SPsimSeq is a semi-parametric simulation procedure for simulating bulk and single-cell RNA-seq data. It is designed to maximally retain the characteristics of real RNA-seq data with reasonable flexibility to simulate a wide range of scenarios. In a first step, the logarithmic counts per millions of reads (log-CPM) values from a given real dataset are used for semi-parametrically estimating gene-wise distributions and the between-genes correlation structure. In particular, the estimation of the probability distributions uses the fast log-linear model-based density estimation approach developed by Efron and Tibshirani (1996) and Lindsey (1974). The method makes use of the Gaussian-copulas (Cario and Nelson 1997) to retain the between-genes correlation structure, as implemented by Hawinkel et al. (2019) for microbiome data simulation. Arbitrarily large datasets, with realistically varying library sizes, can be sampled from these distributions while maintaining the correlation structure between the genes. Our method has an additional step to explicitly account for the high abundance of zero counts, typical for single-cell RNA-seq data. This step models the probability of zero counts as a function of the mean expression of the gene and the library size (read depth) of the cell (both in log scale). Zero counts are then added to the simulated data such that the observed relationship (zero probability to mean expression and library size) is maintained. In addition, our method simulates DE by separately estimating the distributions of the gene expression from the different populations (for example treatment groups) in the source data, and subsequently sampling a new dataset from each group. The details of the SPsimSeq procedures, implementations and benchmarking results can be found in the supplementary file.
In this documentation, we will demonstrate SPsimSeq for simulating bulk and single-cell RNA-seq, data subsequently compare the characteristics of the simulated data with the real source data.
The package can be installed and loaded using the following commands:
## Install SPsimSeq
library(devtools)
install_github("CenterForStatistics-UGent/SPsimSeq")
or from BioConductor
## Install SPsimSeq
library(BiocManager)
BiocManager::install("SPsimSeq")
# load package
library(SPsimSeq)
##
Zhang RNA-seq data (Zhang et al. 2015): The data contains 498 neuroblastoma tumors. In short, unstranded poly(A)+ RNA sequencing was performed on the HiSeq 2000 instrument (Illumina). Paired-end reads with a length of 100 nucleotides were obtained. To quantify the full transcriptome, raw fastq files were processed with Kallisto v0.42.4 (index build with GRCh38-Ensembl v85). The pseudo-alignment tool Kallisto (???) was chosen above other quantification methods as it is performing equally good but faster. For this study, a subset of 172 tumors (samples) with high-risk disease were selected, forming two groups: the MYCN amplified (\(n_1\) = 91) and MYCN non-amplified (\(n_2\) = 81) tumours as used in (???). Sometimes we refer this dataset to us the Zhang data or the Zhang neuroblastoma data. A subset of this dataset (5000 randomly selected genes) is available with the SPsimSeq package for illustration purpose only.
# load the Zhang bulk RNA-seq data (availabl with the package)
data("zhang.data.sub")
# filter genes with sufficient expression (important step to avoid bugs)
zhang.counts <- zhang.data.sub$counts
MYCN.status <- zhang.data.sub$MYCN.status #The grouping variable
This dataset is now used as a template for semiparametric data generation. We simulate only a single data (n.sim = 1) with the following properties: - 3000 genes ( n.genes = 3000) - 172 samples (tot.samples = 172) – equal to the source data - the samples are equally divided into 2 groups each with 90 samples (group.config = c(0.5, 0.5)) – almost equal to the source data - all samples are from a single batch (batch.config = 1) - we add 10% DE genes (pDE = 0.1) - the DE genes have a log-fold-change of at least 0.5 in the source data (lfc.thrld = 0.5) - we do not model the zeroes separately, they are the part of density estimation (model.zero.prob = FALSE)
set.seed(6452) #Set seed for reproducibility
# simulate data
sim.data.bulk <- SPsimSeq(n.sim = 1, s.data = zhang.counts,
group = MYCN.status, n.genes = 3000, batch.config = 1,
group.config = c(0.5, 0.5), tot.samples = ncol(zhang.counts),
pDE = 0.1, lfc.thrld = 0.5, result.format = "list", return.details = TRUE)
## Estimating featurewise correlations ...
## Selecting candidate DE genes ...
## Note: The number of null genes (not DE) in the source data is 968 and the number of null genes required to be included in the simulated data is 2700. Therefore, candidiate null genes are sampled with replacement.
