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Here we closely examine, and compare, the topic modeling results for the two closely related data sets from Zheng et al (2017), the mixture of FACS-purified PBMC data and the “unsorted” 68k PBMC data. The goal is to illustrate how the topic models fitted to these data sets can be used to learn about the structure in the data, including identifying clusters, and interpret the clusters and topics as “cell types” or “gene programs”.
Load the packages used in the analysis below, as well as additional functions that will be used to generate some of the plots.
library(dplyr)
library(fastTopics)
library(ggplot2)
library(cowplot)
source("../code/plots.R")
We begin with the mixture of FACS-purified PBMC data. Note that the count data are no longer needed at this stage.
load("../data/pbmc_purified.RData")
samples_purified <- samples
rm(samples,genes,counts)
Load the \(k = 6\) Poisson NMF model fit.
fit_purified <-
readRDS("../output/pbmc-purified/rds/fit-pbmc-purified-scd-ex-k=6.rds")$fit
Here we explore the structure of the single-cell data as inferred by the topic model. Specifically, we will use PCA to uncover structure in the topic proportions. Although PCA is simple, we will see that it works well, and avoids the complications of the popular t-SNE and UMAP nonlinear dimensionality reduction methods.
fit <- poisson2multinom(fit_purified)
pca <- prcomp(fit$L)$x
Three large clusters are evident from first two PCs (there is also finer-scale structure which we will examine below). We label these clusters as “A”, “B” and “C”.
n <- nrow(pca)
x <- rep("C",n)
pc1 <- pca[,"PC1"]
pc2 <- pca[,"PC2"]
x[pc1 + 0.2 > pc2] <- "A"
x[pc2 > 0.25] <- "B"
x[(pc1 + 0.4)^2 + (pc2 + 0.1)^2 < 0.07] <- "C"
samples_purified$cluster <- x
p1 <- pca_plot_with_labels(fit_purified,c("PC1","PC2"),
samples_purified$cluster) +
labs(fill = "cluster")
print(p1)
Most of the samples are in cluster A:
table(x)
# x
# A B C
# 72614 10439 11602
Note that other PCs beyond the first two may also sometimes reveal additional clustering, and we will see examples of this in the 68k PBMC data.
Within cluster C there are two fairly well-defined subclusters (labeled “C1” and “C2”). There are perhaps other, less defined subclusters that are less defined, but in this analysis we focus on the largest, most obvious clusters.
rows <- which(samples_purified$cluster == "C")
fit <- select(poisson2multinom(fit_purified),loadings = rows)
pca <- prcomp(fit$L)$x
n <- nrow(pca)
x <- rep("C3",n)
pc1 <- pca[,1]
pc2 <- pca[,2]
x[pc1 < 0 & pc2 < 0.4] <- "C1"
x[pc1 > 0.5 & pc2 < 0.3] <- "C2"
samples_purified[rows,"cluster"] <- x
p2 <- pca_plot_with_labels(fit,c("PC1","PC2"),x) +
labs(fill = "cluster")
print(p2)
Version | Author | Date |
---|---|---|
7900d17 | Peter Carbonetto | 2020-08-22 |
The two subclusters, C1 and C2, account for most of the samples in cluster C:
table(x)
# x
# C1 C2 C3
# 7822 2990 790
Now we turn to cluster A. Within this cluster, there is a large subcluster, which we label as “A1”. (This cluster is much less distinct than the other clusters we have seen so far, and may not show up clearly in this plot—you may need to zoom in on the plot to see the clustering.) Otherwise, there is no obvious additional clustering of the samples within cluster A.
rows <- which(samples_purified$cluster == "A")
fit <- select(poisson2multinom(fit_purified),loadings = rows)
pca <- prcomp(fit$L)$x
n <- nrow(fit$L)
x <- rep("A2",n)
pc1 <- pca[,1]
pc2 <- pca[,2]
x[pc1 > 0.58 - pc2 | pc1 > 0.7] <- "A1"
samples_purified[rows,"cluster"] <- x
p3 <- pca_plot_with_labels(fit,c("PC1","PC2"),x) +
labs(fill = "cluster")
print(p3)
In summary, we have subdivided the data into 6 subsets:
samples_purified$cluster <- factor(samples_purified$cluster)
table(samples_purified$cluster)
#
# A1 A2 B C1 C2 C3
# 8271 64343 10439 7822 2990 790
We also inspected principal components individually in each of these 6 clusters and we did not find any of clear examples of subclustering withing these clusters.
