Last updated: 2020-09-10
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Knit directory: single-cell-topics/analysis/
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Rmd | 88ed67f | Peter Carbonetto | 2020-09-10 | Added improved beta and z-score scatterplots to bcells_and_nkcells analysis. |
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In the previous analysis of the purified and 68k PBMC data sets, we identified clusters in both data sets corresponding to B-cells and natural killer cells. Each of these clusters is characterized by high proportions from a single topic. Here we show that the clusters are enriched for top marker genes for these cell types (e.g., CD79A, NKG7), but the topics always show increased enrichment for these genes.
Load the packages used in the analysis below.
library(Matrix)
library(dplyr)
library(fastTopics)
library(ggplot2)
library(ggrepel)
library(cowplot)
source("../code/more_plots.R")
Load the mixture of FACS-purified PBMC data and the \(k = 6\) Poisson NMF model fit.
fit_purified <-
readRDS("../output/pbmc-purified/rds/fit-pbmc-purified-scd-ex-k=6.rds")$fit
load("../data/pbmc_purified.RData")
counts_purified <- counts
genes_purified <- genes
rm(samples,genes,counts)
Load the “unsorted” 68k PBMC data and the \(k = 6\) Poisson NMF model fit.
fit_68k <- readRDS("../output/pbmc-68k/rds/fit-pbmc-68k-scd-ex-k=6.rds")$fit
load("../data/pbmc_68k.RData")
counts_68k <- counts
genes_68k <- genes
rm(samples,genes,counts)
Load the clustering of the purified and 68k data set that was determined in the “plots_pbmc” analysis.
load("../output/pbmc-clustering.RData")
Compute the differential expression statistics for the purified data.
timing <- system.time(
diff_count_purified <- diff_count_analysis(fit_purified,counts_purified))
cat(sprintf("Computation took %0.2f seconds.\n",timing["elapsed"]))
# Fitting 21952 x 6 = 131712 univariate Poisson models.
# Computing log-fold change statistics.
# Computation took 155.91 seconds.
Warning: The above code chunk cached its results, but it won’t be re-run if previous chunks it depends on are updated. If you need to use caching, it is highly recommended to also set knitr::opts_chunk$set(autodep = TRUE)
at the top of the file (in a chunk that is not cached). Alternatively, you can customize the option dependson
for each individual chunk that is cached. Using either autodep
or dependson
will remove this warning. See the knitr cache options for more details.
Compute the differential expression statistics for the 68k data.
timing <- system.time(
diff_count_68k <- diff_count_analysis(fit_68k,counts_68k))
cat(sprintf("Computation took %0.2f seconds.\n",timing["elapsed"]))
# Fitting 20387 x 6 = 122322 univariate Poisson models.
# Computing log-fold change statistics.
# Computation took 79.61 seconds.
Warning: The above code chunk cached its results, but it won’t be re-run if previous chunks it depends on are updated. If you need to use caching, it is highly recommended to also set knitr::opts_chunk$set(autodep = TRUE)
at the top of the file (in a chunk that is not cached). Alternatively, you can customize the option dependson
for each individual chunk that is cached. Using either autodep
or dependson
will remove this warning. See the knitr cache options for more details.
Perform a differential expression analysis using the clustering of the purified data.
fit_clusters_purified <-
init_poisson_nmf_from_clustering(counts_purified,samples_purified$cluster)
diff_count_clusters_purified <- diff_count_analysis(fit_clusters_purified,
counts_purified)
# All topic proportions are either zero or one; using simpler single-topic calculations for model parameter estimates
# Fitting 21952 x 6 = 131712 univariate Poisson models.
# Computing log-fold change statistics.
Warning: The above code chunk cached its results, but it won’t be re-run if previous chunks it depends on are updated. If you need to use caching, it is highly recommended to also set knitr::opts_chunk$set(autodep = TRUE)
at the top of the file (in a chunk that is not cached). Alternatively, you can customize the option dependson
for each individual chunk that is cached. Using either autodep
or dependson
will remove this warning. See the knitr cache options for more details.
Perform a differential expression analysis using the clustering of the 68k data.
fit_clusters_68k <- init_poisson_nmf_from_clustering(counts_68k,
samples_68k$cluster)
diff_count_clusters_68k <- diff_count_analysis(fit_clusters_68k,counts_68k)
# All topic proportions are either zero or one; using simpler single-topic calculations for model parameter estimates
# Fitting 20387 x 9 = 183483 univariate Poisson models.
# Computing log-fold change statistics.
Warning: The above code chunk cached its results, but it won’t be re-run if previous chunks it depends on are updated. If you need to use caching, it is highly recommended to also set knitr::opts_chunk$set(autodep = TRUE)
at the top of the file (in a chunk that is not cached). Alternatively, you can customize the option dependson
for each individual chunk that is cached. Using either autodep
or dependson
will remove this warning. See the knitr cache options for more details.