## Note: The number of DE genes detected in the source data is 32 and the number of DE genes required to be included in the simulated data is 300. Therefore, candidiate DE genes are sampled with replacement.
## Estimating densities ...
## Configuring design ...
## Simulating data ...
## ...1 of 1
Next, we explore the data we just generated.
sim.data.bulk1 <- sim.data.bulk$sim.data.list[[1]]
head(sim.data.bulk1$counts[, seq_len(5)]) # count data
## Sample_1 Sample_2 Sample_3 Sample_4 Sample_5
## Gene_1 12 1 4 25 64
## Gene_2 0 7 0 4 1
## Gene_3 5 0 2 0 2
## Gene_4 4 1 0 0 2
## Gene_5 4 1 0 9 7
## Gene_6 3 0 3 0 0
head(sim.data.bulk1$colData) # sample info
## Batch Group sim.Lib.Size
## Sample_1 1 1 762054
## Sample_2 1 1 665409
## Sample_3 1 1 727419
## Sample_4 1 1 385784
## Sample_5 1 1 495890
## Sample_6 1 1 774708
head(sim.data.bulk1$rowData) # gene info
## DE.ind source.ID
## Gene_1 TRUE ADAMTS19
## Gene_2 TRUE RP11-1084I9.1
## Gene_3 TRUE RP11-44F14.8
## Gene_4 TRUE RP11-662J14.2
## Gene_5 TRUE RP11-326L2.1
## Gene_6 TRUE RP5-998H6.2
Since we set return.details = TRUE, we have access to all density estimates, which can be extracted with the evaluateDensities function.
geneDens = evaluateDensities(sim.data.bulk, newData = rownames(zhang.counts)[1])
#This returns for every sample, the midpoints (mids) and associated densities (gy)
Next we compare the data generated with SPsimSeq with the original data properties to show that they are realistic and close to the real data.
# compare the distributions of the mean expressions, variability,
# and fraction of zero counts per gene
library(LSD) # for generating heatmap plots
# normalize counts for comparison
Y0.log.cpm <- log2(edgeR::cpm(zhang.counts)+1)
Y1.log.cpm <- log2(edgeR::cpm(sim.data.bulk1$counts)+1)
Y0.log.cpm <- Y0.log.cpm[rowMeans(Y0.log.cpm>0)>=0.1, ]
Y1.log.cpm <- Y1.log.cpm[rowMeans(Y1.log.cpm>0)>=0.1, ]
rowVars <- function(X){apply(X, 1, var, na.rm=TRUE)}
rowCVs <- function(X){apply(X, 1, function(x) sd(x, na.rm=TRUE)/mean(x, na.rm=TRUE))}
par(mfrow=c(1, 3))
boxplot(list(real.data=log(colSums(zhang.counts)),
simulated.data=log(sim.data.bulk1$colData$sim.Lib.Size)),
main="library size")
boxplot(list(real.data=rowMeans(Y0.log.cpm),
simulated.data=rowMeans(Y1.log.cpm)),
main="mean expression of genes")
boxplot(list(real.data=rowVars(Y0.log.cpm),
simulated.data=rowVars(Y1.log.cpm)),
main="variance of gene expressions")
The library sizes are identical since they were not modelled (see variable.lib.size argument in ?SPsimSeq). Next, we look at mean-variance trends
# compare the relationship between the mean and variability
par(mfrow=c(1,3), mar=c(4,4,4,1))
heatscatter(rowMeans(Y0.log.cpm), rowCVs(Y0.log.cpm), ylim=c(0, 6), xlim=c(0, 16),
colpal="bl2gr2rd", main="real data", xlab="mean log2-CPM",