The structure plot summarizes the topic proportions in each of these 6 subsets:
set.seed(1)
pbmc_purified_topic_colors <- c("gold","forestgreen","dodgerblue",
"gray","greenyellow","magenta")
pbmc_purified_topics <- c(2,5,3,1,4,6)
rows <- sort(c(sample(which(samples_purified$cluster == "A1"),250),
sample(which(samples_purified$cluster == "A2"),1200),
sample(which(samples_purified$cluster == "B"),250),
sample(which(samples_purified$cluster == "C1"),250),
sample(which(samples_purified$cluster == "C2"),200),
sample(which(samples_purified$cluster == "C3"),200)))
p4 <- structure_plot(select(poisson2multinom(fit_purified),loadings = rows),
grouping = samples_purified[rows,"cluster"],
topics = pbmc_purified_topics,
colors = pbmc_purified_topic_colors[pbmc_purified_topics],
n = Inf,perplexity = c(70,100,70,70,50,50),
gap = 40,num_threads = 4,verbose = FALSE)
print(p4)
Version | Author | Date |
---|---|---|
eac2d23 | Peter Carbonetto | 2020-08-25 |
2d156b8 | Peter Carbonetto | 2020-08-25 |
abb846e | Peter Carbonetto | 2020-08-25 |
f53c86c | Peter Carbonetto | 2020-08-24 |
13ee038 | Peter Carbonetto | 2020-08-23 |
97d7e86 | Peter Carbonetto | 2020-08-23 |
59777e7 | Peter Carbonetto | 2020-08-22 |
c87ddf8 | Peter Carbonetto | 2020-08-22 |
7900d17 | Peter Carbonetto | 2020-08-22 |
fbb0697 | Peter Carbonetto | 2020-08-21 |
216027a | Peter Carbonetto | 2020-08-21 |
Out of the 6 topics, 4 of them (\(k = 2, 3, 4, 5\)) align closely with clusters (labeled A1, B, C1, C2). And, indeed, they align closely with their inclusion in the individual FACS-purified data sets:
pdat <- as.data.frame(with(samples_purified,table(celltype,cluster)))
ggplot(pdat,aes(x = cluster,y = celltype,size = Freq)) +
geom_point(color = "dodgerblue",na.rm = TRUE,show.legend = FALSE) +
ylim(rev(levels(samples_purified$celltype))) +
theme_cowplot(font_size = 10)
Based on the above results, we make a few observations:
Because they correspond very closely, subsequent analysis of topics 2, 3, 4 and 5 should yield similar results to analyzing the clusters A1, B, C1, C2 For example, cluster B corresponds almost perfectly to the B-cell data set. The largest cluster, cluster A2, is mostly comprised of the T-cell data sets.
Cluster A2—see also the PCA plot above—is an example where analyzing the most prevalent topics (\(k = 1, 6\)) will yield different results than analyzing clusters within cluster A1 as any additional clustering of the data will be necessarily arbitrary (see the PCA plot above).
Many samples labeled as “CD34+” are not assigned to the CD34+ cluster (C1). This is probably due to the fact that this population was much less pure (45%) than the others.
Cluster C3 is a heterogeneous cluster with a relatively small number of samples (790) that could potentially contain additional clusters of biological relevance, but will likely be more challenging to analyze and interpret than the other clusters, so we do not this investigate further.
In summary, a cluster-based analysis and topic-based analysis should yield mostly similar results, except for the analysis of cluster A2, which should benefit from a topic-based analysis (specifically, analysis of topics 1 and 6).
