deeptools

K-Dense-AI/scientific-agent-skills · updated Jun 4, 2026

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$npx skills add https://github.com/K-Dense-AI/scientific-agent-skills --skill deeptools
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### Deeptools

  • name: "deeptools"
  • description: "NGS analysis toolkit. BAM to bigWig conversion, QC (correlation, PCA, fingerprints), heatmaps/profiles (TSS, peaks), for ChIP-seq, RNA-seq, ATAC-seq visualization."
skill.md
name
deeptools
description
NGS analysis toolkit. BAM to bigWig conversion, QC (correlation, PCA, fingerprints), heatmaps/profiles (TSS, peaks), for ChIP-seq, RNA-seq, ATAC-seq visualization.
license
BSD license
metadata
version: "1.0" skill-author: K-Dense Inc.

deepTools: NGS Data Analysis Toolkit

Overview

deepTools is a comprehensive suite of Python command-line tools designed for processing and analyzing high-throughput sequencing data. Use deepTools to perform quality control, normalize data, compare samples, and generate publication-quality visualizations for ChIP-seq, RNA-seq, ATAC-seq, MNase-seq, and other NGS experiments.

Core capabilities:

  • Convert BAM alignments to normalized coverage tracks (bigWig/bedGraph)
  • Quality control assessment (fingerprint, correlation, coverage)
  • Sample comparison and correlation analysis
  • Heatmap and profile plot generation around genomic features
  • Enrichment analysis and peak region visualization

When to Use This Skill

This skill should be used when:

  • File conversion: "Convert BAM to bigWig", "generate coverage tracks", "normalize ChIP-seq data"
  • Quality control: "check ChIP quality", "compare replicates", "assess sequencing depth", "QC analysis"
  • Visualization: "create heatmap around TSS", "plot ChIP signal", "visualize enrichment", "generate profile plot"
  • Sample comparison: "compare treatment vs control", "correlate samples", "PCA analysis"
  • Analysis workflows: "analyze ChIP-seq data", "RNA-seq coverage", "ATAC-seq analysis", "complete workflow"
  • Working with specific file types: BAM files, bigWig files, BED region files in genomics context

Quick Start

For users new to deepTools, start with file validation and common workflows:

1. Validate Input Files

Before running any analysis, validate BAM, bigWig, and BED files using the validation script:

python scripts/validate_files.py --bam sample1.bam sample2.bam --bed regions.bed

This checks file existence, BAM indices, and format correctness.

2. Generate Workflow Template

For standard analyses, use the workflow generator to create customized scripts:

# List available workflows
python scripts/workflow_generator.py --list

# Generate ChIP-seq QC workflow
python scripts/workflow_generator.py chipseq_qc -o qc_workflow.sh \
    --input-bam Input.bam --chip-bams "ChIP1.bam ChIP2.bam" \
    --genome-size 2913022398

# Make executable and run
chmod +x qc_workflow.sh
./qc_workflow.sh

3. Most Common Operations

See assets/quick_reference.md for frequently used commands and parameters.

Installation

uv pip install deeptools

Core Workflows

deepTools workflows typically follow this pattern: QC → Normalization → Comparison/Visualization

ChIP-seq Quality Control Workflow

When users request ChIP-seq QC or quality assessment:

  1. Generate workflow script using scripts/workflow_generator.py chipseq_qc
  2. Key QC steps:
    • Sample correlation (multiBamSummary + plotCorrelation)
    • PCA analysis (plotPCA)
    • Coverage assessment (plotCoverage)
    • Fragment size validation (bamPEFragmentSize)
    • ChIP enrichment strength (plotFingerprint)

Interpreting results:

  • Correlation: Replicates should cluster together with high correlation (>0.9)
  • Fingerprint: Strong ChIP shows steep rise; flat diagonal indicates poor enrichment
  • Coverage: Assess if sequencing depth is adequate for analysis

Full workflow details in references/workflows.md → "ChIP-seq Quality Control Workflow"

ChIP-seq Complete Analysis Workflow

For full ChIP-seq analysis from BAM to visualizations:

  1. Generate coverage tracks with normalization (bamCoverage)
  2. Create comparison tracks (bamCompare for log2 ratio)
  3. Compute signal matrices around features (computeMatrix)
  4. Generate visualizations (plotHeatmap, plotProfile)
  5. Enrichment analysis at peaks (plotEnrichment)

Use scripts/workflow_generator.py chipseq_analysis to generate template.