ylab="coefficients of variation", cexplot=0.5, alpha = 60, cex.lab=1.25)
heatscatter(rowMeans(Y1.log.cpm), rowCVs(Y1.log.cpm), ylim=c(0, 6), xlim=c(0, 16),
main="SPsimSeq", xlab="mean log2-CPM", ylab="coefficients of variation",
cexplot=0.5, alpha = 60, colpal="bl2gr2rd", cex.lab=1.25)
n.gride <- 1000
min.g <- seq(0, 20, length.out = n.gride+1)[-n.gride]
max.g <- seq(0, 20, length.out = n.gride+1)[-1]
mid.g <- (min.g+max.g)/2
f.real <- vapply(seq_len(n.gride), FUN.VALUE = double(1), function(r){
x <- Y0.log.cpm[rowMeans(Y0.log.cpm)<=max.g[r] & rowMeans(Y0.log.cpm)>min.g[r],]
y <- ifelse(!is.null(dim(x)), mean(rowCVs(x)), mean(sd(x)/mean(x)))
y
})
f.SPsim <- vapply(seq_len(n.gride), FUN.VALUE = double(1), function(r){
x <- Y1.log.cpm[rowMeans(Y1.log.cpm)<=max.g[r] & rowMeans(Y1.log.cpm)>min.g[r],]
y <- ifelse(!is.null(dim(x)), mean(rowCVs(x)), mean(sd(x)/mean(x)))
y
})
sm1 <- loess(I(f.SPsim-f.real)~mid.g)
plot(mid.g, f.SPsim-f.real, xlim=c(0, 14), col="lightskyblue", pch=20, cex.lab=1.25,
cex.main=1.4, main="SPsimSeq - real data", ylab="difference", xlab="mean log2-CPM")
lines(mid.g,predict(sm1, newdata = mid.g), col="blue", lwd=3)
We emulated the correlation networks found in the real data (see genewiseCor argument). Now we check if the correlation patterns in the synthetic data resemble those in the real data.
# compare the correlation between genes and samples
cor.mat.Y0 <- cor(t(Y0.log.cpm))
cor.mat.Y1 <- cor(t(Y1.log.cpm))
cor.vec.Y0 <- cor.mat.Y0[upper.tri(cor.mat.Y0)]
cor.vec.Y1 <- cor.mat.Y1[upper.tri(cor.mat.Y1)]
par(mfrow=c(1,3), mar=c(4,4,3.5,1))
hist(cor.vec.Y0, nclass = 30, probability = TRUE,
border="gray", col="steelblue1", main="real data", xlab="Genewise correlations",
ylim=c(0, 3.5), xlim=c(-1, 1), cex.lab=1.25)
hist(cor.vec.Y1, nclass = 30, probability = TRUE, border="gray",
col="steelblue1", main="SPsimSeq", xlab="Genewise correlations",
ylim=c(0, 3.5), xlim=c(-1, 1), cex.lab=1.25)
plot(seq(-1, 1, 0.1), seq(-1, 1, 0.1), type="n", xlab="quantile (real data)",
ylab="quantile (simulated data)", main="correlation quantile-quantile plot")
abline(0, 1, col="gray")
points(quantile(cor.vec.Y0, seq(0, 1, 0.001)), quantile(cor.vec.Y1, seq(0, 1, 0.001)),
col="blue", pch=20, cex=1.5, cex.lab=1.25)
Neuroblastoma NGP cells scRNA-seq data (NGP data) retrieved from (Verboom et al. 2019) (GEO accession GSE119984): This dataset is generated for a cellular perturbation experiment on the C1 instrument (SMARTer protocol) (Verboom et al. 2019). This total RNA-seq dataset contains 83 NGP neuroblastoma cells, of which 31 were treated with 8\(\mu\)M of nutlin-3 and the other 52 cells were treated with vehicle (controls). In the subsequent sections, this dataset is referred to us the NGP single-cell RNA-seq data.
