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pytximport 0.8.0
pytximport
pytximport is a Python package for efficient gene count estimation based on transcript quantification files produced by pseudoalignment/quasi-mapping tools such as kallisto or salmon. pytximport is a port of the popular tximport Bioconductor R package.
Installation
pip install pytximport
Quick Start
You can either import the tximport function in your Python files:
from pytximport import tximport
results = tximport(
file_paths,
"salmon",
transcript_gene_mapping,
)
Or use it from the command line:
pytximport -i ./sample_1.sf -i ./sample_2.sf -t salmon -m ./tx2gene_map.tsv -o ./output_counts.csv
Common options are:
-i: The input files.
-t: The input type, e.g., salmon, kallisto or tsv.
-m: The map to match transcript ids to their gene ids. Expected column names are transcript_id and gene_id.
-o: The output path.
-c: The count transform to apply. Leave out for none, other options include scaled_tpm, length_scaled_tpm and dtu_scaled_tpm.
-gl: Whether the input is already gene-level counts. Provide this flag when importing gene counts from RSEM.
-tx: Whether to return transcript-level counts without gene summarization.
-id: The column name containing the transcript ids, in case it differs from the typical naming standards for the configured input file type.
-counts: The column name containing the transcript counts, in case it differs from the typical naming standards for the configured input file type.
-length: The column name containing the transcript lenghts, in case it differs from the typical naming standards for the configured input file type.
-tpm: The column name containing the transcript abundance, in case it differs from the typical naming standards for the configured input file type.
--help: Display all configuration options.
Documentation
Detailled documentation is made available at: https://pytximport.readthedocs.io.
Development status
pytximport is still in development and has not yet reached version 1.0.0 in the SemVer versioning scheme. While it should work for most use cases and we regularly compare outputs against the R implementation, expect breaking changes. If you encounter any problems, please open a GitHub issue. If you are a Python developer, we welcome pull requests implementing missing features, adding more extensive unit tests and bug fixes.
Motivation
The tximport package has become a main stay in the bulk RNA sequencing community and has been used in hundreds of scientific publications. However, its accessibility has remained limited since it requires the R programming language and cannot be used from within Python scripts or the command line. Other tools of the bulk RNA sequencing analysis stack, like DESeq2 (in the form of PyDESeq2), decoupler, liana and others all have Python versions. Additionally, pseudoalignment tools like salmon and kallisto can be installed via conda and can be used from the command line.
tximport thus constitutes the missing link in many common analysis workflows. pytximport fills this gap and allows these workflows to be entirely done in Python, which is preinstalled on most development machines, and from the command line.
Citation
Please cite both the original publication as well as this Python implementation:
Charlotte Soneson, Michael I. Love, Mark D. Robinson. Differential analyses for RNA-seq: transcript-level estimates improve gene-level inferences, F1000Research, 4:1521, December 2015. doi: 10.12688/f1000research.7563.1
Kuehl, M., & Puelles, V. (2024). pytximport: Gene count estimation from transcript quantification files in Python (Version 0.8.0) [Computer software]. https://github.com/complextissue/pytximport
License
The software is provided under the GNU General Public License version 3. Please consult LICENSE for further information.
Differences
Generally, outputs from pytximport correspond to the outputs from tximport within the accuracy allowed by multiple floating point operations and small implementation differences in its dependencies when using the same configuration. If you observe larger discrepancies, please open an issue.
While the outputs are roughly identical for the same configuration, there remain some differences between the packages:
pytximport can be used from the command line.
pytximport supports AnnData format outputs (set output_type to anndata), enabling seamless integration with the scverse.
Argument order and argument defaults may differ between the implementations.
Additional features:
When ignore_transcript_version is set, the transcript version will not only be scrapped from the quantization file but also from the provided transcript to gene mapping.
When biotype_filter is set, all transcripts that do not contain any of the provided biotypes will be removed prior to all other steps.
When save_path is configured, a count matrix will be saved as a .csv file.
Building the documentation locally
The documentation can be build locally by navigating to the docs folder and running: make html.
This requires that the development requirements of the package as well as the package itself have been installed in the same virtual environment and that pandoc has been added, e.g. by running brew install pandoc on macOS operating systems.
Data sources
The quantification files used for the unit tests are partly adopted from tximportData which in turn used a subsample of the GEUVADIS data:
Lappalainen, T., Sammeth, M., Friedländer, M. R., ‘t Hoen, P. A., Monlong, J., Rivas, M. A., ... & Dermitzakis, E. T. (2013). Transcriptome and genome sequencing uncovers functional variation in humans. Nature, 501(7468), 506-511.
Other test and example files, such as those used in the vignette, are based on the following work:
Braun, F., Abed, A., Sellung, D., Rogg, M., Woidy, M., Eikrem, O., ... & Huber, T. B. (2023). Accumulation of α-synuclein mediates podocyte injury in Fabry nephropathy. The Journal of clinical investigation, 133(11).
For personal and professional use. You cannot resell or redistribute these repositories in their original state.
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