GSE54969 Processing Pipeline
GSE
code_examples
1 step
Publication
Identification of novel long noncoding RNAs underlying vertebrate cardiovascular development.Circulation (2015) — PMID 25739401
Dataset
GSE54969Transcriptomic analysis reveals novel long non-coding RNAs critical for vertebrate development
Warning: Pipeline descriptions and code snippets may be inferred or AI-generated. Use them only as a starting point to guide analysis, and validate before use.
Processing Steps
Generate Jupyter Notebook-
1
CEL files were analyzed using the oligo package in R/Bioconductor and normalized using RMA
$ Bash example
# Install Bioconductor and oligo package if not already installed # R -e 'if (!requireNamespace("BiocManager", quietly = TRUE)) install.packages("BiocManager")' # R -e 'BiocManager::install("oligo")' # Create a dummy directory for CEL files for demonstration (replace with actual CEL file path) # mkdir -p cel_files # touch cel_files/sample1.CEL # touch cel_files/sample2.CEL # R script for RMA normalization using oligo package Rscript -e ' library(oligo) # Define the directory containing CEL files # IMPORTANT: Replace "cel_files" with the actual path to your CEL files cel_files_dir <- "cel_files" # List all CEL files in the directory cel_files <- list.files(cel_files_dir, pattern = "\\.CEL$", full.names = TRUE) # Check if any CEL files were found if (length(cel_files) == 0) { stop("No CEL files found in the specified directory: ", cel_files_dir) } # Read CEL files raw_data <- read.celfiles(cel_files) # Perform RMA normalization normalized_data <- rma(raw_data) # Extract expression matrix expression_matrix <- exprs(normalized_data) # Save the normalized expression matrix to a CSV file write.csv(expression_matrix, "rma_normalized_expression.csv", row.names = TRUE) message("RMA normalization complete. Output saved to rma_normalized_expression.csv") '
Tools Used
Raw Source Text
CEL files were analyzed using the oligo package in R/Bioconductor and normalized using RMA