Complete command sequences in references/workflows.md → "ChIP-seq Analysis Workflow"

RNA-seq Coverage Workflow

For strand-specific RNA-seq coverage tracks:

Use bamCoverage with --filterRNAstrand to separate forward and reverse strands.

Important: NEVER use --extendReads for RNA-seq (would extend over splice junctions).

Use normalization: CPM for fixed bins, RPKM for gene-level analysis.

Template available: scripts/workflow_generator.py rnaseq_coverage

Details in references/workflows.md → "RNA-seq Coverage Workflow"

ATAC-seq Analysis Workflow

ATAC-seq requires Tn5 offset correction:

  1. Shift reads using alignmentSieve with --ATACshift
  2. Generate coverage with bamCoverage
  3. Analyze fragment sizes (expect nucleosome ladder pattern)
  4. Visualize at peaks if available

Template: scripts/workflow_generator.py atacseq

Full workflow in references/workflows.md → "ATAC-seq Workflow"

Tool Categories and Common Tasks

BAM/bigWig Processing

Convert BAM to normalized coverage:

bamCoverage --bam input.bam --outFileName output.bw \
    --normalizeUsing RPGC --effectiveGenomeSize 2913022398 \
    --binSize 10 --numberOfProcessors 8

Compare two samples (log2 ratio):

bamCompare -b1 treatment.bam -b2 control.bam -o ratio.bw \
    --operation log2 --scaleFactorsMethod readCount

Key tools: bamCoverage, bamCompare, multiBamSummary, multiBigwigSummary, correctGCBias, alignmentSieve

Complete reference: references/tools_reference.md → "BAM and bigWig File Processing Tools"

Quality Control

Check ChIP enrichment:

plotFingerprint -b input.bam chip.bam -o fingerprint.png \
    --extendReads 200 --ignoreDuplicates

Sample correlation:

multiBamSummary bins --bamfiles *.bam -o counts.npz
plotCorrelation -in counts.npz --corMethod pearson \
    --whatToShow heatmap -o correlation.png

Key tools: plotFingerprint, plotCoverage, plotCorrelation, plotPCA, bamPEFragmentSize

Complete reference: references/tools_reference.md → "Quality Control Tools"

Visualization

Create heatmap around TSS:

# Compute matrix
computeMatrix reference-point -S signal.bw -R genes.bed \
    -b 3000 -a 3000 --referencePoint TSS -o matrix.gz

# Generate heatmap
plotHeatmap -m matrix.gz -o heatmap.png \
    --colorMap RdBu --kmeans 3

Create profile plot:

plotProfile -m matrix.gz -o profile.png \
    --plotType lines --colors blue red

Key tools: computeMatrix, plotHeatmap, plotProfile, plotEnrichment

Complete reference: references/tools_reference.md → "Visualization Tools"

Normalization Methods

Choosing the correct normalization is critical for valid comparisons. Consult references/normalization_methods.md for comprehensive guidance.

