Application of metabolomics to plant genotype discrimination using statistics and machine learning.
about
Environmental health research in the post-genome era: new fields, new challenges, and new opportunitiesBiomarker metabolites capturing the metabolite variance present in a rice plant developmental periodSpectral deconvolution for gas chromatography mass spectrometry-based metabolomics: current status and future perspectivesA bioinformatician's view of the metabolomeBreath analysis as a potential and non-invasive frontier in disease diagnosis: an overviewFatty acid and metabolomic profiling approaches differentiate heterotrophic and mixotrophic culture conditions in a microalgal food supplement 'Euglena'Mass-spectrometry-based metabolomics: limitations and recommendations for future progress with particular focus on nutrition researchMass spectrometry in plant metabolomics strategies: from analytical platforms to data acquisition and processing.A novel approach for nontargeted data analysis for metabolomics. Large-scale profiling of tomato fruit volatiles.Strategies for Comparing Metabolic Profiles: Implications for the Inference of Biochemical Mechanisms from Metabolomics Data.Identification of biomarkers for genotyping Aspergilli using non-linear methods for clustering and classificationDealing with the unknown: metabolomics and metabolite atlases.Functional genomics via metabolic footprinting: monitoring metabolite secretion by Escherichia coli tryptophan metabolism mutants using FT-IR and direct injection electrospray mass spectrometry.Knowledge discovery in metabolomics: an overview of MS data handling.Metabolic profiling of Escherichia coli by ion mobility-mass spectrometry with MALDI ion sourceHierarchical metabolomics demonstrates substantial compositional similarity between genetically modified and conventional potato cropsA metabonomic approach to analyze the dexamethasone-induced cleft palate in mice.Mass spectrometry-based metabolomics, analysis of metabolite-protein interactions, and imaging.Metabolic Profiling of Human Blood by High Resolution Ion Mobility Mass Spectrometry (IM-MS).Perioperative dynamics and significance of amino acid profiles in patients with cancer.Metabolic fingerprinting of Arabidopsis thaliana accessions.Measuring the metabolome: current analytical technologies.Microbial metabolomics: replacing trial-and-error by the unbiased selection and ranking of targets.A survey of the methods for the characterization of microbial consortia and communities.Integrating metabolomics into a systems biology framework to exploit metabolic complexity: strategies and applications in microorganisms.Metabolic profiling reveals therapeutic effects of Herba Cistanches in an animal model of hydrocortisone-induced 'kidney-deficiency syndrome'.Physiological and molecular adaptations to drought in Andean potato genotypesMetabolomic technologies and their application to the study of plants and plant-host interactions.Plant metabolomics reveals conserved and divergent metabolic responses to salinity.Metabonomics Research Progress on Liver Diseases.Rapid diagnosis of TB using GC-MS and chemometrics.Targeted metabolomics of Gammarus pulex following controlled exposures to selected pharmaceuticals in waterWater stress and recovery in the performance of two Eucalyptus globulus clones: physiological and biochemical profiles.Constructing phylogenetic trees using interacting pathways.Multivariate strategy for the sample selection and integration of multi-batch data in metabolomics.Ultra-performance LC/TOF MS analysis of medicinal Panax herbs for metabolomic research.Discrimination of multi-origin chinese herbal medicines using gas chromatography-mass spectrometry-based fatty acid profiling.A metabolomic analysis of the toxicity of Aconitum sp. alkaloids in rats using gas chromatography/mass spectrometry.Enhancement of cadmium tolerance and accumulation by introducing Perilla frutescens (L.) Britt var. frutescens genes in Nicotiana tabacum L. plants.Discrimination and prediction of cultivation age and parts of Panax ginseng by Fourier-transform infrared spectroscopy combined with multivariate statistical analysis.
P2860
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P2860
Application of metabolomics to plant genotype discrimination using statistics and machine learning.
description
2002 nî lūn-bûn
@nan
2002年の論文
@ja
2002年学术文章
@wuu
2002年学术文章
@zh
2002年学术文章
@zh-cn
2002年学术文章
@zh-hans
2002年学术文章
@zh-my
2002年学术文章
@zh-sg
2002年學術文章
@yue
2002年學術文章
@zh-hant
name
Application of metabolomics to ...... atistics and machine learning.
@en
Application of metabolomics to ...... atistics and machine learning.
@nl
type
label
Application of metabolomics to ...... atistics and machine learning.
@en
Application of metabolomics to ...... atistics and machine learning.
@nl
prefLabel
Application of metabolomics to ...... atistics and machine learning.
@en
Application of metabolomics to ...... atistics and machine learning.
@nl
P2093
P356
P1433
P1476
Application of metabolomics to ...... atistics and machine learning.
@en
P2093
Janet Taylor
Ross D King
Thomas Altmann
P304
P356
10.1093/BIOINFORMATICS/18.SUPPL_2.S241
P407
P478
18 Suppl 2
P50
P577
2002-01-01T00:00:00Z