We simulate only a single scRNA-seq data (n.sim = 1) with the following property - 4000 genes (n.genes = 4000) - 100 cells (tot.samples = 100) - the cells are equally divided into 2 groups each with 50 cells (group.config = c(0.5, 0.5)) - all cells are from a single batch (batch.config = 1) - we add 10% DE genes (pDE = 0.1) - the DE genes have a log-fold-change of at least 0.5 - we model the zeroes separately (model.zero.prob = TRUE) - the ouput will be in SingleCellExperiment class object (result.format = “SCE”)
library(SingleCellExperiment)
## Loading required package: SummarizedExperiment
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## Welcome to Bioconductor
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# load the NGP nutlin data (availabl with the package, processed with SMARTer/C1 protocol, and contains read-counts)
data("scNGP.data")
set.seed(654321)
# simulate data (we simulate here only a single data, n.sim = 1)
sim.data.sc <- SPsimSeq(n.sim = 1, s.data = scNGP.data,
group = scNGP.data$characteristics..treatment,
n.genes = 4000, batch.config = 1,
group.config = c(0.5, 0.5), tot.samples = 100,
pDE = 0.1, lfc.thrld = 0.5, model.zero.prob = TRUE,
result.format = "SCE")
## Estimating featurewise correlations ...
## Selecting candidate DE genes ...
## Note: The number of null genes (not DE) in the source data is 981 and the number of null genes required to be included in the simulated data is 3600. Therefore, candidiate null genes are sampled with replacement.
## Note: The number of DE genes detected in the source data is 19 and the number of DE genes required to be included in the simulated data is 400. Therefore, candidiate DE genes are sampled with replacement.
## Fitting zero probability model ...
## Estimating densities ...
## Configuring design ...
## Simulating data ...
## ...1 of 1
Take a quick peek at the data.
sim.data.sc1 <- sim.data.sc[[1]]
class(sim.data.sc1)
## [1] "SingleCellExperiment"
## attr(,"package")
## [1] "SingleCellExperiment"
head(counts(sim.data.sc1)[, seq_len(5)])
## Sample_1 Sample_2 Sample_3 Sample_4 Sample_5
## Gene_1 0 25 47 25 0
## Gene_2 77 381 14 609 184
## Gene_3 0 0 0 37 0
## Gene_4 0 35 0 0 0
## Gene_5 18 0 52 27 8
## Gene_6 7 24 85 0 12
colData(sim.data.sc1)
## DataFrame with 100 rows and 3 columns
## Batch Group sim.Lib.Size
## <character> <character> <numeric>
## Sample_1 1 vehicle 6842
## Sample_2 1 vehicle 31644
## Sample_3 1 vehicle 29766
## Sample_4 1 vehicle 34072
## Sample_5 1 vehicle 19042
## ... ... ... ...
## Sample_96 1 nutlin 41566
## Sample_97 1 nutlin 36668
## Sample_98 1 nutlin 19377
## Sample_99 1 nutlin 33645
## Sample_100 1 nutlin 21125
rowData(sim.data.sc1)
## DataFrame with 4000 rows and 2 columns
## DE.ind source.ID
## <logical> <character>
## Gene_1 TRUE ENSG00000105613
## Gene_2 TRUE ENSG00000166508
## Gene_3 TRUE ENSG00000119946
## Gene_4 TRUE ENSG00000164306
## Gene_5 TRUE ENSG00000105613
## ... ... ...
## Gene_3996 FALSE ENSG00000101608
## Gene_3997 FALSE ENSG00000239335
## Gene_3998 FALSE ENSG00000100890
## Gene_3999 FALSE ENSG00000213171
## Gene_4000 FALSE ENSG00000125386
Look at basic data properties.