Quick selection guide:

  • ChIP-seq coverage: Use RPGC or CPM
  • ChIP-seq comparison: Use bamCompare with log2 and readCount
  • RNA-seq bins: Use CPM
  • RNA-seq genes: Use RPKM (accounts for gene length)
  • ATAC-seq: Use RPGC or CPM

Normalization methods:

  • RPGC: 1× genome coverage (requires --effectiveGenomeSize)
  • CPM: Counts per million mapped reads
  • RPKM: Reads per kb per million (accounts for region length)
  • BPM: Bins per million
  • None: Raw counts (not recommended for comparisons)

Full explanation: references/normalization_methods.md

Effective Genome Sizes

RPGC normalization requires effective genome size. Common values:

OrganismAssemblySizeUsage
HumanGRCh38/hg382,913,022,398--effectiveGenomeSize 2913022398
MouseGRCm38/mm102,652,783,500--effectiveGenomeSize 2652783500
ZebrafishGRCz111,368,780,147--effectiveGenomeSize 1368780147
Drosophiladm6142,573,017--effectiveGenomeSize 142573017
C. elegansce10/ce11100,286,401--effectiveGenomeSize 100286401

Complete table with read-length-specific values: references/effective_genome_sizes.md

Common Parameters Across Tools

Many deepTools commands share these options:

Performance:

  • --numberOfProcessors, -p: Enable parallel processing (always use available cores)
  • --region: Process specific regions for testing (e.g., chr1:1-1000000)

Read Filtering:

  • --ignoreDuplicates: Remove PCR duplicates (recommended for most analyses)
  • --minMappingQuality: Filter by alignment quality (e.g., --minMappingQuality 10)
  • --minFragmentLength / --maxFragmentLength: Fragment length bounds
  • --samFlagInclude / --samFlagExclude: SAM flag filtering

Read Processing:

  • --extendReads: Extend to fragment length (ChIP-seq: YES, RNA-seq: NO)
  • --centerReads: Center at fragment midpoint for sharper signals

Best Practices

File Validation

Always validate files first using scripts/validate_files.py to check:

  • File existence and readability
  • BAM indices present (.bai files)
  • BED format correctness
  • File sizes reasonable

Analysis Strategy

  1. Start with QC: Run correlation, coverage, and fingerprint analysis before proceeding
  2. Test on small regions: Use --region chr1:1-10000000 for parameter testing
  3. Document commands: Save full command lines for reproducibility
  4. Use consistent normalization: Apply same method across samples in comparisons
  5. Verify genome assembly: Ensure BAM and BED files use matching genome builds

ChIP-seq Specific

  • Always extend reads for ChIP-seq: --extendReads 200
  • Remove duplicates: Use --ignoreDuplicates in most cases
  • Check enrichment first: Run plotFingerprint before detailed analysis
  • GC correction: Only apply if significant bias detected; never use --ignoreDuplicates after GC correction

RNA-seq Specific

  • Never extend reads for RNA-seq (would span splice junctions)
  • Strand-specific: Use --filterRNAstrand forward/reverse for stranded libraries
  • Normalization: CPM for bins, RPKM for genes

ATAC-seq Specific

  • Apply Tn5 correction: Use alignmentSieve with --ATACshift
  • Fragment filtering: Set appropriate min/max fragment lengths
  • Check nucleosome pattern: Fragment size plot should show ladder pattern

Performance Optimization

  1. Use multiple processors: --numberOfProcessors 8 (or available cores)
  2. Increase bin size for faster processing and smaller files
  3. Process chromosomes separately for memory-limited systems
  4. Pre-filter BAM files using alignmentSieve to create reusable filtered files
  5. Use bigWig over bedGraph: Compressed and faster to process

Troubleshooting

Common Issues

BAM index missing:

samtools index input.bam

Out of memory: Process chromosomes individually using --region:

bamCoverage --bam input.bam -o chr1.bw --region chr1

Slow processing: Increase --numberOfProcessors and/or increase --binSize

bigWig files too large: Increase bin size: --binSize 50 or larger

Validation Errors

Run validation script to identify issues:

python scripts/validate_files.py --bam *.bam --bed regions.bed

Common errors and solutions explained in script output.

