systemPipeR 2.12.0
This is a cheminformatics workflow template of the systemPipeRdata package, a companion package to systemPipeR (H Backman and Girke 2016). Like other workflow templates, it can be loaded with a single command. Users have the flexibility to utilize the template as is or modify it as needed. More in-depth information on designing workflows can be found in the main vignette of systemPipeRdata. This template serves as a starting point for conducting structure similarity searching and clustering of small molecules. Most of its steps use functions of the ChemmineR package from Bioconductor. There are no command-line (CL) software tools required for running this workflow in its current form as all steps are based on R functions.
The Rmd
file (SPcheminfo.Rmd
) associated with this vignette serves a dual purpose. It acts
both as a template for executing the workflow and as a template for generating
a reproducible scientific analysis report. Thus, users want to customize the text
(and/or code) of this vignette to describe their experimental design and
analysis results. This typically involves deleting the instructions how to work
with this workflow, and customizing the text describing experimental designs,
other metadata and analysis results.
The following data analysis routines are included in this workflow template:
The environment of the chosen workflow is generated with the genWorenvir
function. After this, the user’s R session needs to be directed into the
resulting directory (here SPcheminfo
).
systemPipeRdata::genWorkenvir(workflow = "SPcheminfo", mydirname = "SPcheminfo")
setwd("SPcheminfo")
The SPRproject
function initializes a new workflow project instance. This
function call creates an empty SAL
workflow container and at the same time a
linked project log directory (default name .SPRproject
) that acts as a
flat-file database of a workflow. For additional details, please visit this
section
in systemPipeR's
main vignette.
library(systemPipeR)
sal <- SPRproject()
sal
The importWF
function allows to import all the workflow steps outlined in
the source Rmd file of this vignette into a SAL
(SYSargsList
) workflow
container. Once imported, the entire workflow can be executed from start to
finish using the runWF
function. More details regarding this process are
provided in the following section here.
sal <- importWF(sal, "SPcheminfo.Rmd")
sal <- runWF(sal)
The first step loads the systemPipeR
and ChemmineR
packages.
appendStep(sal) <- LineWise(code = {
library(systemPipeR)
library(ChemmineR)
}, step_name = "load_packages")
This step imports 100 small molecule structures from an SDF file with the read.SDFset
function. The structures
are stored in an SDFset
object, a class defined by the ChemmineR
package.
appendStep(sal) <- LineWise(code = {
sdfset <- read.SDFset("https://cluster.hpcc.ucr.edu/~tgirke/Documents/R_BioCond/Samples/sdfsample.sdf")
}, step_name = "load_data", dependency = "load_packages")
The structures of selected molecules (here first four) are be visualized with the plot
function.
appendStep(sal) <- LineWise(code = {
png("results/mols_plot.png", 700, 600)
# Here only first 4 are plotted. Please choose the ones
# you want to plot.
ChemmineR::plot(sdfset[1:4])
dev.off()
}, step_name = "vis_mol", dependency = "load_data", run_step = "optional")
Basic physicochemical properties are computed for the small molecules stored in sdfset
.
For this example atom frequencies, molecular weight and formula are computed. For more options
users want to consult the vignette of the ChemmineR
package.
appendStep(sal) <- LineWise(code = {
propma <- data.frame(MF = MF(sdfset), MW = MW(sdfset), atomcountMA(sdfset))
readr::write_csv(propma, "results/basic_mol_info.csv")
}, step_name = "basic_mol_info", dependency = "load_data", run_step = "optional")
In this example, the extracted property data is visualized using a box plot.
appendStep(sal) <- LineWise(code = {
png("results/atom_req.png", 700, 700)
boxplot(propma[, 3:ncol(propma)], col = "#6cabfa", main = "Atom Frequency")
dev.off()
}, step_name = "mol_info_plot", dependency = "basic_mol_info",
run_step = "optional")
For structural comparisons and searching, atom pairs and fingerprints are computed for the imported small molecules.
appendStep(sal) <- LineWise(code = {
apset <- sdf2ap(sdfset)
fpset <- desc2fp(apset, descnames = 1024, type = "FPset")
# The atom pairs and fingerprints can be saved to
# files.
readr::write_rds(apset, "results/apset.rds")
readr::write_rds(fpset, "results/fpset.rds")
}, step_name = "apfp_convert", dependency = "load_data")
Small molecules yielding identical fingerprints are removed in this step.
appendStep(sal) <- LineWise(code = {
fpset <- fpset[which(!cmp.duplicated(apset))]
}, step_name = "fp_dedup", dependency = "apfp_convert")
All-against-all similarity scores (here Tanimoto coefficients) are computed and stored in a similarity matrix.
appendStep(sal) <- LineWise(code = {
simMAfp <- sapply(cid(fpset), function(x) fpSim(x = fpset[x],
fpset, sorted = FALSE))
}, step_name = "fp_similarity", dependency = "fp_dedup")
The similarity matrix from the previous step can be used for clustering the
small molecules by structural similarities. In the given example, hierarchical
cluster is performed with the hclust
function. Since this functions expects
a distance matrix, the similarity matrix needs to be converted to a distance matrix
using 1-simMAfp
.
appendStep(sal) <- LineWise(code = {
hc <- hclust(as.dist(1 - simMAfp))
png("results/hclust.png", 1000, 700)
plot(as.dendrogram(hc), edgePar = list(col = 4, lwd = 2),
horiz = TRUE)
dev.off()
# to see the tree groupings, one need to cut the tree,
# for example, by height of 0.9
tree_cut <- cutree(hc, h = 0.9)
grouping <- tibble::tibble(cid = names(tree_cut), group_id = tree_cut)
readr::write_csv(grouping, "results/hclust_grouping.csv")
}, step_name = "hclust", dependency = "fp_similarity", run_step = "optional")
Alternatively, PCA can be used to visualize the structural similarities among molecules.
