Agent skill
ngs-analysis
Install this agent skill to your Project
npx add-skill https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills/tree/main/skills/ngs-analysis
SKILL.md
name: ngs-analysis description: "Next-generation sequencing data analysis pipelines including bulk RNA-seq, scRNA-seq preprocessing, variant calling, and quality control. Use when working with FASTQ files, alignment (STAR, BWA), quantification (featureCounts, Salmon), DESeq2/edgeR analysis, or building NGS pipelines. Supports GEO/SRA data retrieval." license: Proprietary
NGS Data Analysis Pipelines
Data Retrieval from GEO/SRA
# Install SRA toolkit
conda install -c bioconda sra-tools
# Download SRA files
prefetch SRR12345678
fastq-dump --split-files --gzip SRR12345678
# Parallel download with fasterq-dump
fasterq-dump --split-files -e 8 SRR12345678
gzip SRR12345678_*.fastq
Quality Control
# FastQC
fastqc -t 8 -o fastqc_output/ *.fastq.gz
# MultiQC aggregation
multiqc fastqc_output/ -o multiqc_report/
# Trimming with fastp
fastp -i R1.fastq.gz -I R2.fastq.gz \
-o R1_trimmed.fastq.gz -O R2_trimmed.fastq.gz \
--detect_adapter_for_pe --thread 8 \
--html fastp_report.html
Bulk RNA-seq Pipeline
Alignment with STAR
# Build index (once)
STAR --runMode genomeGenerate \
--genomeDir star_index/ \
--genomeFastaFiles genome.fa \
--sjdbGTFfile genes.gtf \
--runThreadN 16
# Alignment
STAR --runThreadN 16 \
--genomeDir star_index/ \
--readFilesIn R1.fastq.gz R2.fastq.gz \
--readFilesCommand zcat \
--outFileNamePrefix sample_ \
--outSAMtype BAM SortedByCoordinate \
--quantMode GeneCounts
Quantification with featureCounts
featureCounts -T 8 -p -B -C \
-a genes.gtf \
-o counts.txt \
*.bam
Salmon Pseudo-alignment
# Index
salmon index -t transcripts.fa -i salmon_index -k 31
# Quantification
salmon quant -i salmon_index -l A \
-1 R1.fastq.gz -2 R2.fastq.gz \
-p 8 -o salmon_quant/
Differential Expression with DESeq2
library(DESeq2)
library(tidyverse)
# Load counts
counts <- read.table("counts.txt", header=TRUE, row.names=1)
coldata <- read.csv("sample_info.csv", row.names=1)
# Create DESeq object
dds <- DESeqDataSetFromMatrix(
countData = counts,
colData = coldata,
design = ~ condition
)
# Filter low counts
keep <- rowSums(counts(dds) >= 10) >= 3
dds <- dds[keep,]
# Run DESeq2
dds <- DESeq(dds)
res <- results(dds, contrast=c("condition", "treatment", "control"))
res_df <- as.data.frame(res) %>%
rownames_to_column("gene") %>%
filter(!is.na(padj)) %>%
arrange(padj)
# Significant genes
sig_genes <- res_df %>%
filter(padj < 0.05, abs(log2FoldChange) > 1)
write.csv(res_df, "DEG_results.csv", row.names=FALSE)
Variant Calling (Somatic)
# BWA-MEM2 alignment
bwa-mem2 index reference.fa
bwa-mem2 mem -t 16 reference.fa R1.fq.gz R2.fq.gz | \
samtools sort -@ 8 -o aligned.bam
# Mark duplicates
gatk MarkDuplicates -I aligned.bam -O marked.bam -M metrics.txt
# BQSR
gatk BaseRecalibrator -R ref.fa -I marked.bam \
--known-sites known_sites.vcf -O recal.table
gatk ApplyBQSR -R ref.fa -I marked.bam \
--bqsr-recal-file recal.table -O recal.bam
# Mutect2 for somatic variants
gatk Mutect2 -R ref.fa -I tumor.bam -I normal.bam \
-normal normal_sample -O somatic.vcf.gz
Python Integration
import pandas as pd
import subprocess
from pathlib import Path
def run_pipeline(fastq_dir, output_dir, genome_index):
"""Run complete RNA-seq pipeline"""
fastq_files = list(Path(fastq_dir).glob("*_R1.fastq.gz"))
for r1 in fastq_files:
sample = r1.stem.replace("_R1.fastq", "")
r2 = r1.parent / f"{sample}_R2.fastq.gz"
# STAR alignment
cmd = f"""
STAR --runThreadN 16 --genomeDir {genome_index} \
--readFilesIn {r1} {r2} --readFilesCommand zcat \
--outFileNamePrefix {output_dir}/{sample}_ \
--outSAMtype BAM SortedByCoordinate
"""
subprocess.run(cmd, shell=True, check=True)
See references/conda_envs.md for environment setup.
See scripts/batch_pipeline.py for parallel processing.
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