Reference Documentation

This skill includes comprehensive reference documentation:

references/tools_reference.md

Complete documentation of all deepTools commands organized by category:

  • BAM and bigWig processing tools (9 tools)
  • Quality control tools (6 tools)
  • Visualization tools (3 tools)
  • Miscellaneous tools (2 tools)

Each tool includes:

  • Purpose and overview
  • Key parameters with explanations
  • Usage examples
  • Important notes and best practices

Use this reference when: Users ask about specific tools, parameters, or detailed usage.

references/workflows.md

Complete workflow examples for common analyses:

  • ChIP-seq quality control workflow
  • ChIP-seq complete analysis workflow
  • RNA-seq coverage workflow
  • ATAC-seq analysis workflow
  • Multi-sample comparison workflow
  • Peak region analysis workflow
  • Troubleshooting and performance tips

Use this reference when: Users need complete analysis pipelines or workflow examples.

references/normalization_methods.md

Comprehensive guide to normalization methods:

  • Detailed explanation of each method (RPGC, CPM, RPKM, BPM, etc.)
  • When to use each method
  • Formulas and interpretation
  • Selection guide by experiment type
  • Common pitfalls and solutions
  • Quick reference table

Use this reference when: Users ask about normalization, comparing samples, or which method to use.

references/effective_genome_sizes.md

Effective genome size values and usage:

  • Common organism values (human, mouse, fly, worm, zebrafish)
  • Read-length-specific values
  • Calculation methods
  • When and how to use in commands
  • Custom genome calculation instructions

Use this reference when: Users need genome size for RPGC normalization or GC bias correction.

Helper Scripts

scripts/validate_files.py

Validates BAM, bigWig, and BED files for deepTools analysis. Checks file existence, indices, and format.

Usage:

python scripts/validate_files.py --bam sample1.bam sample2.bam \
    --bed peaks.bed --bigwig signal.bw

When to use: Before starting any analysis, or when troubleshooting errors.

scripts/workflow_generator.py

Generates customizable bash script templates for common deepTools workflows.

Available workflows:

  • chipseq_qc: ChIP-seq quality control
  • chipseq_analysis: Complete ChIP-seq analysis
  • rnaseq_coverage: Strand-specific RNA-seq coverage
  • atacseq: ATAC-seq with Tn5 correction

Usage:

# List workflows
python scripts/workflow_generator.py --list

# Generate workflow
python scripts/workflow_generator.py chipseq_qc -o qc.sh \
    --input-bam Input.bam --chip-bams "ChIP1.bam ChIP2.bam" \
    --genome-size 2913022398 --threads 8

# Run generated workflow
chmod +x qc.sh
./qc.sh

When to use: Users request standard workflows or need template scripts to customize.

Assets

assets/quick_reference.md

Quick reference card with most common commands, effective genome sizes, and typical workflow pattern.

When to use: Users need quick command examples without detailed documentation.

Handling User Requests

For New Users

  1. Start with installation verification
  2. Validate input files using scripts/validate_files.py
  3. Recommend appropriate workflow based on experiment type
  4. Generate workflow template using scripts/workflow_generator.py
  5. Guide through customization and execution

For Experienced Users

  1. Provide specific tool commands for requested operations
  2. Reference appropriate sections in references/tools_reference.md
  3. Suggest optimizations and best practices
  4. Offer troubleshooting for issues

For Specific Tasks

"Convert BAM to bigWig":

  • Use bamCoverage with appropriate normalization
  • Recommend RPGC or CPM based on use case
  • Provide effective genome size for organism
  • Suggest relevant parameters (extendReads, ignoreDuplicates, binSize)

"Check ChIP quality":

  • Run full QC workflow or use plotFingerprint specifically
  • Explain interpretation of results
  • Suggest follow-up actions based on results

"Create heatmap":

  • Guide through two-step process: computeMatrix → plotHeatmap
  • Help choose appropriate matrix mode (reference-point vs scale-regions)
  • Suggest visualization parameters and clustering options