In the purified data set, compare the gene-wise z-scores from topic 3 to the z-scores from cluster B.
p1 <- logfoldchange_scatterplot(diff_count_clusters_purified$beta[,"B"],
diff_count_purified$beta[,3],
diff_count_purified$colmeans) +
labs(x = "cluster B",y = "topic 3",title = "log-fold change (beta)")
p2 <- zscores_scatterplot(diff_count_clusters_purified$Z[,"B"],
diff_count_purified$Z[,3],
diff_count_purified$colmeans,
genes_purified$symbol,
label_above_score = 250,
zmax = 650) +
labs(x = "cluster B",y = "topic 3",title = "z-scores")
plot_grid(p1,p2)
Version | Author | Date |
---|---|---|
23834e3 | Peter Carbonetto | 2020-09-10 |
B-cell marker CD79A, for example, emerges in the cluster and the topic, but its enrichment is much stronger in the topic. We observe the same result in the 68k data when we compare the gene-wise z-scores from topic 5 to the z-scores from cluster A2:
p3 <- logfoldchange_scatterplot(diff_count_clusters_68k$beta[,"A2"],
diff_count_68k$beta[,5],
diff_count_68k$colmeans) +
labs(x = "cluster A2",y = "topic 5",title = "log-fold change (beta)")
p4 <- zscores_scatterplot(diff_count_clusters_68k$Z[,"A2"],
diff_count_68k$Z[,5],
diff_count_68k$colmeans,
genes_68k$symbol,
label_above_score = 175,
zmax = 500) +
labs(x = "cluster A2",y = "topic 5",title = "z-scores")
plot_grid(p3,p4)
We observe a similar result in natural killer cells. In the purified data set, compare the gene-wise z-scores from topic 4 to the z-scores from cluster A1:
p5 <- logfoldchange_scatterplot(diff_count_clusters_purified$beta[,"A1"],
diff_count_purified$beta[,4],
diff_count_purified$colmeans) +
labs(x = "cluster A1",y = "topic 4",title = "log-fold change (beta)")
p6 <- zscores_scatterplot(diff_count_clusters_purified$Z[,"A1"],
diff_count_purified$Z[,4],
diff_count_purified$colmeans,
genes_purified$symbol,
label_above_score = 250,
zmax = 750) +
labs(x = "cluster A1",y = "topic 4",title = "z-scores")
plot_grid(p5,p6)
Genes NKG7 and GNLY (granulysin), both examples of characteristic NK genes, are strongly enriched in the cluster, and moreso in the topic. The 68k data yields a similar result:
p7 <- logfoldchange_scatterplot(diff_count_clusters_68k$beta[,"A1b"],
diff_count_68k$beta[,3],
diff_count_68k$colmeans) +
labs(x = "cluster A1b",y = "topic 3",title = "log-fold change (beta)")
p8 <- zscores_scatterplot(diff_count_clusters_68k$Z[,"A1b"],
diff_count_68k$Z[,3],
diff_count_68k$colmeans,
genes_68k$symbol,
label_above_score = 200,
zmax = 750) +
labs(x = "cluster A1b",y = "topic 3",title = "z-scores")
plot_grid(p7,p8)
These results suggest the clusters and topics appear to be highlighting different biological patterns.
sessionInfo()
# R version 3.6.2 (2019-12-12)
# Platform: x86_64-apple-darwin15.6.0 (64-bit)
# Running under: macOS Catalina 10.15.6
#
# Matrix products: default
# BLAS: /Library/Frameworks/R.framework/Versions/3.6/Resources/lib/libRblas.0.dylib
# LAPACK: /Library/Frameworks/R.framework/Versions/3.6/Resources/lib/libRlapack.dylib
#
# locale:
# [1] en_US.UTF-8/en_US.UTF-8/en_US.UTF-8/C/en_US.UTF-8/en_US.UTF-8
#
# attached base packages:
# [1] stats graphics grDevices utils datasets methods base
#
# other attached packages:
# [1] cowplot_1.0.0 ggrepel_0.9.0 ggplot2_3.3.0 fastTopics_0.3-175
# [5] dplyr_0.8.3 Matrix_1.2-18
#
# loaded via a namespace (and not attached):
# [1] Rcpp_1.0.5 lattice_0.20-38 tidyr_1.0.0
# [4] prettyunits_1.1.1 assertthat_0.2.1 zeallot_0.1.0
# [7] rprojroot_1.3-2 digest_0.6.23 R6_2.4.1
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# [31] xfun_0.11 pkgconfig_2.0.3 mcmc_0.9-6
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# [40] crayon_1.3.4 withr_2.1.2 later_1.0.0
# [43] MASS_7.3-51.4 grid_3.6.2 jsonlite_1.6
# [46] gtable_0.3.0 lifecycle_0.1.0 git2r_0.26.1
# [49] magrittr_1.5 scales_1.1.0 RcppParallel_4.4.2
# [52] stringi_1.4.3 farver_2.0.1 fs_1.3.1
# [55] promises_1.1.0 vctrs_0.2.1 tools_3.6.2
# [58] glue_1.3.1 purrr_0.3.3 hms_0.5.2
# [61] yaml_2.2.0 colorspace_1.4-1 plotly_4.9.2
# [64] knitr_1.26 quantreg_5.54 MCMCpack_1.4-5