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    davila7

    metabolomics-workbench-database

    davila7/metabolomics-workbench-database
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    SKILL.md

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    About

    Access NIH Metabolomics Workbench via REST API (4,200+ studies). Query metabolites, RefMet nomenclature, MS/NMR data, m/z searches, study metadata, for metabolomics and biomarker discovery.

    SKILL.md

    Metabolomics Workbench Database

    Overview

    The Metabolomics Workbench is a comprehensive NIH Common Fund-sponsored platform hosted at UCSD that serves as the primary repository for metabolomics research data. It provides programmatic access to over 4,200 processed studies (3,790+ publicly available), standardized metabolite nomenclature through RefMet, and powerful search capabilities across multiple analytical platforms (GC-MS, LC-MS, NMR).

    When to Use This Skill

    This skill should be used when querying metabolite structures, accessing study data, standardizing nomenclature, performing mass spectrometry searches, or retrieving gene/protein-metabolite associations through the Metabolomics Workbench REST API.

    Core Capabilities

    1. Querying Metabolite Structures and Data

    Access comprehensive metabolite information including structures, identifiers, and cross-references to external databases.

    Key operations:

    • Retrieve compound data by various identifiers (PubChem CID, InChI Key, KEGG ID, HMDB ID, etc.)
    • Download molecular structures as MOL files or PNG images
    • Access standardized compound classifications
    • Cross-reference between different metabolite databases

    Example queries:

    import requests
    
    # Get compound information by PubChem CID
    response = requests.get('https://www.metabolomicsworkbench.org/rest/compound/pubchem_cid/5281365/all/json')
    
    # Download molecular structure as PNG
    response = requests.get('https://www.metabolomicsworkbench.org/rest/compound/regno/11/png')
    
    # Get compound name by registry number
    response = requests.get('https://www.metabolomicsworkbench.org/rest/compound/regno/11/name/json')
    

    2. Accessing Study Metadata and Experimental Results

    Query metabolomics studies by various criteria and retrieve complete experimental datasets.

    Key operations:

    • Search studies by metabolite, institute, investigator, or title
    • Access study summaries, experimental factors, and analysis details
    • Retrieve complete experimental data in various formats
    • Download mwTab format files for complete study information
    • Query untargeted metabolomics data

    Example queries:

    # List all available public studies
    response = requests.get('https://www.metabolomicsworkbench.org/rest/study/study_id/ST/available/json')
    
    # Get study summary
    response = requests.get('https://www.metabolomicsworkbench.org/rest/study/study_id/ST000001/summary/json')
    
    # Retrieve experimental data
    response = requests.get('https://www.metabolomicsworkbench.org/rest/study/study_id/ST000001/data/json')
    
    # Find studies containing a specific metabolite
    response = requests.get('https://www.metabolomicsworkbench.org/rest/study/refmet_name/Tyrosine/summary/json')
    

    3. Standardizing Metabolite Nomenclature with RefMet

    Use the RefMet database to standardize metabolite names and access systematic classification across four structural resolution levels.

    Key operations:

    • Match common metabolite names to standardized RefMet names
    • Query by chemical formula, exact mass, or InChI Key
    • Access hierarchical classification (super class, main class, sub class)
    • Retrieve all RefMet entries or filter by classification

    Example queries:

    # Standardize a metabolite name
    response = requests.get('https://www.metabolomicsworkbench.org/rest/refmet/match/citrate/name/json')
    
    # Query by molecular formula
    response = requests.get('https://www.metabolomicsworkbench.org/rest/refmet/formula/C12H24O2/all/json')
    
    # Get all metabolites in a specific class
    response = requests.get('https://www.metabolomicsworkbench.org/rest/refmet/main_class/Fatty%20Acids/all/json')
    
    # Retrieve complete RefMet database
    response = requests.get('https://www.metabolomicsworkbench.org/rest/refmet/all/json')
    

    4. Performing Mass Spectrometry Searches

    Search for compounds by mass-to-charge ratio (m/z) with specified ion adducts and tolerance levels.

    Key operations:

    • Search precursor ion masses across multiple databases (Metabolomics Workbench, LIPIDS, RefMet)
    • Specify ion adduct types (M+H, M-H, M+Na, M+NH4, M+2H, etc.)
    • Calculate exact masses for known metabolites with specific adducts
    • Set mass tolerance for flexible matching

    Example queries:

    # Search by m/z value with M+H adduct
    response = requests.get('https://www.metabolomicsworkbench.org/rest/moverz/MB/635.52/M+H/0.5/json')
    
    # Calculate exact mass for a metabolite with specific adduct
    response = requests.get('https://www.metabolomicsworkbench.org/rest/moverz/exactmass/PC(34:1)/M+H/json')
    
    # Search across RefMet database
    response = requests.get('https://www.metabolomicsworkbench.org/rest/moverz/REFMET/200.15/M-H/0.3/json')
    

    5. Filtering Studies by Analytical and Biological Parameters

    Use the MetStat context to find studies matching specific experimental conditions.

