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Maps metabolites to pathways (KEGG, Reactome, MetaCyc) and disease associations. Bridges metabolite IDs across databases and links to enzymes/genes for pathway enrichment analysis.
npx claudepluginhub mims-harvard/tooluniverse --plugin tooluniverseHow this skill is triggered — by the user, by Claude, or both
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/tooluniverse:tooluniverse-metabolomics-pathwayThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Identify metabolites, map to metabolic pathways, find disease associations, and connect to enzymes/genes.
Annotates mass-spec features to known metabolites and retrieves metabolomics studies from HMDB, MetaboLights, Metabolomics Workbench, and KEGG. Produces structured research reports with metabolite-pathway mapping.
Searches the Human Metabolome Database (220K+ metabolites) by name, ID, structure, or spectra. Retrieves chemical properties, biomarker data, NMR/MS spectra, and pathway information for metabolomics research.
Parses local HMDB XML for metabolite details, chemical properties, biological contexts, disease links, spectra data, and cross-DB mappings like KEGG/PubChem. For offline metabolomics without REST API.
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Identify metabolites, map to metabolic pathways, find disease associations, and connect to enzymes/genes.
Metabolite-to-pathway mapping requires correct, database-specific identifiers. HMDB IDs link to KEGG/Reactome but must be converted via BridgeDb; PubChem CIDs need explicit cross-referencing. Always verify metabolite identity first: the same common name can refer to structurally distinct isomers, and PubChem names frequently differ from CTD/KEGG names.
MetaCyc_get_compound, KEGG_get_compound, or ReactomeContent_searchBridgeDb_xrefsCTD_get_chemical_gene_interactions or KEGG_get_compoundMetabolite_get_diseases or CTD_get_chemical_diseasesWhen analysis requires computation (statistics, data processing, scoring, enrichment), write and run Python code via Bash. Don't describe what you would do — execute it and report actual results. Use ToolUniverse tools to retrieve data, then Python (pandas, scipy, statsmodels, matplotlib) to analyze it.
Phase 0: Identify & Resolve → Phase 1: Characterize → Phase 2: Pathway Map →
Phase 3: Enzyme/Gene Linkage → Phase 4: Disease Associations → Phase 5: Cross-DB Enrichment → Report
Metabolite_search: query (REQUIRED), search_type ("name"/"formula"). Returns PubChem matches with CID, name, formula, MW, SMILES.
MetabolomicsWorkbench_search_compound_by_name: name (REQUIRED). Cross-reference with RefMet.
MetabolomicsWorkbench_search_by_mz: mz (REQUIRED), adduct (e.g., "M+H"), tolerance. Uses moverz/REFMET/{mz}/{adduct}/{tolerance}.
MetabolomicsWorkbench_search_by_exact_mass: exact_mass (REQUIRED), tolerance. Uses moverz/REFMET/{mass}/M/{tolerance}.
Metabolite_get_info: compound_name, hmdb_id (e.g., "HMDB0000122"), or pubchem_cid. Returns HMDB ID, CID, InChIKey, classification.
KEGG_get_compound: compound_id (e.g., "C00031"). Returns linked pathways, enzymes, reactions.
BridgeDb_xrefs: identifier (REQUIRED), source (REQUIRED: "Ch"=HMDB, "Cs"=ChemSpider, "Ck"=KEGG, "Ce"=ChEBI), target (optional).
BridgeDb_search: query (REQUIRED), organism. Free-text metabolite search.
Metabolite_get_info: classification (super_class/class/sub_class), biological_roles, cellular_locations.
MetabolomicsWorkbench_get_refmet_info: refmet_name (REQUIRED). Standardized RefMet classification.
KEGG_get_compound: linked enzyme/reaction/pathway IDs.
MetaCyc_search_pathways: query (keyword search, e.g., "glycolysis")MetaCyc_get_pathway: pathway_id (e.g., "GLYCOLYSIS") -- reactions, enzymes, compoundsMetaCyc_get_compound: compound_id (e.g., "PYRUVATE") -- pathways it participates inMetaCyc_get_reaction: reaction_id -- substrates, products, enzymesKEGG_get_gene_pathways: gene_id (e.g., "hsa:5230") -- pathways for enzyme geneKEGG_get_pathway_genes: pathway_id (e.g., "hsa00010") -- all genes in pathwayReactomeContent_search: query, types (e.g., "Pathway"), speciesReactome_get_pathway: id (e.g., "R-HSA-70171")ReactomeAnalysis_pathway_enrichment: identifiers (space-separated string, NOT array)Reactome_map_uniprot_to_pathways: uniprot_idCTD_get_chemical_gene_interactions: input_terms (chemical name). Returns interacting genes.
KEGG_get_gene_pathways: which pathways an enzyme gene participates in.
BridgeDb_attributes: identifier, source, organism. Get attributes for identifier.
Workflow: KEGG compound -> enzyme IDs -> MetaCyc reaction -> enzyme names -> Reactome uniprot -> pathways -> MyGene for gene info.
CTD_get_chemical_diseases: input_terms (chemical name, MeSH, CAS RN). Curated associations with direct/inferred evidence.
CTD_get_gene_diseases: input_terms (gene name). For metabolite-processing genes from Phase 3.
Metabolite_get_diseases: compound_name/hmdb_id/pubchem_cid, limit (default 50). CTD-backed.
MetabolomicsWorkbench_get_study: study_id (e.g., "ST000001").
MetabolomicsWorkbench_get_compound_by_pubchem_cid: pubchem_cid.
PubMed_search_articles / EuropePMC_search_articles: literature context.
For metabolite list enrichment: (1) convert names to gene/enzyme IDs via CTD, (2) run ReactomeAnalysis_pathway_enrichment with space-separated identifiers, (3) use KEGG_get_gene_pathways per enzyme.
| Mistake | Correction |
|---|---|
| Array to ReactomeAnalysis_pathway_enrichment | Must be space-separated string |
| HMDB IDs in CTD_get_chemical_diseases | CTD uses common names or MeSH IDs |
| Not resolving names first | Always start with Metabolite_search |
| gene_id without organism prefix for KEGG | Need "hsa:5230" not "5230" |
| Expecting HMDB API | No open API; use Metabolite_get_info (PubChem-backed) |
| PubChem title to CTD when names differ | Try both PubChem name and common synonyms |
| MetabolomicsWorkbench exactmass | Use moverz/REFMET/{mass}/M/{tolerance} (exactmass broken) |
| Tier | Criteria | Sources |
|---|---|---|
| T1 | Curated disease association, direct evidence | CTD curated, OMIM |
| T2 | Multiple database pathway concordance | MetaCyc + KEGG + Reactome agreement |
| T3 | Inferred or single-database | CTD inferred, single pathway DB |
| T4 | Computational prediction or text-mining | Literature, RefMet classification |