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차등 대사체학 분석×머신러닝 보조 대사체학 분석×
분야생물정보학생물정보학
계열Process / pipelineProcess / pipeline
기원 연도2000s–2010s (field formalised alongside mass spectrometry advances)2000s–2010s (rapid adoption 2015–present)
창시자Developed through convergent contributions by multiple groups; XCMS (Siuzdak lab, 2006) and MetaboAnalyst (Wishart lab, 2009–2015) are foundational computational implementationsConvergent development; foundational reviews by Liebal et al. (2020) and earlier multivariate metabolomics work by Trygg, Holmes, and Nicholson
유형Quantitative comparative omics pipelineIntegrative analytical pipeline
원전Xia, J., Sinelnikov, I. V., Han, B., & Wishart, D. S. (2015). MetaboAnalyst 3.0 — making metabolomics more meaningful. Nucleic Acids Research, 43(W1), W251–W257. link ↗Liebal, U. W., Phan, A. N. T., Sudhakar, M., Raman, K., & Blank, L. M. (2020). Machine learning applications for mass spectrometry-based metabolomics. Metabolites, 10(6), 243. DOI ↗
별칭comparative metabolomics, differential metabolite profiling, metabolomic differential analysis, DMAML-metabolomics, chemoinformatics ML, metabolite profiling with machine learning, ML-driven metabolic profiling
관련61
요약Differential metabolomics analysis is a computational pipeline that identifies metabolites whose abundance levels differ significantly between two or more biological conditions — such as disease versus control, treated versus untreated, or different developmental stages. By integrating mass spectrometry or NMR data with statistical modelling and pathway databases, it translates raw spectral measurements into biologically interpretable lists of perturbed metabolic features and the pathways they implicate.Machine learning-assisted metabolomics analysis is an integrative bioinformatics pipeline that couples untargeted or targeted metabolite profiling — via mass spectrometry or NMR — with supervised and unsupervised ML algorithms to discover biomarkers, classify phenotypes, and model metabolic states. By handling the extreme dimensionality and collinearity inherent in metabolomics datasets (hundreds to thousands of features, tens to hundreds of samples), ML methods such as random forests, support vector machines, and neural networks extract biologically interpretable patterns that classical univariate statistics routinely miss.
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ScholarGate방법 비교: Differential Metabolomics Analysis · Machine learning-assisted metabolomics analysis. 2026-06-18에 다음에서 검색함: https://scholargate.app/ko/compare