scPCA
: Sparse contrastive principal component analysisData pre-processing and exploratory data analysis and are two important steps in the data science life-cycle. As datasets become larger and the signal weaker, their importance increases. Methods capable of extracting the signal from such datasets is badly needed. Often, these steps rely on dimensionality reduction techniques to isolate pertinent information in data. However, many of the most commonly-used methods fail to reduce the dimensions of these large and noisy datasets successfully.
Principal component analysis (PCA) is one such method. Although popular for its interpretable results and ease of implementation, PCA’s performance on high-dimensional data often leaves much to be desired. Its results on these large datasets have been found to be unstable, and it is often unable to identify variation that is contextually meaningful.
Modifications of PCA have been developed to remedy these issues. Namely, sparse PCA (sPCA) was created to increase the stability of the principal component loadings and variable scores in high dimensions, and contrastive PCA (cPCA) was proposed as a method for capturing relevant information in the high-dimensional data by harnessing variation in control data (Abid et al. 2018).
Although sPCA and cPCA have proven useful in resolving individual shortcomings
of PCA, neither is capable of tackling the issues of stability and relevance
simultaneously. The scPCA
package implements a combination of these methods,
dubbed sparse contrastive PCA (scPCA) (Boileau, Hejazi, and Dudoit 2020), which draws on cPCA to
remove technical effects and on SPCA for sparsification of the loadings, thereby
extracting stable, interpretable, and relevant signal from
high-dimensional biological data. cPCA, previously unavailable to R
users, is
also implemented.
To install the latest stable release of the scPCA
package from Bioconductor,
use BiocManager
:
BiocManager::install("scPCA")
Note that development of the scPCA
package is done via its GitHub repository.
If you wish to contribute to the development of the package or use features that
have not yet been introduced into a stable release, scPCA
may be installed
from GitHub using remotes
:
remotes::install_github("PhilBoileau/scPCA")
library(dplyr)
library(ggplot2)
library(ggpubr)
library(elasticnet)
library(scPCA)
library(microbenchmark)
A brief comparison of PCA, SPCA, cPCA and scPCA is provided below. All four methods are applied to a simulated target dataset consisting of 400 observations and 30 continuous variables. Additionally, each observation is classified as belonging to one of four classes. This label is known a priori. A background dataset is comprised of the same number of variables as the target dataset, representing control data.
The target data was simulated as follows:
The background data was simulated as follows:
A similar simulation scheme is provided in Abid et al. (2018).
First, PCA is applied to the target data. As we can see from the figure, PCA is incapable of creating a lower dimensional representation of the target data that captures the variation of interest (i.e. the four groups). In fact, no pair of principal components among the first twelve were able to.
# set seed for reproducibility
set.seed(1742)
# load data
data(toy_df)
# perform PCA
pca_sim <- prcomp(toy_df[, 1:30])
# plot the 2D rep using first 2 components
df <- as_tibble(list("PC1" = pca_sim$x[, 1],
"PC2" = pca_sim$x[, 2],
"label" = as.character(toy_df[, 31])))
p_pca <- ggplot(df, aes(x = PC1, y = PC2, colour = label)) +
ggtitle("PCA on Simulated Data") +
geom_point(alpha = 0.5) +
theme_minimal()
p_pca
Much like PCA, the leading components of SPCA – for varying amounts of sparsity – are incapable of splitting the observations into four distinct groups.
# perform sPCA on toy_df for a range of L1 penalty terms
penalties <- exp(seq(log(10), log(1000), length.out = 6))
df_ls <- lapply(penalties, function(penalty) {
spca_sim_p <- elasticnet::spca(toy_df[, 1:30], K = 2, para = rep(penalty, 2),
type = "predictor", sparse = "penalty")$loadings
spca_sim_p <- as.matrix(toy_df[, 1:30]) %*% spca_sim_p
spca_out <- list("SPC1" = spca_sim_p[, 1],
"SPC2" = spca_sim_p[, 2],
"penalty" = round(rep(penalty, nrow(toy_df))),
"label" = as.character(toy_df[, 31])) %>%
as_tibble()
return(spca_out)
})
df <- dplyr::bind_rows(df_ls)
# plot the results of sPCA
p_spca <- ggplot(df, aes(x = SPC1, y = SPC2, colour = label)) +
geom_point(alpha = 0.5) +
ggtitle("SPCA on Simulated Data for Varying L1 Penalty Terms") +
facet_wrap(~ penalty, nrow = 2) +
theme_minimal()
p_spca
The first two contrastive principal components of cPCA successfully captured
the variation of interest in the data with the help of the background dataset.
