See full guide at lipidr.org
To use lipidr
for your analysis using numerical matrix as input, you need 2 files:
- Numerical table where lipids are rows and samples are columns. Lipid names should be in the first column, and sample names are in the first row. (see example here)
- A table with the sample annotation / groups, where the sample names are in first column. Note the sample names must be identical in the two files. (see example here)
lipidr
can convert these 2 files to LipidomicsExperiment
as follows:
d <- as_lipidomics_experiment(read.csv("data_matrix.csv"))
d <- add_sample_annotation(d, "data_clin.csv")
Here lipidr
also requires 2 files:
- Results exported from Skyline as CSV file (see image below). (see example here)
- A table / CSV file with the sample annotation / groups, where the sample names are in first column. Note the sample names must be identical in the two files. (see example here)
In lipidr
:
d <- read_skyline("Skyline_export.csv")
d <- add_sample_annotation(d, "data_clin.csv")
lipidr
represents lipidomics datasets as a LipidomicsExperiment, which extends SummarizedExperiment, to facilitate integration with other Bioconductor packages.
lipidr
generates various plots, such as box plots or PCA, for quality control of samples and measured lipids. Lipids can be filtered by their %CV. Normalization methods with and without internal standards are also supported.
Univariate analysis can be performed using any of the loaded clinical variables, which can be readily visualized as volcano plots. Multi-group comparisons and adjusting for confounding variables is also supported (refer to examples on www.lipidr.org). A novel lipid set enrichment analysis is implemented to detect preferential regulation of certain lipid classes, total chain lengths or unsaturation patterns. Plots for visualization of enrichment results are also implemented.
lipidr
implements PCA, PCoA and OPLS(DA) to reveal patterns in data and discover variables related to an outcome of interest. Top associated lipids as well as scores and loadings plots can be interactively investigated using lipidr
.
In R console, type:
if (!requireNamespace("BiocManager", quietly=TRUE))
install.packages("BiocManager")
BiocManager::install("lipidr")
In R console, type:
library(devtools)
install_github("ahmohamed/lipidr")
You can use lipidr
in a containerized form by pulling the image from docker hub.
docker pull ahmohamed/lipidr
docker run -e PASSWORD=bioc -p 8787:8787 ahmohamed/lipidr:latest
In your browser, navigate to RStudio will be available on your web browser at http://localhost:8787
. The USER is fixed to always being rstudio
. The password in the above command is given as bioc
but it can be set to anything. For more information on how-to-use, refer to Bioconductor help page.
You can access your local files by mapping to the container:
docker run -e PASSWORD=bioc -p 8787:8787 \
-v "path/to/data_folder":"/home/rstudio/data_folder" \
ahmohamed/lipidr:latest
You should see data_folder
in your working directory.