OpenClaw-Medical-Skills bio-crispr-screens-mageck-analysis
MAGeCK (Model-based Analysis of Genome-wide CRISPR-Cas9 Knockout) for pooled CRISPR screen analysis. Covers count normalization, gene ranking, and pathway analysis. Use when identifying essential genes, drug targets, or resistance mechanisms from dropout or enrichment screens.
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 "$T/skills/bio-crispr-screens-mageck-analysis" ~/.claude/skills/freedomintelligence-openclaw-medical-skills-bio-crispr-screens-mageck-analysis && rm -rf "$T"
T=$(mktemp -d) && git clone --depth=1 https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills "$T" && mkdir -p ~/.openclaw/skills && cp -r "$T/skills/bio-crispr-screens-mageck-analysis" ~/.openclaw/skills/freedomintelligence-openclaw-medical-skills-bio-crispr-screens-mageck-analysis && rm -rf "$T"
skills/bio-crispr-screens-mageck-analysis/SKILL.mdVersion Compatibility
Reference examples tested with: MAGeCK 0.5+, matplotlib 3.8+, numpy 1.26+, pandas 2.2+
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.
MAGeCK CRISPR Screen Analysis
"Analyze my pooled CRISPR screen with MAGeCK" → Count sgRNA reads, normalize across samples, and rank genes by enrichment or depletion using the MAGeCK robust rank aggregation algorithm.
- CLI:
→mageck count
for standard analysismageck test - CLI:
for multi-condition designsmageck mle
Count sgRNAs from FASTQ
Goal: Quantify sgRNA representation from raw sequencing data.
Approach: Map FASTQ reads to the sgRNA library sequences with MAGeCK count, producing a normalized count matrix and QC summary across all samples.
# Count reads mapping to sgRNA library mageck count \ -l library.csv \ -n experiment \ --sample-label Day0,Treated1,Treated2,Control1,Control2 \ --fastq Day0.fastq.gz Treated1.fastq.gz Treated2.fastq.gz Control1.fastq.gz Control2.fastq.gz \ --norm-method median # Output files: # experiment.count.txt - normalized counts # experiment.count_normalized.txt - normalized counts # experiment.countsummary.txt - QC summary
Library File Format
# library.csv (tab-separated) sgRNA_ID Gene Sequence BRCA1_1 BRCA1 ATGGATTTATCTGCTCTTCG BRCA1_2 BRCA1 CAGCAGATACTTGATGCATC TP53_1 TP53 CCATTGTTCAATATCGTCCG ...
MAGeCK Test (RRA Algorithm)
Goal: Identify genes significantly enriched or depleted between treatment and control conditions.
Approach: Run MAGeCK test with robust rank aggregation, which ranks sgRNAs by fold change, tests whether per-gene sgRNA rankings deviate from uniform, and reports gene-level significance with FDR correction.
# Compare treatment vs control mageck test \ -k experiment.count.txt \ -t Treated1,Treated2 \ -c Control1,Control2 \ -n results \ --norm-method median \ --gene-test-fdr-threshold 0.25 # Output files: # results.gene_summary.txt - gene-level results # results.sgrna_summary.txt - sgRNA-level results
MAGeCK MLE (Maximum Likelihood)
Goal: Estimate gene effects in complex experimental designs with multiple conditions or covariates.
Approach: Define a design matrix specifying sample-condition relationships, then run MAGeCK MLE which fits a generalized linear model to estimate per-gene beta scores (effect sizes) for each condition.
# Create design matrix # design.txt: # Samples baseline treatment # Day0 1 0 # Control1 1 0 # Control2 1 0 # Treated1 1 1 # Treated2 1 1 mageck mle \ -k experiment.count.txt \ -d design.txt \ -n mle_results \ --norm-method median # Output: mle_results.gene_summary.txt with beta scores
Interpret Results
Goal: Extract significant essential and resistance genes from MAGeCK output.
Approach: Load the gene summary table, filter by negative-selection FDR for dropout/essential genes and positive-selection FDR for enriched/resistance genes, and rank by MAGeCK score.
import pandas as pd # Load gene summary genes = pd.read_csv('results.gene_summary.txt', sep='\t') # Negative selection (dropout/essential) essential = genes[(genes['neg|fdr'] < 0.05)].sort_values('neg|rank') print(f'Essential genes (dropout): {len(essential)}') print(essential[['id', 'neg|score', 'neg|fdr']].head(20)) # Positive selection (enrichment/resistance) resistant = genes[(genes['pos|fdr'] < 0.05)].sort_values('pos|rank') print(f'Resistance genes (enriched): {len(resistant)}') print(resistant[['id', 'pos|score', 'pos|fdr']].head(20))
Visualize Results
import pandas as pd import matplotlib.pyplot as plt import numpy as np genes = pd.read_csv('results.gene_summary.txt', sep='\t') # Volcano plot fig, ax = plt.subplots(figsize=(10, 8)) x = genes['neg|lfc'] y = -np.log10(genes['neg|fdr']) colors = ['red' if fdr < 0.05 else 'gray' for fdr in genes['neg|fdr']] ax.scatter(x, y, c=colors, alpha=0.5, s=10) # Label top hits top_hits = genes[genes['neg|fdr'] < 0.01].nsmallest(10, 'neg|rank') for _, row in top_hits.iterrows(): ax.annotate(row['id'], (row['neg|lfc'], -np.log10(row['neg|fdr']))) ax.axhline(-np.log10(0.05), linestyle='--', color='black', alpha=0.5) ax.set_xlabel('Log2 Fold Change') ax.set_ylabel('-log10(FDR)') ax.set_title('MAGeCK Negative Selection') plt.savefig('mageck_volcano.png', dpi=150)
MAGeCK Pathway Analysis
# Gene set enrichment on screen results mageck pathway \ -g results.gene_summary.txt \ -c go_biological_process.gmt \ -n pathway_results \ --pathway-fdr-threshold 0.25
Time-Course Screens
# Compare multiple timepoints mageck mle \ -k timecourse.count.txt \ -d timecourse_design.txt \ -n timecourse_results # Design matrix for time course: # Samples baseline day7 day14 # Day0 1 0 0 # Day7_R1 1 1 0 # Day7_R2 1 1 0 # Day14_R1 1 0 1 # Day14_R2 1 0 1
CRISPR Activation (CRISPRa) Screens
# For CRISPRa, focus on positive selection mageck test \ -k crispra.count.txt \ -t Activated1,Activated2 \ -c Control1,Control2 \ -n crispra_results # Hits are genes where activation causes phenotype # Use pos|fdr and pos|score columns
MAGeCK-VISPR (Visualization)
# Generate interactive report mageck-vispr run \ -n vispr_report \ -c config.yaml # config.yaml example: # experiment: screen_name # assembly: hg38 # species: homo_sapiens # targets: library.csv # sgrnas: experiment.count.txt # samples: # - Day0 # - Treated1
Related Skills
- screen-qc - Quality control before MAGeCK
- hit-calling - Alternative hit calling methods
- pathway-analysis/gsea - Downstream enrichment analysis