OpenClaw-Medical-Skills bio-crispr-screens-hit-calling
Statistical methods for calling hits in CRISPR screens. Covers MAGeCK, BAGEL2, drugZ, and custom approaches for identifying essential and resistance genes. Use when identifying significant genes from screen count data after QC passes.
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 "$T/skills/bio-crispr-screens-hit-calling" ~/.claude/skills/freedomintelligence-openclaw-medical-skills-bio-crispr-screens-hit-calling && rm -rf "$T"
T=$(mktemp -d) && git clone --depth=1 https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills "$T" && mkdir -p ~/.openclaw/skills && cp -r "$T/skills/bio-crispr-screens-hit-calling" ~/.openclaw/skills/freedomintelligence-openclaw-medical-skills-bio-crispr-screens-hit-calling && rm -rf "$T"
skills/bio-crispr-screens-hit-calling/SKILL.mdVersion Compatibility
Reference examples tested with: MAGeCK 0.5+, matplotlib 3.8+, numpy 1.26+, pandas 2.2+, scipy 1.12+, statsmodels 0.14+
Before using code patterns, verify installed versions match. If versions differ:
- Python:
thenpip show <package>
to check signatureshelp(module.function) - CLI:
then<tool> --version
to confirm flags<tool> --help
If code throws ImportError, AttributeError, or TypeError, introspect the installed package and adapt the example to match the actual API rather than retrying.
CRISPR Screen Hit Calling
"Identify essential genes from my CRISPR screen" → Call significant gene hits from sgRNA count data using statistical methods that account for guide-level variability and multiple testing.
- CLI:
for Bayes factor essentiality scoringBAGEL.py bf - Python:
for fold-change based analysisdrugZ
BAGEL2 Analysis
Goal: Identify essential genes using Bayesian classification against reference gene sets.
Approach: Calculate sgRNA fold changes, compute Bayes Factors using known essential and non-essential gene sets as training data, and assess precision-recall at different thresholds.
# BAGEL2 for Bayesian gene essentiality # Uses reference essential/non-essential genes # Calculate fold changes bagel2 fc \ -i counts.txt \ -o foldchange.txt \ -c Control1,Control2 \ -t Treatment1,Treatment2 # Calculate Bayes Factor bagel2 bf \ -i foldchange.txt \ -o bayes_factor.txt \ -e essential_genes.txt \ -n nonessential_genes.txt \ -c 1 # Number of bootstrap iterations # Precision-recall analysis bagel2 pr \ -i bayes_factor.txt \ -o precision_recall.txt \ -e essential_genes.txt \ -n nonessential_genes.txt
DrugZ Analysis
# DrugZ for drug screens (synergy/resistance) drugz.py \ -i counts.txt \ -o drugz_output.txt \ -c Control1,Control2 \ -x Treatment1,Treatment2 \ --remove-genes Control_genes.txt # Output columns: # Gene, sumZ (combined z-score), normZ, pval_synth (synthetic lethal), pval_supp (suppressor)
Custom Hit Calling in Python
Goal: Call screen hits using a z-score approach without external tools.
Approach: RPM-normalize counts, compute per-sgRNA log2 fold changes, aggregate to gene level, derive z-scores from the null distribution, and apply FDR correction.
import pandas as pd import numpy as np from scipy import stats # Load counts counts = pd.read_csv('counts.txt', sep='\t', index_col=0) genes = counts['Gene'] ctrl_cols = ['Control1', 'Control2'] treat_cols = ['Treatment1', 'Treatment2'] # Normalize (reads per million) def rpm_normalize(df): return df / df.sum() * 1e6 ctrl_rpm = rpm_normalize(counts[ctrl_cols]) treat_rpm = rpm_normalize(counts[treat_cols]) # Log2 fold change per sgRNA lfc = np.log2((treat_rpm.mean(axis=1) + 1) / (ctrl_rpm.mean(axis=1) + 1)) # Aggregate to gene level gene_lfc = pd.DataFrame({'Gene': genes, 'LFC': lfc}).groupby('Gene')['LFC'].agg(['mean', 'std', 'count']) gene_lfc.columns = ['mean_lfc', 'std_lfc', 'n_sgrnas'] # Z-score based on null distribution (non-targeting controls or all genes) null_mean = gene_lfc['mean_lfc'].median() null_std = gene_lfc['mean_lfc'].std() gene_lfc['z_score'] = (gene_lfc['mean_lfc'] - null_mean) / null_std gene_lfc['pvalue'] = 2 * stats.norm.sf(abs(gene_lfc['z_score'])) from statsmodels.stats.multitest import multipletests _, gene_lfc['fdr'], _, _ = multipletests(gene_lfc['pvalue'], method='fdr_bh') # Call hits essential = gene_lfc[(gene_lfc['z_score'] < -2) & (gene_lfc['fdr'] < 0.1)] resistance = gene_lfc[(gene_lfc['z_score'] > 2) & (gene_lfc['fdr'] < 0.1)] print(f'Essential genes: {len(essential)}') print(f'Resistance genes: {len(resistance)}')
Robust Rank Aggregation (MAGeCK-style)
Goal: Rank genes by combining evidence across multiple sgRNAs using the RRA algorithm.
