OpenClaw-Medical-Skills bio-metagenomics-functional-profiling
Profile functional potential of metagenomes using HUMAnN3 and similar tools. Use when obtaining pathway abundances, gene family counts, or functional annotations from metagenomic data.
git clone https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills
T=$(mktemp -d) && git clone --depth=1 https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/bio-metagenomics-functional-profiling" ~/.claude/skills/freedomintelligence-openclaw-medical-skills-bio-metagenomics-functional-profilin && rm -rf "$T"
T=$(mktemp -d) && git clone --depth=1 https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills "$T" && mkdir -p ~/.openclaw/skills && cp -r "$T/skills/bio-metagenomics-functional-profiling" ~/.openclaw/skills/freedomintelligence-openclaw-medical-skills-bio-metagenomics-functional-profilin && rm -rf "$T"
skills/bio-metagenomics-functional-profiling/SKILL.mdVersion Compatibility
Reference examples tested with: HUMAnN 3.8+, MetaPhlAn 4.1+, matplotlib 3.8+, pandas 2.2+, scanpy 1.10+, scipy 1.12+, seaborn 0.13+
Before using code patterns, verify installed versions match. If versions differ:
- Python:
thenpip show <package>
to check signatureshelp(module.function) - CLI:
then<tool> --version
to confirm flags<tool> --help
If code throws ImportError, AttributeError, or TypeError, introspect the installed package and adapt the example to match the actual API rather than retrying.
Functional Profiling
"What metabolic pathways are present in my metagenome?" → Profile functional potential of metagenomic samples to obtain pathway abundances and gene family counts using translated search against UniRef and MetaCyc.
- CLI:
(HUMAnN3)humann --input reads.fastq --output results/
Profile the functional potential of metagenomic samples using HUMAnN3 to get pathway and gene family abundances.
HUMAnN3 Workflow
Installation
# Install via conda (recommended) conda create -n humann -c bioconda humann conda activate humann # Download databases humann_databases --download chocophlan full /path/to/databases humann_databases --download uniref uniref90_diamond /path/to/databases # Update config with database paths humann_config --update database_folders nucleotide /path/to/databases/chocophlan humann_config --update database_folders protein /path/to/databases/uniref
Basic Usage
# Run HUMAnN3 on a single sample humann --input sample.fastq.gz --output sample_humann # With MetaPhlAn taxonomic profile (faster) humann --input sample.fastq.gz \ --taxonomic-profile sample_metaphlan.txt \ --output sample_humann # Paired-end reads (concatenate first) cat sample_R1.fq.gz sample_R2.fq.gz > sample_concat.fq.gz humann --input sample_concat.fq.gz --output sample_humann
Output Files
sample_humann/ ├── sample_genefamilies.tsv # Gene family abundances (UniRef90) ├── sample_pathabundance.tsv # MetaCyc pathway abundances ├── sample_pathcoverage.tsv # Pathway coverage (0-1) └── sample_humann_temp/ # Intermediate files
Output Format
Gene Families
# Gene Family sample_Abundance-RPKs UniRef90_A0A000|g__Bacteroides.s__Bacteroides_vulgatus 123.45 UniRef90_A0A001|unclassified 67.89 UNMAPPED 1000.0
Pathway Abundance
# Pathway sample_Abundance PWY-5100: pyruvate fermentation 456.78 PWY-5100|g__Bacteroides.s__Bacteroides_vulgatus 234.56 PWY-5100|unclassified 222.22
Batch Processing
# Process multiple samples for fq in *.fastq.gz; do sample=$(basename $fq .fastq.gz) humann --input $fq --output ${sample}_humann --threads 8 done # Join tables across samples humann_join_tables -i . -o merged_genefamilies.tsv --file_name genefamilies humann_join_tables -i . -o merged_pathabundance.tsv --file_name pathabundance
Normalization