# normalize counts for comparison
Y0.log.cpm <- log2(edgeR::cpm(counts(scNGP.data))+1)
Y1.log.cpm <- log2(edgeR::cpm(counts(sim.data.sc1))+1)
Y0.log.cpm <- Y0.log.cpm[rowMeans(Y0.log.cpm>0)>=0.1, ]
Y1.log.cpm <- Y1.log.cpm[rowMeans(Y1.log.cpm>0)>=0.1, ]
rowVars <- function(X){apply(X, 1, var, na.rm=TRUE)}
rowCVs <- function(X){apply(X, 1, function(x) sd(x, na.rm=TRUE)/mean(x, na.rm=TRUE))}
rowZeroFrac <- function(X){apply(X, 1, function(x) mean(x==0, na.rm=TRUE))}
par(mfrow=c(1, 3))
boxplot(list(real.data=colSums(counts(scNGP.data)),
simulated.data=colData(sim.data.sc1)$sim.Lib.Size),
main="library size")
boxplot(list(real.data=rowMeans(Y0.log.cpm),
simulated.data=rowMeans(Y1.log.cpm)),
main="mean expression of genes")
boxplot(list(real.data=rowVars(Y0.log.cpm),
simulated.data=rowVars(Y1.log.cpm)),
main="variance of gene expressions")
Compare mean-variance distributions
# compare the relationship between the mean and variability
par(mfrow=c(1,3), mar=c(4,4,4,1))
heatscatter(rowMeans(Y0.log.cpm), rowCVs(Y0.log.cpm), ylim=c(0, 6), xlim=c(0, 16),
colpal="bl2gr2rd", main="real data", xlab="mean log2-CPM",
ylab="coefficients of variation", cexplot=0.5, alpha = 60, cex.lab=1.25)
heatscatter(rowMeans(Y1.log.cpm), rowCVs(Y1.log.cpm), ylim=c(0, 6), xlim=c(0, 16),
main="SPsimSeq", xlab="mean log2-CPM", ylab="coefficients of variation",
cexplot=0.5, alpha = 60, colpal="bl2gr2rd", cex.lab=1.25)
n.gride <- 1000
min.g <- seq(0, 20, length.out = n.gride+1)[-n.gride]
max.g <- seq(0, 20, length.out = n.gride+1)[-1]
mid.g <- (min.g+max.g)/2
f.real <- vapply(seq_len(n.gride), FUN.VALUE = double(1), function(r){
x <- Y0.log.cpm[rowMeans(Y0.log.cpm)<=max.g[r] & rowMeans(Y0.log.cpm)>min.g[r],]
y <- ifelse(!is.null(dim(x)), mean(rowCVs(x)), mean(sd(x)/mean(x)))
y
})
f.SPsim <- vapply(seq_len(n.gride), FUN.VALUE = double(1), function(r){
x <- Y1.log.cpm[rowMeans(Y1.log.cpm)<=max.g[r] & rowMeans(Y1.log.cpm)>min.g[r],]
y <- ifelse(!is.null(dim(x)), mean(rowCVs(x)), mean(sd(x)/mean(x)))
y
})
sm1 <- loess(I(f.SPsim-f.real)~mid.g)
plot(mid.g, f.SPsim-f.real, xlim=c(0, 14), col="lightskyblue", pch=20, cex.lab=1.25,
cex.main=1.4, main="SPsimSeq - real data", ylab="difference", xlab="mean log2-CPM")
lines(mid.g,predict(sm1, newdata = mid.g), col="blue", lwd=3)
Means and zeroes
# compare the relationship between the mean and fraction of zeros
par(mfrow=c(1,3), mar=c(4,4,4,1))
heatscatter(rowMeans(Y0.log.cpm), rowZeroFrac(Y0.log.cpm), ylim=c(0, 1),
xlim=c(0, 16), colpal="bl2gr2rd", main="real data", xlab="mean log2-CPM",
ylab="fraction of zero counts", cexplot=0.5, alpha = 60, cex.lab=1.25)