To fit contrastive PCA with the scPCA
function of this package, simply select
no penalization (by setting argument penalties = 0
), and specify the expected
number of clusters in the data. Here, we set the number of clusters to 4
(n_centers = 4
). Generally, this hyperparameter can be inferred a priori
from sample annotation variables (e.g. treatment groups, biological groups,
etc.), and empirical evidence suggests that the algorithm’s results are
robust to reasonable values of n_centers
(Boileau, Hejazi, and Dudoit 2020).
cpca_sim <- scPCA(target = toy_df[, 1:30],
background = background_df,
penalties = 0,
n_centers = 4)
# create a dataframe to be plotted
cpca_df <- cpca_sim$x %>%
as_tibble() %>%
mutate(label = toy_df[, 31] %>% as.character)
colnames(cpca_df) <- c("cPC1", "cPC2", "label")
# plot the results
p_cpca <- ggplot(cpca_df, aes(x = cPC1, y = cPC2, colour = label)) +
geom_point(alpha = 0.5) +
ggtitle("cPCA of Simulated Data") +
theme_minimal()
p_cpca
The leading sparse contrastive components were also able to capture the
variation of interest, though the clusters corresponding to the class labels
are more loose than those of cPCA. Importantly, the first and second loadings
vectors possess only eight and six non-zero loadings, respectively – a
significant improvement over cPCA, whose first and second cPCs each possess 30
non-zero loadings, in terms of interpretability. As with cPCA, the scPCA
algorithm has demonstrated its insensitivity to reasonable choices of
n_centers
(Boileau, Hejazi, and Dudoit 2020).
# run scPCA for using 40 logarithmically seperated contrastive parameter values
# and possible 20 L1 penalty terms
scpca_sim <- scPCA(target = toy_df[, 1:30],
background = background_df,
n_centers = 4,
penalties = exp(seq(log(0.01), log(0.5), length.out = 10)),
alg = "var_proj")
## Registered S3 method overwritten by 'sparsepca':
## method from
## print.spca elasticnet
# create a dataframe to be plotted
scpca_df <- scpca_sim$x %>%
as_tibble() %>%
mutate(label = toy_df[, 31] %>% as.character)
colnames(scpca_df) <- c("scPC1", "scPC2", "label")
# plot the results
p_scpca <- ggplot(scpca_df, aes(x = scPC1, y = scPC2, colour = label)) +
geom_point(alpha = 0.5) +
ggtitle("scPCA of Simulated Data") +
theme_minimal()
p_scpca
# create the loadings comparison plot
scpca_sim$rotation[, 1] <- -scpca_sim$rotation[, 1]
load_diff_df <- bind_rows(
cpca_sim$rotation %>% as.data.frame,
scpca_sim$rotation %>% as.data.frame
) %>%
mutate(
sparse = c(rep("0", 30), rep("1", 30)),
coef = rep(1:30, 2)
)
colnames(load_diff_df) <- c("comp1", "comp2", "sparse", "coef")
p1 <- load_diff_df %>%
ggplot(aes(y = comp1, x = coef, fill = sparse)) +
geom_bar(stat = "identity") +
xlab("") +
ylab("") +
ylim(-1.4, 1.4) +
ggtitle("First Component") +
scale_fill_discrete(name = "Method", labels = c("cPCA", "scPCA")) +
theme_minimal()
p2 <- load_diff_df %>%
ggplot(aes(y = comp2, x = coef, fill = sparse)) +
geom_bar(stat = "identity") +
xlab("") +
ylab("") +
ylim(-1.4, 1.4) +
ggtitle("Second Component") +
scale_fill_discrete(name = "Method", labels = c("cPCA", "scPCA")) +
theme_minimal()
# build full plot via ggpubr
annotate_figure(
ggarrange(p1, p2, nrow = 1, ncol = 2,
common.legend = TRUE, legend = "right"),
top = "Leading Loadings Vectors Comparison",
left = "Loading Weights",
bottom = "Variable Index"
)
The hyperparameters responsible for contrastiveness and sparsity of the cPCA and scPCA embeddings provided in this package are selected through a clustering-based hyperparameter tuning framework (detailed in (Boileau, Hejazi, and Dudoit 2020)). If the discovery of non-generalizable patterns in the data becomes a concern, a cross-validated approach to this tuning framework is made available. Below, we provide the results of the cPCA and scPCA algorithms whose hyperparemeters were selected using 3-fold cross-validation. We recommend using more folds for larger datasets when using this heuristic.
cpca_cv_sim <- scPCA(target = toy_df[, 1:30],
background = background_df,
penalties = 0,
n_centers = 4,
cv = 3)
# create a dataframe to be plotted
cpca_cv_df <- cpca_cv_sim$x %>%
as_tibble() %>%
dplyr::mutate(label = toy_df[, 31] %>% as.character)
## Warning: The `x` argument of `as_tibble.matrix()` must have unique column names if `.name_repair` is omitted as of tibble 2.0.0.
