--- name: bio-workflows-crispr-screen-pipeline description: End-to-end CRISPR screen analysis from FASTQ to hit genes. Orchestrates guide counting, QC, statistical analysis with MAGeCK, and hit calling with multiple methods. Use when analyzing pooled CRISPR screens from count data to hit calling. tool_type: mixed primary_tool: MAGeCK workflow: true depends_on: - crispr-screens/screen-qc - crispr-screens/mageck-analysis - crispr-screens/hit-calling - crispr-screens/library-design - crispr-screens/batch-correction --- # CRISPR Screen Pipeline ## Pipeline Overview ``` FASTQ Files ──> Guide Counting ──> Count Matrix │ ▼ ┌─────────────────────────────────────────────┐ │ crispr-screen-pipeline │ ├─────────────────────────────────────────────┤ │ 1. Guide Counting (MAGeCK count) │ │ 2. QC: Library coverage, gini index │ │ 3. Gene-level Analysis (MAGeCK RRA/MLE) │ │ 4. Hit Calling (FDR, effect size) │ │ 5. Visualization & Reporting │ └─────────────────────────────────────────────┘ │ ▼ Hit Genes + Volcano/Rank Plots ``` ## Complete Workflow ### Step 1: Guide Counting ```bash # From FASTQ files mageck count \ -l library.csv \ -n experiment \ --sample-label Day0,Day14_Rep1,Day14_Rep2,Day14_Rep3 \ --fastq Day0.fastq.gz Day14_Rep1.fastq.gz Day14_Rep2.fastq.gz Day14_Rep3.fastq.gz \ --trim-5 0 \ --pdf-report ``` ### Step 2: Quality Control ```python import pandas as pd import numpy as np import matplotlib.pyplot as plt counts = pd.read_csv('experiment.count.txt', sep='\t', index_col=0) counts_numeric = counts.iloc[:, 1:] qc_stats = {} for col in counts_numeric.columns: total = counts_numeric[col].sum() zeros = (counts_numeric[col] == 0).sum() gini = calculate_gini(counts_numeric[col].values) qc_stats[col] = {'total_reads': total, 'zero_count_guides': zeros, 'gini': gini} qc_df = pd.DataFrame(qc_stats).T print('QC Summary:') print(qc_df) # Gini index function def calculate_gini(x): x = np.sort(x[x > 0]) n = len(x) cumsum = np.cumsum(x) return (2 * np.sum((np.arange(1, n+1) * x)) - (n + 1) * cumsum[-1]) / (n * cumsum[-1]) # QC thresholds assert qc_df['zero_count_guides'].max() < len(counts) * 0.2, 'Too many zero-count guides' assert qc_df['gini'].max() < 0.4, 'Gini index too high (uneven distribution)' print('QC passed!') ``` ### Step 3: MAGeCK RRA Analysis (Negative Selection) ```bash # For dropout/negative selection screens mageck test \ -k experiment.count.txt \ -t Day14_Rep1,Day14_Rep2,Day14_Rep3 \ -c Day0 \ -n negative_screen \ --pdf-report \ --gene-lfc-method alphamedian ``` ### Step 4: MAGeCK MLE (Complex Designs) ```bash # For screens with multiple conditions # Design matrix: design.txt # samplename,baseline,treatment # Day0,1,0 # Day14_Ctrl,1,0 # Day14_Drug,1,1 mageck mle \ -k experiment.count.txt \ -d design.txt \ -n mle_analysis \ --threads 8 ``` ### Step 5: Hit Calling ```python import pandas as pd # Load MAGeCK results gene_summary = pd.read_csv('negative_screen.gene_summary.txt', sep='\t') # Define hits gene_summary['neg_hit'] = (gene_summary['neg|fdr'] < 0.05) & (gene_summary['neg|lfc'] < -0.5) gene_summary['pos_hit'] = (gene_summary['pos|fdr'] < 0.05) & (gene_summary['pos|lfc'] > 0.5) neg_hits = gene_summary[gene_summary['neg_hit']].sort_values('neg|rank') pos_hits = gene_summary[gene_summary['pos_hit']].sort_values('pos|rank') print(f'Negative selection hits (dropout): {len(neg_hits)}') print(f'Positive selection hits (enriched): {len(pos_hits)}') # Save