    Key operations:

    • Filter by analytical method (LCMS, GCMS, NMR)
    • Specify ionization polarity (POSITIVE, NEGATIVE)
    • Filter by chromatography type (HILIC, RP, GC)
    • Target specific species, sample sources, or diseases
    • Combine multiple filters using semicolon-delimited format

    Example queries:

    # Find human blood studies on diabetes using LC-MS
    response = requests.get('https://www.metabolomicsworkbench.org/rest/metstat/LCMS;POSITIVE;HILIC;Human;Blood;Diabetes/json')
    
    # Find all human blood studies containing tyrosine
    response = requests.get('https://www.metabolomicsworkbench.org/rest/metstat/;;;Human;Blood;;;Tyrosine/json')
    
    # Filter by analytical method only
    response = requests.get('https://www.metabolomicsworkbench.org/rest/metstat/GCMS;;;;;;/json')
    

    6. Accessing Gene and Protein Information

    Retrieve gene and protein data associated with metabolic pathways and metabolite metabolism.

    Key operations:

    • Query genes by symbol, name, or ID
    • Access protein sequences and annotations
    • Cross-reference between gene IDs, RefSeq IDs, and UniProt IDs
    • Retrieve gene-metabolite associations

    Example queries:

    # Get gene information by symbol
    response = requests.get('https://www.metabolomicsworkbench.org/rest/gene/gene_symbol/ACACA/all/json')
    
    # Retrieve protein data by UniProt ID
    response = requests.get('https://www.metabolomicsworkbench.org/rest/protein/uniprot_id/Q13085/all/json')
    

    Common Workflows

    Workflow 1: Finding Studies for a Specific Metabolite

    To find all studies containing measurements of a specific metabolite:

    1. First standardize the metabolite name using RefMet:

      response = requests.get('https://www.metabolomicsworkbench.org/rest/refmet/match/glucose/name/json')
      
    2. Use the standardized name to search for studies:

      response = requests.get('https://www.metabolomicsworkbench.org/rest/study/refmet_name/Glucose/summary/json')
      
    3. Retrieve experimental data from specific studies:

      response = requests.get('https://www.metabolomicsworkbench.org/rest/study/study_id/ST000001/data/json')
      

    Workflow 2: Identifying Compounds from MS Data

    To identify potential compounds from mass spectrometry m/z values:

    1. Perform m/z search with appropriate adduct and tolerance:

      response = requests.get('https://www.metabolomicsworkbench.org/rest/moverz/MB/180.06/M+H/0.5/json')
      
    2. Review candidate compounds from results

    3. Retrieve detailed information for candidate compounds:

      response = requests.get('https://www.metabolomicsworkbench.org/rest/compound/regno/{regno}/all/json')
      
    4. Download structures for confirmation:

      response = requests.get('https://www.metabolomicsworkbench.org/rest/compound/regno/{regno}/png')
      

    Workflow 3: Exploring Disease-Specific Metabolomics

    To find metabolomics studies for a specific disease and analytical platform:

    1. Use MetStat to filter studies:

      response = requests.get('https://www.metabolomicsworkbench.org/rest/metstat/LCMS;POSITIVE;;Human;;Cancer/json')
      
    2. Review study IDs from results

    3. Access detailed study information:

      response = requests.get('https://www.metabolomicsworkbench.org/rest/study/study_id/ST{ID}/summary/json')
      
    4. Retrieve complete experimental data:

      response = requests.get('https://www.metabolomicsworkbench.org/rest/study/study_id/ST{ID}/data/json')
      

    Output Formats

    The API supports two primary output formats:

    • JSON (default): Machine-readable format, ideal for programmatic access
    • TXT: Human-readable tab-delimited text format

    Specify format by appending /json or /txt to API URLs. When format is omitted, JSON is returned by default.

    Best Practices

    1. Use RefMet for standardization: Always standardize metabolite names through RefMet before searching studies to ensure consistent nomenclature

    2. Specify appropriate adducts: When performing m/z searches, use the correct ion adduct type for your analytical method (e.g., M+H for positive mode ESI)

    3. Set reasonable tolerances: Use appropriate mass tolerance values (typically 0.5 Da for low-resolution, 0.01 Da for high-resolution MS)

    4. Cache reference data: Consider caching frequently used reference data (RefMet database, compound information) to minimize API calls

    5. Handle pagination: For large result sets, be prepared to handle multiple data structures in responses

    6. Validate identifiers: Cross-reference metabolite identifiers across multiple databases when possible to ensure correct compound identification

    Resources

    references/

    Detailed API reference documentation is available in references/api_reference.md, including:

    • Complete REST API endpoint specifications
    • All available contexts (compound, study, refmet, metstat, gene, protein, moverz)
    • Input/output parameter details
    • Ion adduct types for mass spectrometry
    • Additional query examples

    Load this reference file when detailed API specifications are needed or when working with less common endpoints.

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