Next, we turn to the 68k data set.
load("../data/pbmc_68k.RData")
samples_68k <- samples
rm(samples,genes,counts)
Load the \(k = 6\) Poisson NMF model fit, and compute PCs from the topic proportions.
fit_68k <- readRDS("../output/pbmc-68k/rds/fit-pbmc-68k-scd-ex-k=6.rds")$fit
fit <- poisson2multinom(fit_68k)
pca <- prcomp(fit$L)$x
In this case, we find least three distinct clusters in the projection onto PCs 3 and 4. We label these clusters “A”, “B” and “C”, as above, noting that this labeling does not imply a connection with the purified PBMC clusters above.
n <- nrow(pca)
x <- rep("A",n)
pc3 <- pca[,"PC3"]
pc4 <- pca[,"PC4"]
x[pc4 < -0.13 | pc3/1.9 - 0.17 > pc4] <- "B"
x[pc4 < -0.75] <- "C"
samples_68k$cluster <- x
p5 <- pca_plot_with_labels(fit_68k,c("PC3","PC4"),x) +
labs(fill = "cluster")
print(p5)
The vast majority of the cells are in cluster A.
table(samples_68k$cluster)
#
# A B C
# 63408 5006 165
Looking more closely at the top two PCs in cluster B, we identify two large clusters, with the remaining samples assigned to the “B3” subset.
rows <- which(samples_68k$cluster == "B")
fit <- select(poisson2multinom(fit_68k),loadings = rows)
pca <- prcomp(fit$L)$x
n <- nrow(pca)
x <- rep("B3",n)
pc1 <- pca[,"PC1"]
x[pc1 > -0.05] <- "B1"
x[pc1 < -0.3] <- "B2"
samples_68k[rows,"cluster"] <- x
p6 <- pca_plot_with_labels(fit,c("PC1","PC2"),x) +
labs(fill = "cluster")
print(p6)
The B1 cluster can be further subdivided into clusters (B1a, B1b) with subset B1c compresing the B1 samples that do not fit into either cluster.
rows <- which(samples_68k$cluster == "B1")
fit <- select(poisson2multinom(fit_68k),loadings = rows)
pca <- prcomp(fit$L)$x
n <- nrow(pca)
x <- rep("B1c",n)
pc1 <- pca[,"PC1"]
pc2 <- pca[,"PC2"]
x[pc2 > -0.02 & pc1 > -0.25] <- "B1a"
x[pc1 > 0.1 & pc2 < 0.05 & pc2 > -0.225] <- "B1b"
samples_68k[rows,"cluster"] <- x
p7 <- pca_plot_with_labels(fit,c("PC1","PC2"),x) +
labs(fill = "cluster")
print(p7)
Cluster A subdivides fairly neatly into two large clusters, A1 and A2.
rows <- which(samples_68k$cluster == "A")
fit <- select(poisson2multinom(fit_68k),loadings = rows)
pca <- prcomp(fit$L)$x
n <- nrow(pca)
x <- rep("A3",n)
pc2 <- pca[,"PC2"]
pc3 <- pca[,"PC3"]
x[2.5*pc3 < 0.3 - pc2] <- "A1"
x[pc3 > 0.8 - pc2] <- "A2"
samples_68k[rows,"cluster"] <- x
p7 <- pca_plot_with_labels(fit,c("PC2","PC3"),x) +
labs(fill = "cluster")
print(p7)
Version | Author | Date |
---|---|---|
399c597 | Peter Carbonetto | 2020-08-25 |
Within cluster A, the vast majority of the samples are assigned to the A1 subcluster:
table(x)
# x
# A1 A2 A3
# 59260 3555 593
In summary, we have subdivided these data into 9 subsets:
samples_68k$cluster <- factor(samples_68k$cluster)
table(samples_68k$cluster)
#
# A1 A2 A3 B1a B1b B1c B2 B3 C
# 59260 3555 593 2115 947 807 819 318 165
The wide range in the sizes of these clusters is notable; the smallest cluster (C) is less than 1% the size of the largest (A1). By contrast, community detection methods such as the Louvain algorithm often have difficulty identifying very small clusters.