## Using compatibility `.name_repair`.
## This warning is displayed once every 8 hours.
## Call `lifecycle::last_lifecycle_warnings()` to see where this warning was generated.
colnames(cpca_cv_df) <- c("cPC1", "cPC2", "label")
# plot the results
p_cpca_cv <- ggplot(cpca_cv_df, aes(x = cPC1, y = cPC2, colour = label)) +
geom_point(alpha = 0.5) +
ggtitle("cPCA of Simulated Data") +
theme_minimal()
scpca_cv_sim <- scPCA(target = toy_df[, 1:30],
background = background_df,
n_centers = 4,
cv = 3,
penalties = exp(seq(log(0.01), log(0.5), length.out = 10)),
alg = "var_proj")
# create a dataframe to be plotted
scpca_cv_df <- scpca_cv_sim$x %>%
as_tibble() %>%
mutate(label = toy_df[, 31] %>% as.character)
colnames(scpca_cv_df) <- c("scPC1", "scPC2", "label")
# plot the results
p_scpca_cv <- ggplot(scpca_cv_df, aes(x = -scPC1, y = -scPC2, colour = label)) +
geom_point(alpha = 0.5) +
ggtitle("scPCA of Simulated Data") +
theme_minimal()
The scPCA
package provides three options with which to sparsify the loadings
produced by cPCA:
1. The traditional iterative SPCA algorithm by Zou, Hastie, and Tibshirani (2006), implemented in the elasticnet
package.
2. The SPCA algorithm relying on variable projection by Erichson et al. (2018), implemented in the sparsepca
package.
3. The randomized SPCA algorithm, which uses variable projection and random numerical linear algebra methods, by Erichson et al. (2018), implemented in the sparsepca
package.
For historical reasons, the default SPCA algorithm used is that of Zou, Hastie, and Tibshirani (2006). However, Erichson et al. (2018)’s methods are noticeably faster. We provide a comparison using the simulated data from Section 3 below:
timing_scPCA <- microbenchmark(
"Zou et al." = scPCA(target = toy_df[, 1:30],
background = background_df,
n_centers = 4,
alg = "iterative"),
"Erichson et al. SPCA" = scPCA(target = toy_df[, 1:30],
background = background_df,
n_centers = 4,
alg = "var_proj"),
"Erichson et al. RSPCA" = scPCA(target = toy_df[, 1:30],
background = background_df,
n_centers = 4,
alg = "rand_var_proj"),
times = 3
)
autoplot(timing_scPCA, log = TRUE) +
ggtitle("Running Time Comparison") +
theme_minimal()
The computational advantage of Erichson et al. (2018)’s methods is clear. On larger datasets, the scPCA method relying on the randomized version of SPCA is demonstrably more efficient than its non-randomized counterparts (Boileau, Hejazi, and Dudoit 2020), as well as other commonly-used dimensionality reduction techniques like t-Distributed Stochastic Neighbor Embedding (Maaten and Hinton 2008).
SingleCellExperiment
We now turn to discussing how the tools in the scPCA
package can be used more
readily with data structures common in computational biology by examining their
integration with the SingleCellExperiment
container class. For our example, we
will use splatter
to simulate a scRNA-seq dataset using the Splatter
framework (Zappia, Phipson, and Oshlack 2017). This method simulates a scRNA-seq count matrix
by way of a gamma-Poisson hierarchical model, where the mean expression level of
gene \(g_i,\; i = 1, \ldots, p\) is sampled from a gamma distribution, and the
count \(x_{i, j}, \; j = 1, \ldots, n\) of cell \(c_j\) is sampled from a Poisson
distribution with mean equal to the mean expression level of \(g_i\).
