about
Metabolomic profiling in multiple sclerosis: insights into biomarkers and pathogenesisRapid inflammasome activation in microglia contributes to brain disease in HIV/AIDSMetabolomics analysis identifies different metabotypes of asthma severity.Formate can differentiate between hyperhomocysteinemia due to impaired remethylation and impaired transsulfuration.Lipid mediator profile in vernix caseosa reflects skin barrier development.Development of a Liquid Chromatography-High Resolution Mass Spectrometry Metabolomics Method with High Specificity for Metabolite Identification Using All Ion Fragmentation Acquisition.Metabolomics analysis identifies sex-associated metabotypes of oxidative stress and the autotaxin-lysoPA axis in COPD.A glycolytic burst drives glucose induction of global histone acetylation by picNuA4 and SAGA.Metagenomic and metabolomic characterization of rabies encephalitis: new insights into the treatment of an ancient disease.The effect of haemolysis on the metabolomic profile of umbilical cord blood.Early Cord Metabolite Index and Outcome in Perinatal Asphyxia and Hypoxic-Ischaemic Encephalopathy.Guidelines and considerations for the use of system suitability and quality control samples in mass spectrometry assays applied in untargeted clinical metabolomic studies.1H NMR Derived Metabolomic Profile of Neonatal Asphyxia in Umbilical Cord Serum: Implications for Hypoxic Ischemic EncephalopathyUbiquinone-binding Site Mutations in theSaccharomyces cerevisiaeSuccinate Dehydrogenase Generate Superoxide and Lead to the Accumulation of SuccinateOnPLS-Based Multi-Block Data Integration: A Multivariate Approach to Interrogating Biological Interactions in AsthmaMigrating from PLS to Artificial Neural Networks - Adapting Interpretation StrategiesToward collaborative open data science in metabolomics using Jupyter Notebooks and cloud computingThe application of artificial neural networks in metabolomics: a historical perspectiveA comparative evaluation of the generalised predictive ability of eight machine learning algorithms across ten clinical metabolomics data sets for binary classificationMigrating from partial least squares discriminant analysis to artificial neural networks: a comparison of functionally equivalent visualisation and feature contribution tools using jupyter notebooks
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P50
description
researcher
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wetenschapper
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հետազոտող
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name
Stacey N Reinke
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Stacey N Reinke
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Stacey N Reinke
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Stacey N Reinke
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Stacey N Reinke
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Stacey N Reinke
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Stacey N Reinke
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Stacey N Reinke
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Stacey N. Reinke
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Stacey Reinke
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Stacey N Reinke
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Stacey N Reinke
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Stacey N Reinke
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Stacey N Reinke
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P108
P106
P1153
22136002400
P2002
StaceyReinke
P31
P496
0000-0002-0758-0330