The structure plot summarizes the topic proportions in each of these 9 subsets:
set.seed(1)
pbmc_68k_topic_colors <- c("yellow","lightskyblue","salmon",
"firebrick","royalblue","olivedrab")
pbmc_68k_topics <- c(2,5,1,3,4,6)
rows <- sort(c(sample(which(samples_68k$cluster == "A1"),1200),
sample(which(samples_68k$cluster == "A2"),500),
sample(which(samples_68k$cluster == "A3"),300),
sample(which(samples_68k$cluster == "B1a"),500),
sample(which(samples_68k$cluster == "B1b"),300),
sample(which(samples_68k$cluster == "B1c"),300),
sample(which(samples_68k$cluster == "B2"),300),
which(samples_68k$cluster == "B3"),
which(samples_68k$cluster == "C")))
p8 <- structure_plot(select(poisson2multinom(fit_68k),loadings = rows),
grouping = samples_68k[rows,"cluster"],
topics = pbmc_68k_topics,
colors = pbmc_68k_topic_colors[pbmc_68k_topics],
perplexity = c(100,100,50,100,80,80,80,80,50),
n = Inf,gap = 32,num_threads = 4,verbose = FALSE)
print(p8)
These subsets do not align as closely with the cell-type labeling inferred by Zheng et al (2017), which is not surprising considering that this labeling is based on the FACS-purified data set.:
pdat <- as.data.frame(with(samples_68k,table(celltype,cluster)))
ggplot(pdat,aes(x = cluster,y = celltype,size = Freq)) +
geom_point(color = "dodgerblue",na.rm = TRUE,show.legend = FALSE) +
ylim(rev(levels(samples_purified$celltype))) +
theme_cowplot(font_size = 10)
Version | Author | Date |
---|---|---|
399c597 | Peter Carbonetto | 2020-08-25 |
A few notes about these results:
As in the purified fit, here we identify a B-cells cluster (B) and topic (5) that closely align.
We also identify what is most likely a cluster of CD34+ cells.
We don’t identify a clear-cut cluster for NK cells; the NK cells are mixed in with the T-cells (subset A1), and NK cells will emerge only after subsequent analysis of topic 3.
Some of the distinct clusters (e.g., B1a, B1b, B2) are characterized by mixtures of topics, so if these clusters do indeed correspond to interesting cell types, analyzing the topics alone may not shed light onto these cell types.
In summary, the topics and clusters seem to be more complementary each other in this case, and it remains to be seen whether both the topics and clusters offer biological insights.
sessionInfo()
# R version 3.6.2 (2019-12-12)
# Platform: x86_64-apple-darwin15.6.0 (64-bit)
# Running under: macOS Catalina 10.15.5
#
# 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 ggplot2_3.3.0 fastTopics_0.3-165 dplyr_0.8.3
#
# loaded via a namespace (and not attached):
# [1] ggrepel_0.9.0 Rcpp_1.0.5 lattice_0.20-38
# [4] tidyr_1.0.0 prettyunits_1.1.1 assertthat_0.2.1
# [7] zeallot_0.1.0 rprojroot_1.3-2 digest_0.6.23
# [10] R6_2.4.1 backports_1.1.5 MatrixModels_0.4-1
# [13] evaluate_0.14 coda_0.19-3 httr_1.4.1
# [16] pillar_1.4.3 rlang_0.4.5 progress_1.2.2
# [19] lazyeval_0.2.2 data.table_1.12.8 irlba_2.3.3
# [22] SparseM_1.78 whisker_0.4 Matrix_1.2-18
# [25] rmarkdown_2.3 labeling_0.3 Rtsne_0.15
# [28] stringr_1.4.0 htmlwidgets_1.5.1 munsell_0.5.0
# [31] compiler_3.6.2 httpuv_1.5.2 xfun_0.11
# [34] pkgconfig_2.0.3 mcmc_0.9-6 htmltools_0.4.0
# [37] tidyselect_0.2.5 tibble_2.1.3 workflowr_1.6.2.9000
# [40] quadprog_1.5-8 viridisLite_0.3.0 crayon_1.3.4
# [43] withr_2.1.2 later_1.0.0 MASS_7.3-51.4
# [46] grid_3.6.2 jsonlite_1.6 gtable_0.3.0
# [49] lifecycle_0.1.0 git2r_0.26.1 magrittr_1.5
# [52] scales_1.1.0 RcppParallel_5.0.2 stringi_1.4.3
# [55] farver_2.0.1 fs_1.3.1 promises_1.1.0
# [58] vctrs_0.2.1 tools_3.6.2 glue_1.3.1
# [61] purrr_0.3.3 hms_0.5.2 yaml_2.2.0
# [64] colorspace_1.4-1 plotly_4.9.2 knitr_1.26
# [67] quantreg_5.54 MCMCpack_1.4-5