appendStep(sal) <- LineWise(code = {
library(magrittr)
library(ggplot2)
mol_pca <- princomp(simMAfp)
# find the variance
mol_pca_var <- mol_pca$sdev[1:2]^2/sum(mol_pca$sdev^2)
# plot
png("results/mol_pca.png", 650, 700)
tibble::tibble(PC1 = mol_pca$loadings[, 1], PC2 = mol_pca$loadings[,
2], group_id = as.factor(grouping$group_id)) %>%
# The following colors the by group labels.
ggplot(aes(x = PC1, y = PC2, color = group_id)) + geom_point(size = 2) +
stat_ellipse() + labs(x = paste0("PC1 ", round(mol_pca_var[1],
3) * 100, "%"), y = paste0("PC1 ", round(mol_pca_var[2],
3) * 100, "%")) + ggpubr::theme_pubr(base_size = 16) +
scale_color_brewer(palette = "Set2")
dev.off()
}, step_name = "PCA", dependency = "hclust", run_step = "optional")
This step adds a heatmap to the above hierarchical clustering analysis. Heatmaps facilitate the identification of patterns in data, here similarity scores.
appendStep(sal) <- LineWise(code = {
library(gplots)
png("results/mol_heatmap.png", 700, 700)
heatmap.2(simMAfp, Rowv = as.dendrogram(hc), Colv = as.dendrogram(hc),
col = colorpanel(40, "darkblue", "yellow", "white"),
density.info = "none", trace = "none")
dev.off()
}, step_name = "heatmap", dependency = "fp_similarity", run_step = "optional")
appendStep(sal) <- LineWise(code = {
sessionInfo()
}, step_name = "wf_session", dependency = "heatmap")
Once the above workflow steps have been loaded into sal
from the source Rmd
file of this vignette, the workflow can be executed from start to finish (or
partially) with the runWF
command. Subsequently, scientific and technical
workflow reports can be generated with the renderReport
and renderLogs
functions, respectively.
Note: To demonstrate ‘systemPipeR’s’ automation routines without regenerating a new workflow
environment from scratch, the first line below uses the overwrite=TRUE
option of the SPRproject
function.
This option is generally discouraged as it erases the existing workflow project and sal
container.
For information on resuming and restarting workflow runs, users want to consult the relevant section of
the main vignette (see here.)
sal <- SPRproject(overwrite = TRUE) # Avoid 'overwrite=TRUE' in real runs.
sal <- importWF(sal, file_path = "SPcheminfo.Rmd") # Imports above steps from new.Rmd.
sal <- runWF(sal) # Runs ggworkflow.
plotWF(sal) # Plot toplogy graph of workflow
sal <- renderReport(sal) # Renders scientific report.
sal <- renderLogs(sal) # Renders technical report from log files.
The listCmdTools
(and listCmdModules
) return the CL tools that
are used by a workflow. To include a CL tool list in a workflow report,
one can use the following code. Additional details on this topic
can be found in the main vignette here.
if (file.exists(file.path(".SPRproject", "SYSargsList.yml"))) {
local({
sal <- systemPipeR::SPRproject(resume = TRUE)
systemPipeR::listCmdTools(sal)
systemPipeR::listCmdModules(sal)
})
} else {
cat(crayon::blue$bold("Tools and modules required by this workflow are:\n"))
cat(c("There are no CL steps in this workflow."), sep = "\n")
}
## Tools and modules required by this workflow are:
## There are no CL steps in this workflow.
This is the session information for rendering this R Markdown report. To access the
session information for the workflow run, generate the technical HTML report with renderLogs
.
sessionInfo()
## R version 4.4.1 (2024-06-14)
## Platform: x86_64-pc-linux-gnu
## Running under: Ubuntu 24.04.1 LTS
##
## Matrix products: default
## BLAS: /home/biocbuild/bbs-3.20-bioc/R/lib/libRblas.so
## LAPACK: /usr/lib/x86_64-linux-gnu/lapack/liblapack.so.3.12.0
##
## 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
##
## time zone: America/New_York
## tzcode source: system (glibc)
##
## attached base packages:
## [1] stats graphics grDevices utils datasets
## [6] methods base
##
## other attached packages:
## [1] BiocStyle_2.34.0
##
## loaded via a namespace (and not attached):
## [1] digest_0.6.37 R6_2.5.1
## [3] codetools_0.2-20 bookdown_0.41
## [5] fastmap_1.2.0 xfun_0.48
## [7] cachem_1.1.0 knitr_1.48
## [9] htmltools_0.5.8.1 rmarkdown_2.28
## [11] lifecycle_1.0.4 cli_3.6.3
## [13] sass_0.4.9 jquerylib_0.1.4
## [15] compiler_4.4.1 highr_0.11
## [17] tools_4.4.1 evaluate_1.0.1
## [19] bslib_0.8.0 yaml_2.3.10
## [21] formatR_1.14 BiocManager_1.30.25
## [23] crayon_1.5.3 jsonlite_1.8.9
## [25] rlang_1.1.4
H Backman, Tyler W, and Thomas Girke. 2016. “systemPipeR: NGS workflow and report generation environment.” BMC Bioinformatics 17 (1): 388. https://doi.org/10.1186/s12859-016-1241-0.