"Compare samples":

  • Recommend bamCompare for two-sample comparison
  • Suggest multiBamSummary + plotCorrelation for multiple samples
  • Guide normalization method selection

Referencing Documentation

When users need detailed information:

  • Tool details: Direct to specific sections in references/tools_reference.md
  • Workflows: Use references/workflows.md for complete analysis pipelines
  • Normalization: Consult references/normalization_methods.md for method selection
  • Genome sizes: Reference references/effective_genome_sizes.md

Search references using grep patterns:

# Find tool documentation
grep -A 20 "^### toolname" references/tools_reference.md

# Find workflow
grep -A 50 "^## Workflow Name" references/workflows.md

# Find normalization method
grep -A 15 "^### Method Name" references/normalization_methods.md

Example Interactions

User: "I need to analyze my ChIP-seq data"

Response approach:

  1. Ask about files available (BAM files, peaks, genes)
  2. Validate files using validation script
  3. Generate chipseq_analysis workflow template
  4. Customize for their specific files and organism
  5. Explain each step as script runs

User: "Which normalization should I use?"

Response approach:

  1. Ask about experiment type (ChIP-seq, RNA-seq, etc.)
  2. Ask about comparison goal (within-sample or between-sample)
  3. Consult references/normalization_methods.md selection guide
  4. Recommend appropriate method with justification
  5. Provide command example with parameters

User: "Create a heatmap around TSS"

Response approach:

  1. Verify bigWig and gene BED files available
  2. Use computeMatrix with reference-point mode at TSS
  3. Generate plotHeatmap with appropriate visualization parameters
  4. Suggest clustering if dataset is large
  5. Offer profile plot as complement

Key Reminders

  • File validation first: Always validate input files before analysis
  • Normalization matters: Choose appropriate method for comparison type
  • Extend reads carefully: YES for ChIP-seq, NO for RNA-seq
  • Use all cores: Set --numberOfProcessors to available cores
  • Test on regions: Use --region for parameter testing
  • Check QC first: Run quality control before detailed analysis
  • Document everything: Save commands for reproducibility
  • Reference documentation: Use comprehensive references for detailed guidance
how to use deeptools

How to use deeptools on Cursor

AI-first code editor with Composer

1

Prerequisites

Before installing skills in Cursor, ensure your development environment meets these requirements:

  • Cursor installed and configured on your development machine
  • Node.js version 16.0+ with npm package manager (verify with node --version)
  • Active project directory or workspace where you want to add deeptools
2

Execute installation command

Execute the skills CLI command in your project's root directory to begin installation:

$npx skills add https://github.com/K-Dense-AI/scientific-agent-skills --skill deeptools

The skills CLI fetches deeptools from GitHub repository K-Dense-AI/scientific-agent-skills and configures it for Cursor.

3

Select Cursor when prompted

The CLI will show a list of available agents. Use arrow keys to navigate and space to select Cursor:

◆ Which agents do you want to install to?
│ ── Universal (.agents/skills) ── always included ────
│ • Amp
│ • Antigravity
│ • Cline
│ • Codex
│ ●Cursor(selected)
│ • Cursor
│ • Windsurf
4

Verify installation

Confirm successful installation by checking the skill directory location:

.cursor/skills/deeptools

Reload or restart Cursor to activate deeptools. Access the skill through slash commands (e.g., /deeptools) or your agent's skill management interface.

Security & Verification Notice

We perform automated surface-level scans (Gen AI Scanner, Socket, Snyk) during installation. These checks detect common vulnerabilities but do not guarantee complete security. Always review skill source code and verify the publisher's reputation before production use.

Skills execute code in your development environment. Always verify the publisher's identity, review recent commits, and test in isolated environments before production deployment.

