skills/ClawBio-skills/claw-metagenomics/SKILL.md
Shotgun metagenomics profiling — taxonomy, resistome, and functional pathways
npx skillsauth add aaaaqwq/claude-code-skills claw-metagenomicsInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Comprehensive shotgun metagenomics analysis combining taxonomic classification, antimicrobial resistance gene detection, and functional pathway profiling from paired-end FASTQ files.
If you ask a general AI to "analyse a metagenome," it will:
This skill encodes the correct methodological decisions:
The skill works with any shotgun metagenome but has been validated on:
A key feature is the classification of detected resistance genes by WHO priority tier:
| Priority | Pathogen | Resistance | |----------|----------|------------| | Critical | Acinetobacter baumannii | Carbapenem-resistant | | Critical | Pseudomonas aeruginosa | Carbapenem-resistant | | Critical | Enterobacteriaceae | Carbapenem-resistant, 3rd-gen cephalosporin-resistant | | High | Enterococcus faecium | Vancomycin-resistant | | High | Staphylococcus aureus | Methicillin-resistant, vancomycin-resistant | | High | Helicobacter pylori | Clarithromycin-resistant | | High | Campylobacter | Fluoroquinolone-resistant | | High | Salmonella spp. | Fluoroquinolone-resistant | | High | Neisseria gonorrhoeae | 3rd-gen cephalosporin-resistant, fluoroquinolone-resistant | | Medium | Streptococcus pneumoniae | Penicillin-non-susceptible | | Medium | Haemophilus influenzae | Ampicillin-resistant | | Medium | Shigella spp. | Fluoroquinolone-resistant |
# Full pipeline (taxonomy + resistome + functional)
python metagenomics_profiler.py \
--r1 sample_R1.fastq.gz \
--r2 sample_R2.fastq.gz \
--output metagenomics_report
# Skip HUMAnN3 (faster — taxonomy + resistome only)
python metagenomics_profiler.py \
--r1 sample_R1.fastq.gz \
--r2 sample_R2.fastq.gz \
--output metagenomics_report \
--skip-functional
# Single concatenated FASTQ
python metagenomics_profiler.py \
--input combined.fastq.gz \
--output metagenomics_report
# Specify Kraken2 database path
python metagenomics_profiler.py \
--r1 sample_R1.fastq.gz \
--r2 sample_R2.fastq.gz \
--output metagenomics_report \
--kraken2-db /path/to/kraken2_db \
--read-length 150
python metagenomics_profiler.py --demo --output demo_report
The demo uses pre-computed results from the Peru sewage metagenomics study (6 samples, 3 sites) and generates all figures and reports instantly without requiring external tools.
Metagenomics Profiler — ClawBio
================================
Mode: demo (pre-computed Peru sewage data)
Samples: 6 (3 sites: Lima, Cusco, Iquitos)
Taxonomy (Kraken2 + Bracken):
Total classified: 94.2%
Top species: Escherichia coli (12.3%), Klebsiella pneumoniae (8.7%),
Pseudomonas aeruginosa (5.1%), Acinetobacter baumannii (3.9%)
Resistome (RGI/CARD):
Total ARG hits: 247 (Perfect: 89, Strict: 158)
Drug classes: 14
WHO-Critical ARGs detected: 23
- Carbapenem resistance: NDM-1, OXA-48, KPC-3
- 3rd-gen cephalosporin resistance: CTX-M-15, CTX-M-27
Functional Pathways (HUMAnN3):
Total pathways: 312
Top: PWY-7219 (adenosine ribonucleotides de novo biosynthesis)
Figures saved to: demo_report/figures/
taxonomy_barplot.png (300 dpi)
resistome_heatmap.png (300 dpi)
who_critical_args.png (300 dpi)
Reproducibility:
commands.sh | environment.yml | checksums.sha256
FASTQ R1 + R2
|
v
[Kraken2] --> kraken2_report.txt
|
v
[Bracken] --> bracken_species.tsv --> Figure 1: Taxonomy bar chart
|
v
[RGI MAIN] --> rgi_results.txt --> Figure 2: Resistome heatmap
| --> Figure 3: WHO-critical ARG summary
v
[HUMAnN3] --> pathabundance.tsv (optional, --skip-functional to omit)
|
v
[Report] --> report.md + figures/ + reproducibility/
| Tool | Database | Size | Notes |
|------|----------|------|-------|
| Kraken2 | Standard-8 or PlusPF | 8-70 GB | Set via --kraken2-db or $KRAKEN2_DB |
| Bracken | (built from Kraken2 DB) | included | Read-length specific (default: 150 bp) |
| RGI | CARD | ~500 MB | Auto-downloaded via rgi auto_load |
| HUMAnN3 | ChocoPhlAn + UniRef90 | ~15 GB | Set via --humann-db or $HUMANN_DB |
If you use this skill in a publication, please cite:
testing
通用自媒体文章自动发布工具。支持百家号、搜狐号、知乎、微信公众号、小红书、抖音号六个平台的自动化发布流程。使用Playwright自动化实现平台导航和发布,支持通过storageState管理Cookie实现账号切换。
development
# SKILL.md - Model Configuration Status (mcstatus) ## 触发条件 - `/mcstatus` 命令 - 用户询问模型配备、模型配置、model status、模型列表等 ## 功能 实时生成 Agent + Cron 的模型配置报告,展示当前所有 agent 的主模型/fallback链和所有 cron 任务的模型分配。 ## 执行步骤 ### Step 1: 收集 Agent 模型配置 读取各 agent 的 models.json 获取主模型和 fallback 链: ```bash for agent in main ops code quant data research content market finance pm law product sales batch; do config=$(cat ~/.openclaw/agents/$agent/agent/models.json 2>/dev/null) if [ -n "$config" ]; then echo "=== $agent
tools
MCP 服务器智能管理助手。自动检测 MCP 可用性、智能开关、功能问答,提供人性化的 MCP 管理体验。
tools
从GitHub搜索并自动安装配置MCP(Model Context Protocol)服务器工具到Claude配置文件。当用户需要安装MCP工具时触发此技能。工作流程:搜索GitHub上的MCP项目 -> 提取npx配置 -> 添加到~/.claude.json -> 处理API密钥(如有)。