hit lists neg_hits.to_csv('negative_hits.csv', index=False) pos_hits.to_csv('positive_hits.csv', index=False) ``` ### Step 6: Visualization ```python import matplotlib.pyplot as plt import numpy as np # Volcano plot fig, ax = plt.subplots(figsize=(10, 8)) x = gene_summary['neg|lfc'] y = -np.log10(gene_summary['neg|fdr'] + 1e-10) colors = ['red' if h else 'blue' if p else 'gray' for h, p in zip(gene_summary['neg_hit'], gene_summary['pos_hit'])] ax.scatter(x, y, c=colors, alpha=0.5, s=20) ax.axhline(-np.log10(0.05), linestyle='--', color='black', alpha=0.5) ax.axvline(-0.5, linestyle='--', color='black', alpha=0.5) ax.axvline(0.5, linestyle='--', color='black', alpha=0.5) ax.set_xlabel('Log2 Fold Change') ax.set_ylabel('-Log10(FDR)') ax.set_title('CRISPR Screen Volcano Plot') plt.tight_layout() plt.savefig('volcano_plot.png', dpi=150) ``` ## Complete R Workflow ```r library(MAGeCKFlute) library(ggplot2) # Load MAGeCK results gene_summary <- read.delim('negative_screen.gene_summary.txt') sgrna_summary <- read.delim('negative_screen.sgrna_summary.txt') # QC with MAGeCKFlute FluteMLE(mle_output = 'mle_analysis.gene_summary.txt', treatname = 'treatment', proj = 'crispr_screen', pathview.top = 10) # Or for RRA results FluteRRA(gene_summary = gene_summary, sgrna_summary = sgrna_summary, proj = 'rra_analysis') # Custom rank plot gene_summary$rank <- rank(gene_summary$`neg.score`) gene_summary$is_hit <- gene_summary$`neg.fdr` < 0.05 ggplot(gene_summary, aes(x = rank, y = -log10(`neg.fdr` + 1e-10), color = is_hit)) + geom_point(alpha = 0.5) + geom_hline(yintercept = -log10(0.05), linetype = 'dashed') + scale_color_manual(values = c('gray', 'red')) + theme_bw() + labs(title = 'Gene Rank Plot', x = 'Rank', y = '-Log10(FDR)') ggsave('rank_plot.png', width = 10, height = 6) ``` ## BAGEL2 Alternative (Essential Genes) ```bash # Calculate Bayes Factor for essentiality BAGEL.py bf \ -i experiment.count.txt \ -o bagel_output \ -e CEGv2.txt \ -n NEGv1.txt \ -c Day0 \ -s Day14_Rep1,Day14_Rep2,Day14_Rep3 # Precision-recall analysis BAGEL.py pr \ -i bagel_output.bf \ -o bagel_pr \ -e CEGv2.txt \ -n NEGv1.txt ``` ## QC Checkpoints | Stage | Check | Action if Failed | |-------|-------|------------------| | Counting | >70% mapping rate | Check library/trimming | | Zero guides | <20% | Check sequencing depth | | Gini index | <0.4 | Check for amplification bias | | Replicates | r > 0.8 | Check experimental consistency | | Controls | Separate in PCA | Check screen worked | ## Workflow Variants ### Positive Selection Screen ```bash # For enrichment screens (e.g., drug resistance) mageck test \ -k counts.txt \ -t Resistant_Rep1,Resistant_Rep2 \ -c Sensitive \ -n positive_screen \ --gene-lfc-method alphamedian ``` ### CRISPRi/CRISPRa ```bash # Same workflow, different interpretation # CRISPRi: negative LFC = gene promotes phenotype # CRISPRa: positive LFC = gene promotes phenotype mageck test -k counts.txt -t Treated -c Control -n crispri_screen ``` ## Related Skills - crispr-screens/screen-qc - Detailed QC metrics - crispr-screens/mageck-analysis - MAGeCK parameters - crispr-screens/hit-calling - Hit calling methods - crispr-screens/crispresso-editing - Individual editing analysis - crispr-screens/library-design - sgRNA selection and library design - crispr-screens/batch-correction - Multi-batch normalization - pathway-analysis/go-enrichment - Pathway enrichment of hits