List & Monetize Your Skill

Submit your Claude Code skill and start earning

GET_STARTED →

Use Cases

Task Automation & Efficiency

Automate repetitive workflows and reduce manual effort

Example

Generate reports, summarize documents, draft communications

Save 3-5 hours per week on routine tasks

Knowledge Enhancement

Learn new skills, understand complex topics, get expert guidance

Example

Explain concepts, provide examples, suggest learning resources

Accelerate learning and skill development by 2x

Quality Improvement

Enhance output quality through reviews, suggestions, and refinements

Example

Review drafts, suggest improvements, catch errors

Improve work quality by 30-40% with less effort

Implementation Guide

Prerequisites

  • Claude Desktop or compatible AI client with skill support
  • Clear understanding of task or problem to solve
  • Willingness to iterate and refine outputs

Time Estimate

15-45 minutes depending on use case complexity

Installation Steps

  1. 1.Install skill using provided installation command
  2. 2.Test with simple use case relevant to your work
  3. 3.Evaluate output quality and relevance
  4. 4.Iterate on prompts to improve results
  5. 5.Integrate into regular workflow if valuable

Common Pitfalls

  • Expecting perfect results without iteration
  • Not providing enough context in prompts
  • Using skill for tasks outside its intended scope
  • Accepting outputs without review and validation

Best Practices

✓ Do

  • +Start with clear, specific prompts
  • +Provide relevant context and constraints
  • +Review and refine all outputs before using
  • +Iterate to improve output quality
  • +Document successful prompt patterns

✗ Don't

  • Don't use without understanding skill limitations
  • Don't skip validation of outputs
  • Don't share sensitive information in prompts
  • Don't expect skill to replace human judgment

💡 Pro Tips

  • Be specific about desired format and style
  • Ask for multiple options to choose from
  • Request explanations to understand reasoning
  • Combine AI efficiency with human expertise

When to Use This

✓ Use When

Use when skill capabilities match your task, clear ROI on time saved, and you can validate outputs. Best for repetitive tasks, learning, and quality improvement.

✗ Avoid When

Avoid when task requires deep expertise you can't validate, involves sensitive decisions, or when learning process is more valuable than speed of completion.

Learning Path

  1. 1Familiarize yourself with skill capabilities and limitations
  2. 2Start with low-risk, non-critical tasks
  3. 3Progress to more complex and valuable use cases
  4. 4Build expertise through regular use and experimentation

Discussion

Product Hunt–style comments (not star reviews)
  • No comments yet — start the thread.
general reviews

Ratings

4.738 reviews
  • Hiroshi Wang· Dec 20, 2024

    Registry listing for deeptools matched our evaluation — installs cleanly and behaves as described in the markdown.

  • Luis Khanna· Dec 20, 2024

    Solid pick for teams standardizing on skills: deeptools is focused, and the summary matches what you get after install.

  • Zaid Menon· Dec 20, 2024

    I recommend deeptools for anyone iterating fast on agent tooling; clear intent and a small, reviewable surface area.

  • Pratham Ware· Dec 12, 2024

    Solid pick for teams standardizing on skills: deeptools is focused, and the summary matches what you get after install.

  • Kaira Dixit· Dec 12, 2024

    deeptools reduced setup friction for our internal harness; good balance of opinion and flexibility.

  • Dhruvi Jain· Dec 4, 2024

    deeptools reduced setup friction for our internal harness; good balance of opinion and flexibility.

  • Oshnikdeep· Nov 23, 2024

    I recommend deeptools for anyone iterating fast on agent tooling; clear intent and a small, reviewable surface area.

  • Amina Wang· Nov 11, 2024

    Useful defaults in deeptools — fewer surprises than typical one-off scripts, and it plays nicely with `npx skills` flows.

  • Xiao Chawla· Nov 11, 2024

    deeptools reduced setup friction for our internal harness; good balance of opinion and flexibility.

  • Mateo Khan· Nov 3, 2024

    I recommend deeptools for anyone iterating fast on agent tooling; clear intent and a small, reviewable surface area.

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