heatscatter(rowMeans(Y1.log.cpm), rowZeroFrac(Y1.log.cpm), ylim=c(0, 1),
xlim=c(0, 16), main="SPsimSeq", xlab="mean log2-CPM",
ylab="fraction of zero counts", cexplot=0.5, alpha = 60,
colpal="bl2gr2rd", cex.lab=1.25)
n.gride <- 1000
min.g <- seq(0, 20, length.out = n.gride+1)[-n.gride]
max.g <- seq(0, 20, length.out = n.gride+1)[-1]
mid.g <- (min.g+max.g)/2
f.real <- vapply(seq_len(n.gride), FUN.VALUE = double(1), function(r){
x <- Y0.log.cpm[rowMeans(Y0.log.cpm)<=max.g[r] & rowMeans(Y0.log.cpm)>min.g[r],]
y <- ifelse(!is.null(dim(x)), mean(rowZeroFrac(x)), mean(x==0))
y
})
f.SPsim <- vapply(seq_len(n.gride), FUN.VALUE = double(1), function(r){
x <- Y1.log.cpm[rowMeans(Y1.log.cpm)<=max.g[r] & rowMeans(Y1.log.cpm)>min.g[r],]
y <- ifelse(!is.null(dim(x)), mean(rowZeroFrac(x)), mean(x==0))
y
})
sm1 <- loess(I(f.SPsim-f.real)~mid.g)
plot(mid.g, f.SPsim-f.real, xlim=c(0, 14), col="lightskyblue", pch=20, cex.lab=1.25,
cex.main=1.4, main="SPsimSeq - real data", ylab="difference", xlab="mean log2-CPM")
lines(mid.g,predict(sm1, newdata = mid.g), col="blue", lwd=3)
Also here we look at the correlation networks
# compare the correlation between genes and samples
Y0.log.cpm2 <- Y0.log.cpm[rowMeans(Y0.log.cpm>0)>0.25, ]
Y1.log.cpm2 <- Y1.log.cpm[rowMeans(Y1.log.cpm>0)>0.25, ]
cor.mat.Y0 <- cor(t(Y0.log.cpm2))
cor.mat.Y1 <- cor(t(Y1.log.cpm2))
cor.vec.Y0 <- cor.mat.Y0[upper.tri(cor.mat.Y0)]
cor.vec.Y1 <- cor.mat.Y1[upper.tri(cor.mat.Y1)]
par(mfrow=c(1,3), mar=c(4,4,3.5,1))
hist(cor.vec.Y0, nclass = 30, probability = TRUE,
border="gray", col="steelblue1", main="real data", xlab="pairwise correlation between genes",
ylim=c(0, 3.5), xlim=c(-1, 1), cex.lab=1.25)
hist(cor.vec.Y1, nclass = 30, probability = TRUE, border="gray",
col="steelblue1", main="SPsimSeq", xlab="pairwise correlation between genes",
ylim=c(0, 3.5), xlim=c(-1, 1), cex.lab=1.25)
plot(seq(-1, 1, 0.1), seq(-1, 1, 0.1), type="n", xlab="quantile (real data)",
ylab="quantile (simulated data)", main="correlation quantile-quantile plot")
abline(0, 1, col="gray")
points(quantile(cor.vec.Y0, seq(0, 1, 0.001)), quantile(cor.vec.Y1, seq(0, 1, 0.001)),
col="blue", pch=20, cex=1.5, cex.lab=1.25)
sessionInfo()
## R version 4.2.0 RC (2022-04-19 r82224)
## Platform: x86_64-pc-linux-gnu (64-bit)
## Running under: Ubuntu 20.04.4 LTS
##
## Matrix products: default
## BLAS: /home/biocbuild/bbs-3.15-bioc/R/lib/libRblas.so
## LAPACK: /home/biocbuild/bbs-3.15-bioc/R/lib/libRlapack.so
##
## locale:
## [1] LC_CTYPE=en_US.UTF-8 LC_NUMERIC=C
## [3] LC_TIME=en_GB LC_COLLATE=C
## [5] LC_MONETARY=en_US.UTF-8 LC_MESSAGES=en_US.UTF-8
## [7] LC_PAPER=en_US.UTF-8 LC_NAME=C
