The evolution of partial least squares models and related chemometric approaches in metabonomics and metabolic phenotyping
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Doping control using high and ultra-high resolution mass spectrometry based non-targeted metabolomics-a case study of salbutamol and budesonide abuseThe use of mass spectrometry for analysing metabolite biomarkers in epidemiology: methodological and statistical considerations for application to large numbers of biological samples.An automated Pearson's correlation change classification (APC3) approach for GC/MS metabonomic data using total ion chromatograms (TICs).Data-handling strategies for metabonomic studies: example of the UHPLC-ESI/ToF urinary signature of tetrahydrocannabinol in humans.Metabolic Profiling and Phenotyping of Central Nervous System Diseases: Metabolites Bring Insights into Brain Dysfunctions.Effect of amino acid supplementation on titer and glycosylation distribution in hybridoma cell cultures-Systems biology-based interpretation using genome-scale metabolic flux balance model and multivariate data analysis.The impact of blood on liver metabolite profiling - a combined metabolomic and proteomic approach.Introduction of a new critical p value correction method for statistical significance analysis of metabonomics data.Analytical methods in untargeted metabolomics: state of the art in 2015.Metabolomics in the developmental origins of obesity and its cardiometabolic consequences.Performance of variable selection methods using stability-based selection.Profiling the metabolome changes caused by cranberry procyanidins in plasma of female rats using (1) H NMR and UHPLC-Q-Orbitrap-HRMS global metabolomics approaches.A review of applications of metabolomics in cancer.Untargeted metabolomics approach for unraveling robust biomarkers of nutritional status in fasted gilthead sea bream (Sparus aurata).Untargeted metabolomics of colonic digests reveals kynurenine pathway metabolites, dityrosine and 3-dehydroxycarnitine as red versus white meat discriminating metabolites.Metabolome 2.0: quantitative genetics and network biology of metabolic phenotypes.Deciphering the complex: methodological overview of statistical models to derive OMICS-based biomarkers.Design and analysis of metabolomics studies in epidemiologic research: a primer on -omic technologies.Metabolomics for clinical use and research in chronic kidney disease.Comparative mass spectrometry-based metabolomics strategies for the investigation of microbial secondary metabolites.A new approach combining LC-MS and multivariate statistical analysis for revealing changes in histone modification levels.Metabolomics-on-a-chip and metabolic flux analysis for label-free modeling of the internal metabolism of HepG2/C3A cells.Metabolomics-on-a-chip of hepatotoxicity induced by anticancer drug flutamide and Its active metabolite hydroxyflutamide using HepG2/C3a microfluidic biochips.Feeding Immunity: Physiological and Behavioral Responses to Infection and Resource Limitation.Investigating sources of variability in metabolomic data in the EPIC study: the Principal Component Partial R-square (PC-PR2) methodPrediction of Biomass Production and Nutrient Uptake in Land Application Using Partial Least Squares Regression Analysis
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The evolution of partial least squares models and related chemometric approaches in metabonomics and metabolic phenotyping
description
article
@en
im November 2010 veröffentlichter wissenschaftlicher Artikel
@de
wetenschappelijk artikel
@nl
наукова стаття, опублікована в листопаді 2010
@uk
name
The evolution of partial least ...... mics and metabolic phenotyping
@en
The evolution of partial least ...... mics and metabolic phenotyping
@nl
type
label
The evolution of partial least ...... mics and metabolic phenotyping
@en
The evolution of partial least ...... mics and metabolic phenotyping
@nl
prefLabel
The evolution of partial least ...... mics and metabolic phenotyping
@en
The evolution of partial least ...... mics and metabolic phenotyping
@nl
P2093
P2860
P356
P1476
The evolution of partial least ...... mics and metabolic phenotyping
@en
P2093
Claire L. Boulange
Elaine Holmes
Jeremy K. Nicholson
Judith M. Fonville
Selena E. Richards
Timothy M. D. Ebbels
P2860
P304
P356
10.1002/CEM.1359
P577
2010-11-01T00:00:00Z