To start, let’s load the required packages and create a simple dataset of 300 cells and 500 genes. The cells are evenly split among three biological groups. The samples in two of these groups possess genes that are highly differentially expressed when compared to those in other groups; they comprise the target data. The genes of the third group of cells are less differentially expressed to the genes in the target data, and so this group is considered the background dataset. A large batch effect is simulated to confound the biological signal. In practice, cells that make up the background dataset are pre-defined based on experimental design, e.g. cells assumed to not contain the biological signal of interest. For an example, see Boileau, Hejazi, and Dudoit (2020).
library(splatter)
library(SingleCellExperiment)
# Simulate the three groups of cells. Mask cell heterogeneity with batch effect
params <- newSplatParams(
seed = 6757293,
nGenes = 500,
batchCells = c(150, 150),
batch.facLoc = c(0.05, 0.05),
batch.facScale = c(0.05, 0.05),
group.prob = c(0.333, 0.333, 0.334),
de.prob = c(0.1, 0.05, 0.1),
de.downProb = c(0.1, 0.05, 0.1),
de.facLoc = rep(0.2, 3),
de.facScale = rep(0.2, 3)
)
sim_sce <- splatSimulate(params, method = "groups")
To proceed, we log-transform the raw counts and retain only the 250 most
variable genes. We then split the simulated data into target and background data
sets. Our goal here is to demonstrate a typical assessment of scRNA-seq data
(and data from similar assays) using the tools made available in the scPCA
package. A standard analysis would follow a workflow largely similar to the one
below, though without such a computationally convenient dataset.
# rank genes by variance
n_genes <- 250
vars <- assay(sim_sce) %>%
log1p %>%
rowVars
names(vars) <- rownames(sim_sce)
vars <- sort(vars, decreasing = TRUE)
# subset SCE to n_genes with highest variance
sce_sub <- sim_sce[names(vars[seq_len(n_genes)]),]
sce_sub
## class: SingleCellExperiment
## dim: 250 300
## metadata(1): Params
## assays(6): BatchCellMeans BaseCellMeans ... TrueCounts counts
## rownames(250): Gene336 Gene362 ... Gene409 Gene444
## rowData names(9): Gene BaseGeneMean ... DEFacGroup2 DEFacGroup3
## colnames(300): Cell1 Cell2 ... Cell299 Cell300
## colData names(4): Cell Batch Group ExpLibSize
## reducedDimNames(0):
## mainExpName: NULL
## altExpNames(0):
# split the subsetted SCE into target and background SCEs
tg_sce <- sce_sub[, sce_sub$Group %in% c("Group1", "Group3")]
bg_sce <- sce_sub[, sce_sub$Group %in% c("Group2")]
Note that we limit our analysis to just 250 genes in the interest of time, a typical analysis would generally include a much larger proportion (if not all) of the genes assayed.
Owing to the flexibility of the SingleCellExperiment
class, we are able to
generate PCA, cPCA, and scPCA representations of the target data, storing these
in SingleCellExperiment
object using the reducedDims
method.
Below, we perform standard PCA on the log-transformed target data, which has
been centered and scaled, and perform both cPCA and cPCA using the scPCA
function, storing each in a separate object. After applying each of these
dimension reduction techniques, we store the resultant objects in a SimpleList
that is then appended to the SingleCellExperiment
object using the
reducedDims
accessor. The results are presented in the following figure. cPCA
and scPCA successfully remove the batch effect, though PCA is incapable of doing
so in two dimensions.
# for both cPCA and scPCA, we'll set the penalties and contrasts arguments
contrasts <- exp(seq(log(0.1), log(100), length.out = 5))
penalties <- exp(seq(log(0.001), log(0.1), length.out = 3))
# first, PCA
pca_out <- prcomp(t(log1p(counts(tg_sce))), center = TRUE, scale. = TRUE)
# next, cPCA
cpca_out <- scPCA(t(log1p(counts(tg_sce))),
t(log1p(counts(bg_sce))),
n_centers = 2,
n_eigen = 2,
contrasts = contrasts,
penalties = 0,
center = TRUE,
scale = TRUE)
# finally, scPCA
scpca_out <- scPCA(t(log1p(counts(tg_sce))),
t(log1p(counts(bg_sce))),
n_centers = 2,
n_eigen = 2,
contrasts = contrasts,
penalties = penalties,
center = TRUE,
scale = TRUE,
alg = "var_proj")
# store new representations in the SingleCellExperiment object
reducedDims(tg_sce) <- SimpleList(PCA = pca_out$x[, 1:2],
cPCA = cpca_out$x,
scPCA = scpca_out$x)
tg_sce
## class: SingleCellExperiment
## dim: 250 213
## metadata(1): Params
## assays(6): BatchCellMeans BaseCellMeans ... TrueCounts counts
## rownames(250): Gene336 Gene362 ... Gene409 Gene444
## rowData names(9): Gene BaseGeneMean ... DEFacGroup2 DEFacGroup3
## colnames(213): Cell1 Cell2 ... Cell297 Cell299
## colData names(4): Cell Batch Group ExpLibSize
## reducedDimNames(3): PCA cPCA scPCA
## mainExpName: NULL
## altExpNames(0):
In the above, we set n_eigen = 2
in the calls to the scPCA
function that
generate the cPCA and scPCA output, recovering the rotated gene-level data for
just the first two components of the dimension reduction. For congruence with
cPCA and scPCA, we retain only the first two dimensions generated by PCA in the
information stored in the SingleCellExperiment
object.
