Labsco
anthropics logo

nextflow-development

✓ Official503

by anthropic · part of anthropics/life-sciences

Run nf-core bioinformatics pipelines (rnaseq, sarek, atacseq) on sequencing data. Use when analyzing RNA-seq, WGS/WES, or ATAC-seq data—either local FASTQs or…

🔥🔥🔥🔥✓ VerifiedFreeQuick setup
🧩 One of 6 skills in the anthropics/life-sciences package — works on its own, and pairs well with its siblings.

This is the playbook your agent receives when the skill activates — you don't need to read it to use the skill, but it's here to audit before installing.

by anthropic

Run nf-core bioinformatics pipelines (rnaseq, sarek, atacseq) on sequencing data. Use when analyzing RNA-seq, WGS/WES, or ATAC-seq data—either local FASTQs or… npx skills add https://github.com/anthropics/life-sciences --skill nextflow-development Download ZIPGitHub503

Workflow Checklist

- [ ] Step 0: Acquire data (if from GEO/SRA)
- [ ] Step 1: Environment check (MUST pass)
- [ ] Step 2: Select pipeline (confirm with user)
- [ ] Step 3: Run test profile (MUST pass)
- [ ] Step 4: Create samplesheet
- [ ] Step 5: Configure & run (confirm genome with user)
- [ ] Step 6: Verify outputs

Step 0: Acquire Data (GEO/SRA Only)

Skip this step if user has local FASTQ files.

For public datasets, fetch from GEO/SRA first. See references/geo-sra-acquisition.md for the full workflow.

Quick start:

# 1. Get study info
python scripts/sra_geo_fetch.py info GSE110004

# 2. Download (interactive mode)
python scripts/sra_geo_fetch.py download GSE110004 -o ./fastq -i

# 3. Generate samplesheet
python scripts/sra_geo_fetch.py samplesheet GSE110004 --fastq-dir ./fastq -o samplesheet.csv

DECISION POINT: After fetching study info, confirm with user:

  • Which sample subset to download (if multiple data types)

  • Suggested genome and pipeline

Then continue to Step 1.

Step 1: Environment Check

Run first. Pipeline will fail without passing environment.

python scripts/check_environment.py

All critical checks must pass. If any fail, provide fix instructions:

Docker issues

Problem Fix Not installed Install from https://docs.docker.com/get-docker/ Permission denied sudo usermod -aG docker $USER then re-login Daemon not running sudo systemctl start docker

Nextflow issues

Problem Fix Not installed curl -s https://get.nextflow.io | bash && mv nextflow ~/bin/ Version < 23.04 nextflow self-update

Java issues

Problem Fix Not installed / < 11 sudo apt install openjdk-11-jdk

Do not proceed until all checks pass. For HPC/Singularity, see references/troubleshooting.md.

Step 2: Select Pipeline

DECISION POINT: Confirm with user before proceeding.

Data Type Pipeline Version Goal RNA-seq rnaseq 3.22.2 Gene expression WGS/WES sarek 3.7.1 Variant calling ATAC-seq atacseq 2.1.2 Chromatin accessibility

Auto-detect from data:

python scripts/detect_data_type.py /path/to/data

For pipeline-specific details:

Step 3: Run Test Profile

Validates environment with small data. MUST pass before real data.

nextflow run nf-core/ -r -profile test,docker --outdir test_output

Pipeline Command rnaseq nextflow run nf-core/rnaseq -r 3.22.2 -profile test,docker --outdir test_rnaseq sarek nextflow run nf-core/sarek -r 3.7.1 -profile test,docker --outdir test_sarek atacseq nextflow run nf-core/atacseq -r 2.1.2 -profile test,docker --outdir test_atacseq

Verify:

ls test_output/multiqc/multiqc_report.html
grep "Pipeline completed successfully" .nextflow.log

If test fails, see references/troubleshooting.md.