## [9] LC_ADDRESS=C LC_TELEPHONE=C
## [11] LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C
##
## attached base packages:
## [1] stats4 stats graphics grDevices utils datasets methods
## [8] base
##
## other attached packages:
## [1] SingleCellExperiment_1.18.0 SummarizedExperiment_1.26.0
## [3] Biobase_2.56.0 GenomicRanges_1.48.0
## [5] GenomeInfoDb_1.32.0 IRanges_2.30.0
## [7] S4Vectors_0.34.0 BiocGenerics_0.42.0
## [9] MatrixGenerics_1.8.0 matrixStats_0.62.0
## [11] LSD_4.1-0 SPsimSeq_1.6.0
## [13] BiocStyle_2.24.0
##
## loaded via a namespace (and not attached):
## [1] colorspace_2.0-3 ellipsis_0.3.2 dynamicTreeCut_1.63-1
## [4] htmlTable_2.4.0 XVector_0.36.0 base64enc_0.1-3
## [7] rstudioapi_0.13 bit64_4.0.5 AnnotationDbi_1.58.0
## [10] fansi_1.0.3 mvtnorm_1.1-3 codetools_0.2-18
## [13] splines_4.2.0 doParallel_1.0.17 cachem_1.0.6
## [16] impute_1.70.0 knitr_1.38 ade4_1.7-19
## [19] Formula_1.2-4 jsonlite_1.8.0 phyloseq_1.40.0
## [22] WGCNA_1.71 cluster_2.1.3 GO.db_3.15.0
## [25] png_0.1-7 BiocManager_1.30.17 compiler_4.2.0
## [28] httr_1.4.2 backports_1.4.1 assertthat_0.2.1
## [31] Matrix_1.4-1 fastmap_1.1.0 limma_3.52.0
## [34] cli_3.3.0 htmltools_0.5.2 tools_4.2.0
## [37] igraph_1.3.1 gtable_0.3.0 glue_1.6.2
## [40] GenomeInfoDbData_1.2.8 reshape2_1.4.4 dplyr_1.0.8
## [43] Rcpp_1.0.8.3 jquerylib_0.1.4 rhdf5filters_1.8.0
## [46] vctrs_0.4.1 Biostrings_2.64.0 multtest_2.52.0
## [49] nlme_3.1-157 ape_5.6-2 preprocessCore_1.58.0
## [52] iterators_1.0.14 xfun_0.30 fastcluster_1.2.3
## [55] stringr_1.4.0 lifecycle_1.0.1 edgeR_3.38.0
## [58] zlibbioc_1.42.0 MASS_7.3-57 scales_1.2.0
## [61] biomformat_1.24.0 parallel_4.2.0 rhdf5_2.40.0
## [64] RColorBrewer_1.1-3 yaml_2.3.5 memoise_2.0.1
## [67] gridExtra_2.3 ggplot2_3.3.5 sass_0.4.1
## [70] rpart_4.1.16 latticeExtra_0.6-29 stringi_1.7.6
## [73] RSQLite_2.2.12 highr_0.9 foreach_1.5.2
## [76] permute_0.9-7 checkmate_2.1.0 rlang_1.0.2
## [79] pkgconfig_2.0.3 bitops_1.0-7 evaluate_0.15
## [82] lattice_0.20-45 Rhdf5lib_1.18.0 purrr_0.3.4
## [85] htmlwidgets_1.5.4 bit_4.0.4 tidyselect_1.1.2
## [88] plyr_1.8.7 magrittr_2.0.3 bookdown_0.26
## [91] R6_2.5.1 magick_2.7.3 generics_0.1.2
## [94] Hmisc_4.7-0 DelayedArray_0.22.0 DBI_1.1.2
## [97] mgcv_1.8-40 pillar_1.7.0 foreign_0.8-82
## [100] fitdistrplus_1.1-8 survival_3.3-1 KEGGREST_1.36.0
## [103] RCurl_1.98-1.6 nnet_7.3-17 tibble_3.1.6
## [106] crayon_1.5.1 utf8_1.2.2 rmarkdown_2.14
## [109] jpeg_0.1-9 locfit_1.5-9.5 grid_4.2.0
## [112] data.table_1.14.2 vegan_2.6-2 blob_1.2.3
## [115] digest_0.6.29 munsell_0.5.0 bslib_0.3.1
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