OpenClaw-Medical-Skills gnomad-database
Query gnomAD (Genome Aggregation Database) for population allele frequencies, variant constraint scores (pLI, LOEUF), and loss-of-function intolerance. Essential for variant pathogenicity interpretation, rare disease genetics, and identifying loss-of-function intolerant genes.
git clone https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills
T=$(mktemp -d) && git clone --depth=1 https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/gnomad-database" ~/.claude/skills/freedomintelligence-openclaw-medical-skills-gnomad-database && rm -rf "$T"
T=$(mktemp -d) && git clone --depth=1 https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills "$T" && mkdir -p ~/.openclaw/skills && cp -r "$T/skills/gnomad-database" ~/.openclaw/skills/freedomintelligence-openclaw-medical-skills-gnomad-database && rm -rf "$T"
skills/gnomad-database/SKILL.mdgnomAD Database
Overview
The Genome Aggregation Database (gnomAD) is the largest publicly available collection of human genetic variation, aggregated from large-scale sequencing projects. gnomAD v4 contains exome sequences from 730,947 individuals and genome sequences from 76,215 individuals across diverse ancestries. It provides population allele frequencies, variant consequence annotations, and gene-level constraint metrics that are essential for interpreting the clinical significance of genetic variants.
Key resources:
- gnomAD browser: https://gnomad.broadinstitute.org/
- GraphQL API: https://gnomad.broadinstitute.org/api
- Data downloads: https://gnomad.broadinstitute.org/downloads
- Documentation: https://gnomad.broadinstitute.org/help
When to Use This Skill
Use gnomAD when:
- Variant frequency lookup: Checking if a variant is rare, common, or absent in the general population
- Pathogenicity assessment: Rare variants (MAF < 1%) are candidates for disease causation; gnomAD helps filter benign common variants
- Loss-of-function intolerance: Using pLI and LOEUF scores to assess whether a gene tolerates protein-truncating variants
- Population-stratified frequencies: Comparing allele frequencies across ancestries (African/African American, Admixed American, Ashkenazi Jewish, East Asian, Finnish, Middle Eastern, Non-Finnish European, South Asian)
- ClinVar/ACMG variant classification: gnomAD frequency data feeds into BA1/BS1 evidence codes for variant classification
- Constraint analysis: Identifying genes depleted of missense or loss-of-function variation (z-scores, pLI, LOEUF)
Core Capabilities
1. gnomAD GraphQL API
gnomAD uses a GraphQL API accessible at
https://gnomad.broadinstitute.org/api. Most queries fetch variants by gene or specific genomic position.
Datasets available:
— gnomAD v4 exomes (recommended default, GRCh38)gnomad_r4
— gnomAD v4 genomes (GRCh38)gnomad_r4_genomes
— gnomAD v3 genomes (GRCh38)gnomad_r3
— gnomAD v2 exomes (GRCh37)gnomad_r2_1
Reference genomes:
— default for v3/v4GRCh38
— for v2GRCh37
2. Querying Variants by Gene
import requests def query_gnomad_gene(gene_symbol, dataset="gnomad_r4", reference_genome="GRCh38"): """Fetch variants in a gene from gnomAD.""" url = "https://gnomad.broadinstitute.org/api" query = """ query GeneVariants($gene_symbol: String!, $dataset: DatasetId!, $reference_genome: ReferenceGenomeId!) { gene(gene_symbol: $gene_symbol, reference_genome: $reference_genome) { gene_id gene_symbol variants(dataset: $dataset) { variant_id pos ref alt consequence genome { af ac an ac_hom populations { id ac an af } } exome { af ac an ac_hom } lof lof_flags lof_filter } } } """ variables = { "gene_symbol": gene_symbol, "dataset": dataset, "reference_genome": reference_genome } response = requests.post(url, json={"query": query, "variables": variables}) return response.json() # Example result = query_gnomad_gene("BRCA1") gene_data = result["data"]["gene"] variants = gene_data["variants"] # Filter to rare PTVs rare_ptvs = [ v for v in variants if v.get("lof") == "LC" or v.get("consequence") in ["stop_gained", "frameshift_variant"] and v.get("genome", {}).get("af", 1) < 0.001 ] print(f"Found {len(rare_ptvs)} rare PTVs in {gene_data['gene_symbol']}")
