Agent skill
claw-ancestry-pca
Ancestry decomposition PCA against the Simons Genome Diversity Project
Install this agent skill to your Project
npx add-skill https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills/tree/main/skills/claw-ancestry-pca
Metadata
Additional technical details for this skill
- openclaw
-
{ "category": "bioinformatics", "homepage": "https://github.com/ClawBio/ClawBio", "min_python": "3.9", "dependencies": [ "pandas", "numpy", "matplotlib", "scikit-learn", "adjustText" ], "system_dependencies": [ "plink", "bcftools" ] }
SKILL.md
🦖 Ancestry Decomposition PCA
Place your study cohort in global genetic context by computing a joint PCA against the Simons Genome Diversity Project (SGDP) — 345 samples from 164 populations spanning every inhabited continent.
What it does
- Takes your VCF + population map as input
- Finds common variants between your cohort and the SGDP reference panel (bundled)
- Runs PLINK PCA on the merged dataset
- Separates your cohort from SGDP reference samples
- Matches SGDP samples to their population labels (164 populations)
- Generates a publication-quality multi-panel figure:
- Panel A: PC1 vs PC2 — main population structure of your cohort
- Panel B: PC3 vs PC2 with regional groupings and confidence ellipses
- Panel C: PC3 vs PC1 with language/cultural groupings
- Panel D: Global context — your samples (circles) vs SGDP (triangles)
- Produces a markdown report with variance explained, population assignments, and reproducibility bundle
Why this exists
If you ask ChatGPT to "run a PCA against a global reference panel," it will:
- Not know which reference panel to use
- Hallucinate PLINK flags for merging datasets with different variant sets
- Skip IBD removal (related individuals distort PCA)
- Not normalise contig names between your VCF and the reference
- Produce a single scatter plot with no population labels
This skill encodes the correct methodological decisions:
- Uses SGDP (the gold-standard reference for global diversity)
- Handles contig normalisation (chr1 vs 1)
- Filters to common biallelic SNPs shared between datasets
- Removes related individuals via IBD checks
- Produces publication-quality multi-panel figures with confidence ellipses
- Differentiates your samples (circles) from reference (triangles)
Reference Panel
The skill bundles the SGDP v4 dataset (Mallick et al., 2016, Nature):
- 345 samples from 164 populations
- Whole-genome sequencing at high coverage
- MAF > 0.1% filter applied
- Populations span: Africa, Americas, Central/South Asia, East Asia, Europe, Middle East, Oceania
Usage
python ancestry_pca.py \
--vcf your_cohort.vcf.gz \
--pop-map your_populations.tsv \
--output ancestry_report
Demo (works out of the box)
python ancestry_pca.py --demo --output demo_report
The demo uses pre-computed PCA results from the Peruvian Genome Project (736 samples, 28 populations) and generates the full 4-panel figure instantly.
Example Output
Ancestry Decomposition PCA
==========================
Cohort: 736 samples, 28 populations
Reference: SGDP (345 samples, 164 populations)
Common variants: 42,831 biallelic SNPs
Variance explained:
PC1: 51.44% PC2: 21.70% PC3: 6.70%
Panel D — Global Context:
Cohort samples cluster between European and East Asian
reference populations, with Amazonian groups showing
distinct positioning from Highland and Coastal groups.
Figures saved to: ancestry_report/
Figure3_PCA_composite.png (300 dpi)
Figure3_PCA_composite.pdf (vector)
Reproducibility:
commands.sh | environment.yml | checksums.sha256
Interpretation Guide
- PC1 typically captures the largest axis of global differentiation (often Africa vs non-Africa)
- PC2 separates major continental groups (Europe, East Asia, Americas)
- PC3 often reveals finer substructure within continental groups
- Confidence ellipses show 2.5 standard deviations around each population cluster
- Your samples shown as circles, SGDP reference as triangles
Citation
If you use this skill in a publication, please cite:
- Mallick, S. et al. (2016). The Simons Genome Diversity Project. Nature, 538, 201-206.
- Corpas, M. (2026). ClawBio. https://github.com/ClawBio/ClawBio
Recommended Agent Skills
Expand your agent's capabilities with these related and highly-rated skills.
vcf-annotator
Annotate VCF variants with VEP, ClinVar, gnomAD frequencies, and ancestry-aware context. Generates prioritised variant reports.
chemist-analyst
Analyzes events through chemistry lens using molecular structure, reaction mechanisms, thermodynamics, kinetics, and analytical techniques (spectroscopy, chromatography, mass spectrometry). Provides insights on chemical processes, material properties, reaction pathways, synthesis, and analytical methods. Use when: Chemical reactions, material analysis, synthesis planning, process optimization, environmental chemistry. Evaluates: Molecular structure, reaction mechanisms, yield, selectivity, safety, environmental impact.
bio-alignment-io
Read, write, and convert multiple sequence alignment files using Biopython Bio.AlignIO. Supports Clustal, PHYLIP, Stockholm, FASTA, Nexus, and other alignment formats for phylogenetics and conservation analysis. Use when reading, writing, or converting alignment file formats.
sleep-analyzer
分析睡眠数据、识别睡眠模式、评估睡眠质量,并提供个性化睡眠改善建议。支持与其他健康数据的关联分析。
metabolomics-workbench-database
Access NIH Metabolomics Workbench via REST API (4,200+ studies). Query metabolites, RefMet nomenclature, MS/NMR data, m/z searches, study metadata, for metabolomics and biomarker discovery.
bio-hi-c-analysis-matrix-operations
Balance, normalize, and transform Hi-C contact matrices using cooler and cooltools. Apply iterative correction (ICE), compute expected values, and generate observed/expected matrices. Use when normalizing or transforming Hi-C matrices.
Didn't find tool you were looking for?