GSE73211 Processing Pipeline
RNA-Seq
code_examples
2 steps
Publication
iPSCORE: A Resource of 222 iPSC Lines Enabling Functional Characterization of Genetic Variation across a Variety of Cell Types.Stem cell reports (2017) — PMID 28410642
Dataset
GSE73211Comparing isogenic pairs of hESC and hiPSC lines reveals genetic background and reprogramming method as primary sources of transcriptional variation
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
Sequence reads were aligned to GRCh37.67 transcriptome using bowtie 0.12.7.
Bowtie v0.12.7$ Bash example
# conda install -c bioconda bowtie # Note: Version 0.12.7 is very old and might not be directly available via conda; this command installs a recent Bowtie 1 version. # bowtie -S <index_prefix> <reads.fastq> <output.sam> # Example alignment command for single-end reads. Replace placeholders with actual paths.
-
2
TPM and readcount values were obtained using EMSAR v1.0
EMSAR v1.0$ Bash example
# Installation: Clone the repository and compile. # git clone https://github.com/zhanglab-bioinformatics/EMSAR.git # cd EMSAR # make # Execution command (example for paired-end reads, adjust paths and filenames): # ./EMSAR -r reference.fasta -1 reads_R1.fastq.gz -2 reads_R2.fastq.gz -o output_prefix
Raw Source Text
Sequence reads were aligned to GRCh37.67 transcriptome using bowtie 0.12.7. TPM and readcount values were obtained using EMSAR v1.0 Genome_build: GRCh37 Supplementary_files_format_and_content: tab-delimited files that contains TPM and read count information.