3. Querying a Specific Variant
import requests def query_gnomad_variant(variant_id, dataset="gnomad_r4"): """Fetch details for a specific variant (e.g., '1-55516888-G-GA').""" url = "https://gnomad.broadinstitute.org/api" query = """ query VariantDetails($variantId: String!, $dataset: DatasetId!) { variant(variantId: $variantId, dataset: $dataset) { variant_id chrom pos ref alt genome { af ac an ac_hom populations { id ac an af } } exome { af ac an ac_hom populations { id ac an af } } consequence lof rsids in_silico_predictors { id value flags } clinvar_variation_id } } """ response = requests.post( url, json={"query": query, "variables": {"variantId": variant_id, "dataset": dataset}} ) return response.json() # Example: query a specific variant result = query_gnomad_variant("17-43094692-G-A") # BRCA1 missense variant = result["data"]["variant"] if variant: genome_af = variant.get("genome", {}).get("af", "N/A") exome_af = variant.get("exome", {}).get("af", "N/A") print(f"Variant: {variant['variant_id']}") print(f" Consequence: {variant['consequence']}") print(f" Genome AF: {genome_af}") print(f" Exome AF: {exome_af}") print(f" LoF: {variant.get('lof')}")
4. Gene Constraint Scores
gnomAD constraint scores assess how tolerant a gene is to variation relative to expectation:
import requests def query_gnomad_constraint(gene_symbol, reference_genome="GRCh38"): """Fetch constraint scores for a gene.""" url = "https://gnomad.broadinstitute.org/api" query = """ query GeneConstraint($gene_symbol: String!, $reference_genome: ReferenceGenomeId!) { gene(gene_symbol: $gene_symbol, reference_genome: $reference_genome) { gene_id gene_symbol gnomad_constraint { exp_lof exp_mis exp_syn obs_lof obs_mis obs_syn oe_lof oe_mis oe_syn oe_lof_lower oe_lof_upper lof_z mis_z syn_z pLI } } } """ response = requests.post( url, json={"query": query, "variables": {"gene_symbol": gene_symbol, "reference_genome": reference_genome}} ) return response.json() # Example result = query_gnomad_constraint("KCNQ2") gene = result["data"]["gene"] constraint = gene["gnomad_constraint"] print(f"Gene: {gene['gene_symbol']}") print(f" pLI: {constraint['pLI']:.3f} (>0.9 = LoF intolerant)") print(f" LOEUF: {constraint['oe_lof_upper']:.3f} (<0.35 = highly constrained)") print(f" Obs/Exp LoF: {constraint['oe_lof']:.3f}") print(f" Missense Z: {constraint['mis_z']:.3f}")
Constraint score interpretation:
| Score | Range | Meaning |
|---|---|---|
| 0–1 | Probability of LoF intolerance; >0.9 = highly intolerant |
| 0–∞ | LoF observed/expected upper bound; <0.35 = constrained |
| 0–∞ | Observed/expected ratio for LoF variants |
| −∞ to ∞ | Missense constraint z-score; >3.09 = constrained |
| −∞ to ∞ | Synonymous z-score (control; should be near 0) |
5. Population Frequency Analysis
