Claude-skill-registry bio-population-genetics-linkage-disequilibrium
Calculate linkage disequilibrium statistics (r², D'), perform LD pruning for population structure analysis, identify haplotype blocks, and visualize LD patterns using PLINK, scikit-allel, and LDBlockShow. Use when calculating LD or pruning variants.
install
source · Clone the upstream repo
git clone https://github.com/majiayu000/claude-skill-registry
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/data/linkage-disequilibrium" ~/.claude/skills/majiayu000-claude-skill-registry-bio-population-genetics-linkage-disequilibrium && rm -rf "$T"
manifest:
skills/data/linkage-disequilibrium/SKILL.mdtags
source content
Linkage Disequilibrium
Calculate LD statistics, prune correlated variants, and identify haplotype blocks.
PLINK LD Calculations
Pairwise r²
# All pairs within window plink2 --bfile data --r2 --ld-window-kb 1000 --ld-window-r2 0.2 --out ld_results # With SNP names in output plink2 --bfile data --r2 inter-chr --ld-window-r2 0 --out all_pairs # Squared correlation matrix plink2 --bfile data --r2-phased square --out ld_matrix
Output Format
# ld_results.ld contains: CHR_A BP_A SNP_A CHR_B BP_B SNP_B R2
PLINK 1.9 Options
# r² with D' statistics plink --bfile data --r2 dprime --ld-window-kb 500 --out ld_with_dprime # Inter-chromosome LD plink --bfile data --r2 inter-chr --ld-snp-list target_snps.txt --out target_ld
LD Pruning
Standard Pruning
# Calculate pruning list plink2 --bfile data --indep-pairwise 50 10 0.1 --out prune # Output files: # prune.prune.in - Variants to keep # prune.prune.out - Variants to remove # Extract pruned set plink2 --bfile data --extract prune.prune.in --make-bed --out data_pruned
Pruning Parameters
| Parameter | Description | Common Values |
|---|---|---|
| Window (50) | Variants per window | 50-200 |
| Step (10) | Variants to shift | 5-50 |
| r² threshold (0.1) | Max LD allowed | 0.1-0.5 |
Use Cases
# Strict pruning for PCA/Admixture plink2 --bfile data --indep-pairwise 50 10 0.1 --out strict_prune # Moderate pruning for polygenic scores plink2 --bfile data --indep-pairwise 200 50 0.5 --out moderate_prune # Region-based pruning plink2 --bfile data --indep-pairwise 50 10 0.2 --chr 6 --from-mb 25 --to-mb 35 --out mhc_prune
scikit-allel LD
Pairwise r²
import allel import numpy as np callset = allel.read_vcf('data.vcf.gz') gt = allel.GenotypeArray(callset['calldata/GT']) pos = callset['variants/POS'] gn = gt.to_n_alt() r2 = allel.rogers_huff_r(gn[:100]) ** 2
LD Decay
import allel import numpy as np import matplotlib.pyplot as plt gn = gt.to_n_alt() r2, dist = [], [] n_variants = min(1000, gn.shape[0]) for i in range(n_variants): for j in range(i + 1, min(i + 100, n_variants)): r = allel.rogers_huff_r(gn[[i, j]])[0, 1] ** 2 d = pos[j] - pos[i] r2.append(r) dist.append(d) r2 = np.array(r2) dist = np.array(dist) bins = np.arange(0, 100001, 1000) bin_means = [] for i in range(len(bins) - 1): mask = (dist >= bins[i]) & (dist < bins[i + 1]) if mask.sum() > 0: bin_means.append(np.mean(r2[mask])) else: bin_means.append(np.nan) plt.figure(figsize=(10, 6)) plt.plot(bins[:-1] / 1000, bin_means) plt.xlabel('Distance (kb)') plt.ylabel('Mean r²') plt.title('LD Decay') plt.savefig('ld_decay.png')
Haplotype Blocks
PLINK
# Identify haplotype blocks (Gabriel et al.) plink --bfile data --blocks no-pheno-req --out blocks # Output: blocks.blocks (block boundaries) # Output: blocks.blocks.det (block details)
Block Statistics
import pandas as pd blocks = pd.read_csv('blocks.blocks.det', sep='\s+') print(f'Number of blocks: {len(blocks)}') print(f'Mean block size: {blocks["KB"].mean():.1f} kb') print(f'Mean SNPs per block: {blocks["NSNPS"].mean():.1f}')
LD Matrix Visualization
import allel import numpy as np import matplotlib.pyplot as plt gn = gt.to_n_alt()[:200] r = allel.rogers_huff_r(gn) r2_matrix = r ** 2 plt.figure(figsize=(10, 10)) plt.imshow(r2_matrix, cmap='hot', vmin=0, vmax=1) plt.colorbar(label='r²') plt.xlabel('Variant index') plt.ylabel('Variant index') plt.title('LD Matrix') plt.savefig('ld_matrix.png', dpi=150)
LD-based Clumping (GWAS)
# Clump GWAS results by LD plink --bfile data \ --clump gwas_results.txt \ --clump-p1 5e-8 \ --clump-p2 1e-5 \ --clump-r2 0.1 \ --clump-kb 250 \ --out clumped # Output: clumped.clumped (independent signals)
Clump Parameters
| Parameter | Description |
|---|---|
| --clump-p1 | Index SNP p-value threshold |
| --clump-p2 | Clumped SNP p-value threshold |
| --clump-r2 | LD threshold for clumping |
| --clump-kb | Physical distance threshold |
vcftools LD
# Pairwise LD for region vcftools --vcf data.vcf --geno-r2 --ld-window-bp 100000 --out ld_results # Output: ld_results.geno.ld # Haplotype-based r² vcftools --vcf data.vcf --hap-r2 --ld-window-bp 100000 --out hap_ld
Complete Workflow
# 1. Calculate genome-wide LD plink2 --bfile data --r2 --ld-window-kb 500 --ld-window-r2 0.2 --out ld_genome # 2. Generate pruned set for PCA plink2 --bfile data --indep-pairwise 50 10 0.1 --out prune plink2 --bfile data --extract prune.prune.in --make-bed --out pruned # 3. Identify haplotype blocks plink --bfile data --blocks no-pheno-req --out blocks # 4. Visualize LD for specific region plink --bfile data --r2 dprime --chr 6 --from-mb 28 --to-mb 34 --out mhc_ld
Related Skills
- plink-basics - File format handling
- population-structure - Use pruned data for PCA
- association-testing - LD clumping for GWAS
- selection-statistics - LD affects EHH statistics