This readme explains how to use the Nextflow llrnaseq in conjunction with the rna-features python package to generate transfer learning expression features.
- Install
Nextflow(>=21.04.3) and thellrnaseqpipeline. - Install rna-features
(
python>=3.9). - Create a
samplesheet.csvthat points to yourfastq.gz reads. - Run
llrnaseqwith the appropriate options for the sample species. - Perform the appropriate differential expression analysis on the gene
counts.txtproduced byllrnasequsingDESeq2. A sample R script along with inputs and expected output contrast files can be found in thedeseq2_examplefolder. - Repeat steps 3 - 5 on each dataset, storing the
tpm.tsv(produced byllrnaseq) and contrast files (produced byDESeq2) in folders by dataset. - Generate an expression features matrix by passing the dataset directory paths to rna-features.