, k = 3) ## ---- fig.height=6------------------------------------------------------- sc3_plot_expression(sceset, k = 3) ## ---- fig.height=6, fig.width=8------------------------------------------ sc3_plot_expression( sceset, k = 3, show_pdata = c( "cell_type1", "log10_total_features", "sc3_3_clusters", "sc3_3_log2_outlier_score" ) ) ## ---- fig.height=3------------------------------------------------------- sc3_plot_cluster_stability(sceset, k = 3) ## ---- fig.height=9------------------------------------------------------- sc3_plot_de_genes(sceset, k = 3) ## ---- fig.height=9, fig.width=8------------------------------------------ sc3_plot_de_genes( sceset, k = 3, show_pdata = c( "cell_type1", "log10_total_features", "sc3_3_clusters", "sc3_3_log2_outlier_score" ) ) ## ---- fig.height=6------------------------------------------------------- sc3_plot_markers(sceset, k = 3) ## ---- fig.height=6, fig.width=8------------------------------------------ sc3_plot_markers( sceset, k = 3, show_pdata = c( "cell_type1", "log10_total_features", "sc3_3_clusters", "sc3_3_log2_outlier_score" ) ) ## ------------------------------------------------------------------------ # Note that n_cores = 1 is required for compilation of this vignette. # Please remove this parameter when running on your computer: # sceset <- sc3_prepare(sceset, ks = 2:4) sceset <- sc3_prepare(sceset, ks = 2:4, n_cores = 1) str(sceset@sc3) ## ------------------------------------------------------------------------ sceset <- sc3_estimate_k(sceset) str(sceset@sc3) ## ------------------------------------------------------------------------ sceset <- sc3_calc_dists(sceset) names(sceset@sc3$distances) ## ------------------------------------------------------------------------ sceset <- sc3_calc_transfs(sceset) names(sceset@sc3$transformations) ## ------------------------------------------------------------------------ sceset@sc3$distances ## ------------------------------------------------------------------------ sceset <- sc3_kmeans(sceset) names(sceset@sc3$kmeans) ## ------------------------------------------------------------------------ p_data <- pData(sceset) head(p_data[ , grep("sc3_", colnames(p_data))]) ## ------------------------------------------------------------------------ sceset <- sc3_calc_consens(sceset) names(sceset@sc3$consensus) names(sceset@sc3$consensus$`3`) ## ------------------------------------------------------------------------ sceset@sc3$kmeans ## ------------------------------------------------------------------------ p_data <- pData(sceset) head(p_data[ , grep("sc3_", colnames(p_data))]) ## ------------------------------------------------------------------------ sceset <- sc3_calc_biology(sceset) ## ------------------------------------------------------------------------ p_data <- pData(sceset) head(p_data[ , grep("sc3_", colnames(p_data))]) ## ------------------------------------------------------------------------ f_data <- fData(sceset) head(f_data[ , grep("sc3_", colnames(f_data))]) ## ------------------------------------------------------------------------ no_svm_labels <- pData(sceset)$sc3_3_clusters ## ------------------------------------------------------------------------ # Note that n_cores = 1 is required for compilation of this vignette. # Please remove this parameter when running on your computer: # sceset <- sc3(sceset, ks = 2:4, svm.num.cells = 50) sceset <- sc3(sceset, ks = 2:4, biology = TRUE, svm_num_cells = 50, n_cores = 1) ## ------------------------------------------------------------------------ p_data <- pData(sceset) head(p_data[ , grep("sc3_", colnames(p_data))]) ## ---- message=FALSE, warning=FALSE--------------------------------------- sceset <- sc3_run_svm(sceset) p_data <- pData(sceset) head(p_data[ , grep("sc3_", colnames(p_data))]) ## ------------------------------------------------------------------------ sceset@sc3$svm_train_inds <- NULL sceset <- sc3_calc_biology(sceset) p_data <- pData(sceset) head(p_data[ , grep("sc3_", colnames(p_data))]) ## ------------------------------------------------------------------------ svm_labels <- pData(sceset)$sc3_3_clusters ## ------------------------------------------------------------------------ if (require("mclust")) { adjustedRandIndex(no_svm_labels, svm_labels) }