Step 4: Create Samplesheet

Generate automatically

python scripts/generate_samplesheet.py /path/to/data -o samplesheet.csv

The script:

  • Discovers FASTQ/BAM/CRAM files

  • Pairs R1/R2 reads

  • Infers sample metadata

  • Validates before writing

For sarek: Script prompts for tumor/normal status if not auto-detected.

Validate existing samplesheet

python scripts/generate_samplesheet.py --validate samplesheet.csv 

Samplesheet formats

rnaseq:

sample,fastq_1,fastq_2,strandedness
SAMPLE1,/abs/path/R1.fq.gz,/abs/path/R2.fq.gz,auto

sarek:

patient,sample,lane,fastq_1,fastq_2,status
patient1,tumor,L001,/abs/path/tumor_R1.fq.gz,/abs/path/tumor_R2.fq.gz,1
patient1,normal,L001,/abs/path/normal_R1.fq.gz,/abs/path/normal_R2.fq.gz,0

atacseq:

sample,fastq_1,fastq_2,replicate
CONTROL,/abs/path/ctrl_R1.fq.gz,/abs/path/ctrl_R2.fq.gz,1

Step 5: Configure & Run

5a. Check genome availability

python scripts/manage_genomes.py check 
# If not installed:
python scripts/manage_genomes.py download 

Common genomes: GRCh38 (human), GRCh37 (legacy), GRCm39 (mouse), R64-1-1 (yeast), BDGP6 (fly)

5b. Decision points

DECISION POINT: Confirm with user:

  • Genome: Which reference to use

  • Pipeline-specific options:

  • rnaseq: aligner (star_salmon recommended, hisat2 for low memory)

  • sarek: tools (haplotypecaller for germline, mutect2 for somatic)

  • atacseq: read_length (50, 75, 100, or 150)

5c. Run pipeline

nextflow run nf-core/ \
 -r \
 -profile docker \
 --input samplesheet.csv \
 --outdir results \
 --genome \
 -resume

Key flags:

  • -r: Pin version

  • -profile docker: Use Docker (or singularity for HPC)

  • --genome: iGenomes key

  • -resume: Continue from checkpoint

Resource limits (if needed):

--max_cpus 8 --max_memory '32.GB' --max_time '24.h'

Step 6: Verify Outputs

Check completion

ls results/multiqc/multiqc_report.html
grep "Pipeline completed successfully" .nextflow.log

Key outputs by pipeline

rnaseq:

  • results/star_salmon/salmon.merged.gene_counts.tsv - Gene counts

  • results/star_salmon/salmon.merged.gene_tpm.tsv - TPM values

sarek:

  • results/variant_calling/*/ - VCF files

  • results/preprocessing/recalibrated/ - BAM files

atacseq:

  • results/macs2/narrowPeak/ - Peak calls

  • results/bwa/mergedLibrary/bigwig/ - Coverage tracks

Quick Reference

For common exit codes and fixes, see references/troubleshooting.md.

Resume failed run

nextflow run nf-core/ -resume

References

Disclaimer

This skill is provided as a prototype example demonstrating how to integrate nf-core bioinformatics pipelines into Claude Code for automated analysis workflows. The current implementation supports three pipelines (rnaseq, sarek, and atacseq), serving as a foundation that enables the community to expand support to the full set of nf-core pipelines.

It is intended for educational and research purposes and should not be considered production-ready without appropriate validation for your specific use case. Users are responsible for ensuring their computing environment meets pipeline requirements and for verifying analysis results.

Anthropic does not guarantee the accuracy of bioinformatics outputs, and users should follow standard practices for validating computational analyses. This integration is not officially endorsed by or affiliated with the nf-core community.

Attribution

When publishing results, cite the appropriate pipeline. Citations are available in each nf-core repository's CITATIONS.md file (e.g., https://github.com/nf-core/rnaseq/blob/3.22.2/CITATIONS.md).