While this is done to be explicit (as n_eigen = 2
by default), we wish to
emphasize that it will often be appropriate to set this to a higher value in
order to recover further dimensions generated by these techniques, as such
additional information may be useful in exploring further signal in the data at
hand. Of course, as the number of components increases, scPCA
’s computation
time increases. To offset this, consider reducing the size of the
hyperparameter grid.
The same strategy might be used when applying scPCA
large datasets.
Additionally, consider setting the scaled_matrix
argument to TRUE
. This
takes advantage of the ScaledMatrix
packages framework to efficiently compute large contrastive covariance
matrices, at the expense of numerical precision.
scPCA
for Cell Cycle Effect RemovalContrastive methods have shown some success in removing cell cycle effects from scRNA-seq data. See Chapters 17 and 41 of Orchestrating Single-Cell Analysis with Bioconductor (Amezquita et al. 2020) for discussions and examples.
Finally, note that the scPCA
function has an argument parallel
(set to
FALSE
by default), which facilitates parallelized computation of the various
subroutines required in constructing the output of the scPCA
function. In a
standard analysis of genomic data, use of this parallelization will be crucial,
thus, each of the core subroutines of scPCA
has an equivalent parallelized
variant that makes use of the infrastructure provided by the BiocParallel
package. In order to make
effective use of this parallelization, one need only set parallel = TRUE
in a
call to scPCA
after having registered a particular parallelization back-end
for parallel evaluation as described in the BiocParallel
documentation. An
example of this form of parallelization follows:
# perform the same operations in parallel using BiocParallel
library(BiocParallel)
param <- MulticoreParam()
register(param)
# perfom cPCA
cpca_bp <- scPCA(
target = toy_df[, 1:30],
background = background_df,
contrasts = exp(seq(log(0.1), log(100), length.out = 10)),
penalties = 0,
n_centers = 4,
parallel = TRUE
)
# perform scPCA
scpca_bp <- scPCA(
target = toy_df[, 1:30],
background = background_df,
contrasts = exp(seq(log(0.1), log(100), length.out = 10)),
penalties = seq(0.1, 1, length.out = 9),
n_centers = 4,
parallel = TRUE
)
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## Platform: x86_64-pc-linux-gnu (64-bit)
## Running under: Ubuntu 20.04.4 LTS
##
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## BLAS: /home/biocbuild/bbs-3.15-bioc/R/lib/libRblas.so
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## attached base packages:
## [1] stats4 stats graphics grDevices utils datasets methods
## [8] base
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## other attached packages:
## [1] splatter_1.20.0 SingleCellExperiment_1.18.0
## [3] SummarizedExperiment_1.26.0 Biobase_2.56.0
## [5] GenomicRanges_1.48.0 GenomeInfoDb_1.32.0
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## [9] BiocGenerics_0.42.0 MatrixGenerics_1.8.0
## [11] matrixStats_0.62.0 microbenchmark_1.4.9
## [13] scPCA_1.10.0 elasticnet_1.3
## [15] lars_1.3 ggpubr_0.4.0
## [17] ggplot2_3.3.5 dplyr_1.0.8
## [19] BiocStyle_2.24.0
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Abid, Abubakar, Martin J Zhang, Vivek K Bagaria, and James Zou. 2018. “Exploring Patterns Enriched in a Dataset with Contrastive Principal Component Analysis.” Nature Communications 9 (1): 2134.
Amezquita, Robert A., Aaron T. L. Lun, Etienne Becht, Vince J. Carey, Lindsay N. Carpp, Ludwig Geistlinger, Federico Marini, et al. 2020. “Orchestrating Single-Cell Analysis with Bioconductor.” Nature Methods 17 (2): 137–45.
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