import requests import pandas as pd def get_population_frequencies(variant_id, dataset="gnomad_r4"): """Extract per-population allele frequencies for a variant.""" url = "https://gnomad.broadinstitute.org/api" query = """ query PopFreqs($variantId: String!, $dataset: DatasetId!) { variant(variantId: $variantId, dataset: $dataset) { variant_id genome { populations { id ac an af ac_hom } } } } """ response = requests.post( url, json={"query": query, "variables": {"variantId": variant_id, "dataset": dataset}} ) data = response.json() populations = data["data"]["variant"]["genome"]["populations"] df = pd.DataFrame(populations) df = df[df["an"] > 0].copy() df["af"] = df["ac"] / df["an"] df = df.sort_values("af", ascending=False) return df # Population IDs in gnomAD v4: # afr = African/African American # ami = Amish # amr = Admixed American # asj = Ashkenazi Jewish # eas = East Asian # fin = Finnish # mid = Middle Eastern # nfe = Non-Finnish European # sas = South Asian # remaining = Other
6. Structural Variants (gnomAD-SV)
gnomAD also contains a structural variant dataset:
import requests def query_gnomad_sv(gene_symbol): """Query structural variants overlapping a gene.""" url = "https://gnomad.broadinstitute.org/api" query = """ query SVsByGene($gene_symbol: String!) { gene(gene_symbol: $gene_symbol, reference_genome: GRCh38) { structural_variants { variant_id type chrom pos end af ac an } } } """ response = requests.post(url, json={"query": query, "variables": {"gene_symbol": gene_symbol}}) return response.json()
Query Workflows
Workflow 1: Variant Pathogenicity Assessment
-
Check population frequency — Is the variant rare enough to be pathogenic?
- Use gnomAD AF < 1% for recessive, < 0.1% for dominant conditions
- Check ancestry-specific frequencies (a variant rare overall may be common in one population)
-
Assess functional impact — LoF variants have highest prior probability
- Check
field:lof
= high-confidence LoF,HC
= low-confidenceLC - Check
for issues like "NAGNAG_SITE", "PHYLOCSF_WEAK"lof_flags
- Check
-
Apply ACMG criteria:
- BA1: AF > 5% → Benign Stand-Alone
- BS1: AF > disease prevalence threshold → Benign Supporting
- PM2: Absent or very rare in gnomAD → Pathogenic Moderate
Workflow 2: Gene Prioritization in Rare Disease
- Query constraint scores for candidate genes
- Filter for pLI > 0.9 (haploinsufficient) or LOEUF < 0.35
- Cross-reference with observed LoF variants in the gene
- Integrate with ClinVar and disease databases
Workflow 3: Population Genetics Research
- Identify variant of interest from GWAS or clinical data
- Query per-population frequencies
- Compare frequency differences across ancestries
- Test for enrichment in specific founder populations
Best Practices
- Use gnomAD v4 (gnomad_r4) for the most current data; use v2 (gnomad_r2_1) only for GRCh37 compatibility
- Handle null responses: Variants not observed in gnomAD are not necessarily pathogenic — absence is informative
- Distinguish exome vs. genome data: Genome data has more uniform coverage; exome data is larger but may have coverage gaps
- Rate limit GraphQL queries: Add delays between requests; batch queries when possible
- Homozygous counts (
) are relevant for recessive disease analysisac_hom - LOEUF is preferred over pLI for gene constraint (less sensitive to sample size)
Data Access
- Browser: https://gnomad.broadinstitute.org/ — interactive variant and gene browsing
- GraphQL API: https://gnomad.broadinstitute.org/api — programmatic access
- Downloads: https://gnomad.broadinstitute.org/downloads — VCF, Hail tables, constraint tables
- Google Cloud: gs://gcp-public-data--gnomad/
Additional Resources
- gnomAD website: https://gnomad.broadinstitute.org/
- gnomAD blog: https://gnomad.broadinstitute.org/news
- Downloads: https://gnomad.broadinstitute.org/downloads
- API explorer: https://gnomad.broadinstitute.org/api (interactive GraphiQL)
- Constraint documentation: https://gnomad.broadinstitute.org/help/constraint
- Citation: Karczewski KJ et al. (2020) Nature. PMID: 32461654; Chen S et al. (2024) Nature. PMID: 38conservation
- GitHub: https://github.com/broadinstitute/gnomad-browser