| name | proteomics |
| description | Mass spectrometry proteomics QC, quantification, comparative analysis, and export for DDA, DIA, and protein-level result tables. |
| tool_type | python |
| primary_tool | pyopenms |
Proteomics
Version Compatibility
Reference examples assume:
pyopenms 3.0+
pandas 2.2+
numpy 1.26+
seaborn 0.13+
Overview
Use this skill when the user needs:
- proteomics QC
- protein table cleanup
- replicate review
- differential abundance analysis
- publication-ready proteomics figures
When To Use This Skill
- MaxQuant, FragPipe, DIA-NN, or similar outputs exist
- the task is protein-level quantification or comparative proteomics
- missingness, batch effects, and replicate quality need review before interpretation
Quick Route
- DDA and DIA should not be treated identically
- protein-level tables should remain distinct from peptide-level tables
- QC comes before differential analysis
Progressive Disclosure
Expected Inputs
- protein or peptide result table
- sample metadata
- assay context: DDA, DIA, PTM-enriched, or targeted
Expected Outputs
results/protein_abundance.tsv
qc/proteomics_qc_summary.tsv
figures/correlation_heatmap.pdf
figures/missingness.pdf
results/differential_proteins.tsv
Starter Pattern
import pandas as pd
protein_df = pd.read_csv("protein_groups.tsv", sep="\t")
sample_cols = [c for c in protein_df.columns if c.startswith("LFQ intensity")]
matrix = protein_df[sample_cols].replace(0, pd.NA)
qc = pd.DataFrame({
"n_proteins": matrix.notna().sum(),
"missing_pct": matrix.isna().mean() * 100,
})
qc.to_csv("qc/proteomics_qc_summary.tsv", sep="\t")
Workflow
1. Clarify assay and table level
- DDA versus DIA
- peptide versus protein table
- PTM-enriched versus unenriched data
2. Run QC before comparisons
Inspect:
- missingness
- replicate correlation
- batch effects
- intensity distributions
3. Normalize and summarize consistently
Keep the normalization approach explicit and do not collapse peptides into proteins without documenting the rule.
4. Perform comparative analysis
Use replicate-aware differential abundance with clear filtering and missingness policy.
5. Export interpretable artifacts
Save both the cleaned abundance matrix and the differential results table.
Output Artifacts
results/
├── protein_abundance.tsv
└── differential_proteins.tsv
qc/
└── proteomics_qc_summary.tsv
figures/
├── correlation_heatmap.pdf
├── missingness.pdf
└── intensity_density.pdf
Quality Review
- overall missingness
> 30% should trigger caution
- technical replicate correlation should usually be
> 0.9
- biological replicate correlation much below
0.8 deserves review
- do not trust differential calls before batch structure and missingness are understood
Anti-Patterns
- mixing peptide and protein tables in one downstream matrix
- running differential abundance before QC
- ignoring missingness patterns
- hiding whether values are raw, normalized, or imputed
Related Skills
- Metabolomics
- Structural Biology
Optional Supplements