pyopenms
FreeRuns bundled scriptsNot checkedComplete mass spectrometry analysis platform. Use for proteomics and metabolomics workflows—feature detection, peptide/protein identification, label-free and is
About this skill
PyOpenMS
Overview
PyOpenMS provides Python bindings to the OpenMS library for computational mass spectrometry, enabling analysis of proteomics and metabolomics data. Use it to read/write MS file formats, process raw spectra, detect and quantify features, identify peptides and proteins, and run end-to-end LC-MS/MS pipelines.
This skill ships ready-to-run scripts in scripts/ covering the most common
high-level workflows. Prefer running a script over writing new code—each is a
parameterized CLI tool that handles loading, processing, and export. Drop into the
Python API (and the references/) only when no script fits.
Installation
uv pip install pyopenms
Verify (note: __version__ works, but the bundled binary prints a one-line
memory-status notice on import that is harmless):
import pyopenms as ms
print(ms.__version__) # 3.5.0
Scripts (start here)
Run with python scripts/<name>.py --help for full options. All accept standard
MS file formats and write featureXML/consensusXML/CSV/mzTab/PNG as appropriate.
Inspect & convert
| Script | What it does |
|---|---|
inspect_ms_data.py |
Summarize any mzML/mzXML/featureXML/consensusXML/idXML (counts, RT/m/z ranges, TIC, metadata); optional per-spectrum CSV. |
convert_format.py |
Convert between mzML/mzXML/MGF with optional MS-level, RT, and intensity filtering. |
process_spectra.py |
Configurable signal-processing chain: smoothing (Gauss/SGolay), centroiding (PeakPickerHiRes), normalization, S/N and intensity thresholds. |
Feature detection & quantification
| Script | What it does |
|---|---|
detect_features_metabo.py |
Untargeted metabolomics feature finding: MassTraceDetection → ElutionPeakDetection → FeatureFindingMetabo. |
detect_features_centroided.py |
Peptide/centroided feature detection via FeatureFinderAlgorithmPicked. |
align_link_quantify.py |
Multi-sample pipeline: detect (or load) features → RT alignment → consensus linking → quant matrix CSV. |
consensus_to_matrix.py |
consensusXML → wide intensity matrix + metadata, with optional median/quantile normalization and long format. |
Annotation
| Script | What it does |
|---|---|
detect_adducts.py |
Group adducts/charge variants of the same neutral mass (MetaboliteFeatureDeconvolution). |
accurate_mass_search.py |
Annotate features against HMDB by accurate mass (AccurateMassSearchEngine → mzTab/CSV). |
export_gnps_sirius.py |
Export GNPS FBMN inputs (MGF + quant table) or a SIRIUS .ms file. |
Identification
| Script | What it does |
|---|---|
process_identifications.py |
Re-index against FASTA, estimate FDR/q-values, filter (FDR/length/best-per-spectrum), export idXML + CSV. |
Chemistry
| Script | What it does |
|---|---|
mass_calculator.py |
Monoisotopic/average mass, charged m/z, formula, and isotope pattern for peptides or empirical formulas. |
digest_protein.py |
In-silico protease digestion of FASTA/sequence → theoretical peptides with masses and m/z. |
theoretical_spectrum.py |
Generate annotated theoretical fragment spectra (b/y/a/c/x/z, losses) for a peptide. |
Targeted & visualization
| Script | What it does |
|---|---|
extract_chromatograms.py |
Build TIC/BPC and XIC traces for target m/z (CSV + optional plot). |
plot_ms_data.py |
Quick plots: single spectrum, TIC, 2D feature map, MS1 signal map. |
Common script recipes
# Inspect a file
python scripts/inspect_ms_data.py sample.mzML --spectra-csv spectra.csv
# Untargeted metabolomics: features for one sample
python scripts/detect_features_metabo.py sample.mzML --out-csv features.csv
# Full multi-sample quantification study
python scripts/align_link_quantify.py s1.mzML s2.mzML s3.mzML --out-prefix study
python scripts/consensus_to_matrix.py study.consensusXML --out quant.csv --normalize median
# Peptide chemistry
python scripts/mass_calculator.py --peptide "PEPTIDEM(Oxidation)K" --charges 1 2 3 --isotopes 5