# Normalize to relative abundance humann_renorm_table -i merged_genefamilies.tsv \ -o genefamilies_relab.tsv \ -u relab # Normalize to copies per million (CPM) humann_renorm_table -i merged_pathabundance.tsv \ -o pathabundance_cpm.tsv \ -u cpm
Regroup Gene Families
# Regroup to different functional categories # EC numbers humann_regroup_table -i genefamilies.tsv \ -g uniref90_level4ec \ -o genefamilies_ec.tsv # KEGG Orthologs humann_regroup_table -i genefamilies.tsv \ -g uniref90_ko \ -o genefamilies_ko.tsv # GO terms humann_regroup_table -i genefamilies.tsv \ -g uniref90_go \ -o genefamilies_go.tsv # Pfam domains humann_regroup_table -i genefamilies.tsv \ -g uniref90_pfam \ -o genefamilies_pfam.tsv
Stratification
Split by Organism
# Unstratify (remove organism info, sum across species) humann_split_stratified_table -i merged_pathabundance.tsv \ -o . # Creates: merged_pathabundance_unstratified.tsv # merged_pathabundance_stratified.tsv
Species Contributions
import pandas as pd df = pd.read_csv('merged_pathabundance.tsv', sep='\t', index_col=0) unstratified = df[~df.index.str.contains('\\|')] stratified = df[df.index.str.contains('\\|')] def get_species_contrib(pathway, df): '''Get species contributions to a pathway''' mask = df.index.str.startswith(pathway + '|') return df[mask] contrib = get_species_contrib('PWY-5100', stratified)
Quality Control
# Check unmapped and unintegrated humann_barplot -i merged_pathabundance.tsv \ -o pathabundance_barplot.png \ --focal-feature UNMAPPED
Key QC Metrics
| Metric | Good | Concerning |
|---|---|---|
| UNMAPPED (gene families) | <30% | >50% |
| UNINTEGRATED (pathways) | <40% | >60% |
| Pathway coverage | >0.5 | <0.3 |
Differential Analysis
LEfSe Format
# Format for LEfSe humann_join_tables -i . -o merged.tsv --file_name pathabundance humann_renorm_table -i merged.tsv -o merged_relab.tsv -u relab
Python Analysis
Goal: Identify differentially abundant metabolic pathways between conditions from HUMAnN3 output.
Approach: Load unstratified pathway abundances, split samples by condition using metadata, run Mann-Whitney U tests per pathway, and apply FDR correction.
import pandas as pd from scipy import stats df = pd.read_csv('pathabundance_cpm.tsv', sep='\t', index_col=0) metadata = pd.read_csv('metadata.tsv', sep='\t', index_col=0) group1 = metadata[metadata['condition'] == 'healthy'].index group2 = metadata[metadata['condition'] == 'disease'].index results = [] for pathway in df.index: if '|' not in pathway and pathway != 'UNMAPPED': vals1 = df.loc[pathway, group1] vals2 = df.loc[pathway, group2] stat, pval = stats.mannwhitneyu(vals1, vals2) fc = vals2.mean() / (vals1.mean() + 1e-10) results.append({'pathway': pathway, 'pvalue': pval, 'fold_change': fc}) results_df = pd.DataFrame(results) results_df['padj'] = stats.false_discovery_control(results_df['pvalue'])
Visualization
import matplotlib.pyplot as plt import seaborn as sns df = pd.read_csv('pathabundance_relab.tsv', sep='\t', index_col=0) df = df[~df.index.str.contains('\\|')] df = df.drop(['UNMAPPED', 'UNINTEGRATED'], errors='ignore') top = df.mean(axis=1).nlargest(20).index plt.figure(figsize=(12, 8)) sns.heatmap(df.loc[top].T, cmap='viridis', xticklabels=True) plt.tight_layout() plt.savefig('pathway_heatmap.png')
Related Skills
- metagenomics/metaphlan-profiling - Taxonomic profiling (input for HUMAnN)
- metagenomics/kraken-classification - Alternative taxonomy
- metagenomics/metagenome-visualization - Visualization methods
- pathway-analysis/kegg-pathways - KEGG pathway interpretation