Supervised Learning for Biological Classification
Supervised learning trains models on labeled data to classify biological samples, predict disease outcomes, and annotate genomic elements.
Machine LearningGC-MS Metabolomics: Gas Chromatography-Mass Spectrometry
GC-MS metabolomics combines gas chromatography with mass spectrometry for analyzing volatile and derivatized metabolites.
MetabolomicsLC-MS Metabolomics: Liquid Chromatography-Mass Spectrometry
LC-MS metabolomics couples liquid chromatography separation with mass spectrometry detection for broad metabolite coverage.
MetabolomicsLipidomics: Comprehensive Lipid Analysis
Lipidomics systematically identifies and quantifies cellular lipids to understand their roles in membrane structure, signaling, and energy storage.
MetabolomicsMetabolic Pathway Analysis: Mapping Metabolite Data
Metabolic pathway analysis maps metabolomics data onto biochemical pathways to identify perturbed processes and regulatory nodes.
MetabolomicsMetabolic Profiling: An Overview
Metabolic profiling comprehensively measures small-molecule metabolites in biological systems to understand cellular metabolism.
MetabolomicsMetabolite Identification: From Spectra to Structures
Metabolite identification uses mass spectra and NMR data to determine the chemical structure of unknown metabolites.
MetabolomicsNMR Metabolomics: Nuclear Magnetic Resonance Spectroscopy
NMR metabolomics uses nuclear magnetic resonance spectroscopy for quantitative, non-destructive analysis of metabolites.
MetabolomicsTargeted Metabolomics: Quantitative Metabolite Analysis
Targeted metabolomics quantifies predefined sets of metabolites with high specificity using standard curves and internal standards.
Metabolomics