python scripts/digest_protein.py proteins.fasta --enzyme Trypsin --missed 2 --out peptides.csv
# Identification post-processing
python scripts/process_identifications.py search.idXML --fasta db.fasta --fdr 0.01 --out filtered.idXML --csv hits.csv
Key 3.5.0 API notes
These changed from older OpenMS releases—older tutorials and code will break:
- Feature finding:
FeatureFinder("centroided")was removed. UseFeatureFinderAlgorithmPicked(proteomics/centroided) or theMassTraceDetection → ElutionPeakDetection → FeatureFindingMetabopipeline (metabolomics). Seedetect_features_*.py. - idXML I/O:
IdXMLFile().load/storerequire ams.PeptideIdentificationList()for peptide IDs (a plain Pythonlistraises "can not handle type"). Protein IDs remain a plain list. - Adduct decharging: the class is
MetaboliteFeatureDeconvolution, and adducts useElements:Charge:Probabilitysyntax (e.g.H:+:0.4,H-2O-1:0:0.05)—not bracket notation like[M+H]+. - DataFrame columns:
FeatureMap.get_df()uses lowercasert/mz(notRT).ConsensusMapprovidesget_intensity_df()andget_metadata_df(). - Bundled data caveat: the pip wheel ships
HMDBMappingFile.tsvbut notHMDB2StructMapping.tsv;accurate_mass_search.pydetects this and explains how to supply it.
Core data structures
- MSExperiment – collection of spectra and chromatograms
- MSSpectrum / MSChromatogram – a single spectrum / chromatographic trace
- Feature / FeatureMap – a detected LC-MS peak / collection of features
- ConsensusMap – features linked across samples (the quant table)
- PeptideIdentification / ProteinIdentification – search results
- AASequence / EmpiricalFormula – sequence and formula chemistry
For details: see references/data_structures.md.
Parameter management
Most algorithms expose an OpenMS Param object:
algo = ms.FeatureFindingMetabo()
p = algo.getDefaults()
for key in p.keys():
print(key.decode(), "=", p.getValue(key), "|", p.getDescription(key))
p.setValue("charge_lower_bound", 1)
algo.setParameters(p)
Export to pandas
fm = ms.FeatureMap(); ms.FeatureXMLFile().load("features.featureXML", fm)
df = fm.get_df() # columns include lowercase rt, mz, intensity, charge, quality
cm = ms.ConsensusMap(); ms.ConsensusXMLFile().load("study.consensusXML", cm)
intensities = cm.get_intensity_df() # features x samples
metadata = cm.get_metadata_df() # rt, mz, charge, quality, ...
Integration with other tools
Pandas (DataFrames), NumPy (peak arrays), scikit-learn (ML), Matplotlib/Seaborn (plots), and downstream tools via export: GNPS (FBMN), SIRIUS, and mzTab.
Resources
- Official docs (3.5.0): https://pyopenms.readthedocs.io/en/release-3.5.0/
- OpenMS: https://www.openms.org
- GitHub: https://github.com/OpenMS/OpenMS
References
references/file_io.md– file format handlingreferences/signal_processing.md– signal processing algorithmsreferences/feature_detection.md– feature detection and linkingreferences/identification.md– peptide and protein identificationreferences/metabolomics.md– metabolomics-specific workflowsreferences/data_structures.md– core objects and data structures
Install pyopenms in Claude Code & Claude Desktop
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Allowed tools
Tools this skill is permitted to call.
Read Write Edit BashBundled files
FAQ
What does the pyopenms skill do?
Complete mass spectrometry analysis platform. Use for proteomics and metabolomics workflows—feature detection, peptide/protein identification, label-free and isobaric quantification, adduct/accurate-mass annotation, and complex LC-MS/MS pipelines. Supports extensive file formats and algorithms. For simple spectral comparison and small-molecule library matching use matchms.
How do I install the pyopenms skill?
Copy the skill folder into ~/.claude/skills (the Claude Code tab above does this in one command), or install it as a plugin.
Does the pyopenms skill run scripts?
Yes, this skill bundles executable scripts. Review the source before installing.
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