Approach: Rank sgRNA-level p-values, compute per-gene RRA scores using beta-distribution modeling of rank uniformity, and select genes with significantly non-uniform guide rankings.
from scipy.stats import rankdata, norm import numpy as np def rra_score(ranks, n_total): '''Calculate RRA score for a set of ranks''' k = len(ranks) sorted_ranks = np.sort(ranks) rho = sorted_ranks / n_total # Beta distribution p-values from scipy.stats import beta pvals = [beta.cdf(rho[i], i + 1, k - i) for i in range(k)] # Return minimum p-value (most significant) return min(pvals) # Apply to each gene def calculate_gene_rra(sgrna_pvals, genes, n_total): results = [] for gene in genes.unique(): gene_pvals = sgrna_pvals[genes == gene] gene_ranks = rankdata(gene_pvals) rra = rra_score(gene_ranks, len(gene_pvals)) results.append({'gene': gene, 'rra_score': rra, 'n_sgrnas': len(gene_pvals)}) return pd.DataFrame(results)
Second-Best sgRNA Method
# Conservative approach: use second-best sgRNA per gene # Reduces false positives from single outlier sgRNAs def second_best_lfc(lfc_series, genes): '''Return second-most extreme LFC per gene''' results = [] for gene in genes.unique(): gene_lfc = lfc_series[genes == gene].sort_values() if len(gene_lfc) >= 2: # For dropout, use second smallest (second most negative) results.append({'gene': gene, 'second_best_lfc': gene_lfc.iloc[1]}) else: results.append({'gene': gene, 'second_best_lfc': gene_lfc.iloc[0]}) return pd.DataFrame(results) second_best = second_best_lfc(lfc, genes)
Compare Methods
Goal: Identify high-confidence hits by requiring agreement across multiple analysis methods.
Approach: Load gene-level results from MAGeCK, BAGEL2, and DrugZ, merge on gene name, and flag consensus hits called by two or more methods.
# Load results from different methods mageck = pd.read_csv('mageck.gene_summary.txt', sep='\t') bagel = pd.read_csv('bagel_bf.txt', sep='\t') drugz = pd.read_csv('drugz_output.txt', sep='\t') # Merge on gene merged = mageck[['id', 'neg|fdr']].rename(columns={'id': 'gene', 'neg|fdr': 'mageck_fdr'}) merged = merged.merge(bagel[['Gene', 'BF']].rename(columns={'Gene': 'gene', 'BF': 'bagel_bf'}), on='gene') merged = merged.merge(drugz[['GENE', 'fdr_synth']].rename(columns={'GENE': 'gene', 'fdr_synth': 'drugz_fdr'}), on='gene') # Consensus hits merged['mageck_hit'] = merged['mageck_fdr'] < 0.1 merged['bagel_hit'] = merged['bagel_bf'] > 5 # BF > 5 suggests essential merged['drugz_hit'] = merged['drugz_fdr'] < 0.1 merged['consensus'] = merged['mageck_hit'].astype(int) + merged['bagel_hit'].astype(int) + merged['drugz_hit'].astype(int) # High confidence hits called by 2+ methods high_conf = merged[merged['consensus'] >= 2] print(f'High confidence hits (2+ methods): {len(high_conf)}')
Time-Course Analysis
# For screens with multiple timepoints def time_course_hits(counts, timepoints, genes): '''Identify genes with consistent depletion over time''' lfc_by_time = {} for t in timepoints: t0_cols = [c for c in counts.columns if 'T0' in c] t_cols = [c for c in counts.columns if f'T{t}' in c] t0_mean = counts[t0_cols].mean(axis=1) t_mean = counts[t_cols].mean(axis=1) lfc_by_time[t] = np.log2((t_mean + 1) / (t0_mean + 1)) # Aggregate and check for consistent direction lfc_df = pd.DataFrame(lfc_by_time) lfc_df['Gene'] = genes gene_summary = lfc_df.groupby('Gene').mean() gene_summary['all_negative'] = (gene_summary < 0).all(axis=1) gene_summary['trend'] = gene_summary.apply(lambda x: np.polyfit(range(len(timepoints)), x[:-1], 1)[0], axis=1) return gene_summary[gene_summary['all_negative']].sort_values('trend')
Visualize Results
import matplotlib.pyplot as plt # Rank plot fig, ax = plt.subplots(figsize=(10, 6)) results = pd.read_csv('mageck.gene_summary.txt', sep='\t') results = results.sort_values('neg|score') results['rank'] = range(1, len(results) + 1) ax.scatter(results['rank'], -np.log10(results['neg|fdr']), c=['red' if fdr < 0.05 else 'gray' for fdr in results['neg|fdr']], alpha=0.5, s=10) # Label top hits top = results[results['neg|fdr'] < 0.01].head(10) for _, row in top.iterrows(): ax.annotate(row['id'], (row['rank'], -np.log10(row['neg|fdr']))) ax.axhline(-np.log10(0.05), linestyle='--', color='black') ax.set_xlabel('Gene Rank') ax.set_ylabel('-log10(FDR)') ax.set_title('CRISPR Screen Hits') plt.savefig('hit_ranking.png', dpi=150)
Related Skills
- mageck-analysis - MAGeCK workflow
- screen-qc - QC before hit calling
- pathway-analysis/go-enrichment - Functional analysis of hits