Using ProtMAX to create high-mass-accuracy precursor alignments from label-free quantitative mass spectrometry data generated in shotgun proteomics experiments
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Pollen proteomics: from stress physiology to developmental primingMetabolism and development - integration of micro computed tomography data and metabolite profiling reveals metabolic reprogramming from floral initiation to silique developmentPhosphoproteomics in the Age of Rapid and Deep Proteome Profiling.Drought and Recovery: Independently Regulated Processes Highlighting the Importance of Protein Turnover Dynamics and Translational Regulation in Medicago truncatula.Leghemoglobin is nitrated in functional legume nodules in a tyrosine residue within the heme cavity by a nitrite/peroxide-dependent mechanism.MZDASoft: a software architecture that enables large-scale comparison of protein expression levels over multiple samples based on liquid chromatography/tandem mass spectrometryProteomic Profiling of the Microsomal Root Fraction: Discrimination of Pisum sativum L. Cultivars and Identification of Putative Root Growth Markers.Dataset of UV induced changes in nuclear proteome obtained by GeLC-Orbitrap/MS in Pinus radiata needles.Quantitative phosphoproteomics reveals the role of the AMPK plant ortholog SnRK1 as a metabolic master regulator under energy deprivation.Rhizobium Impacts on Seed Productivity, Quality, and Protection of Pisum sativum upon Disease Stress Caused by Didymella pinodes: Phenotypic, Proteomic, and Metabolomic Traits.Eco-Metabolomics and Metabolic Modeling: Making the Leap From Model Systems in the Lab to Native Populations in the Field
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P2860
Using ProtMAX to create high-mass-accuracy precursor alignments from label-free quantitative mass spectrometry data generated in shotgun proteomics experiments
description
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2013 թվականի մարտին հրատարակված գիտական հոդված
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2013年の論文
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2013年論文
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2013年論文
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2013年論文
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2013年论文
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name
Using ProtMAX to create high-m ...... shotgun proteomics experiments
@ast
Using ProtMAX to create high-m ...... shotgun proteomics experiments
@en
Using ProtMAX to create high-m ...... shotgun proteomics experiments
@nl
type
label
Using ProtMAX to create high-m ...... shotgun proteomics experiments
@ast
Using ProtMAX to create high-m ...... shotgun proteomics experiments
@en
Using ProtMAX to create high-m ...... shotgun proteomics experiments
@nl
prefLabel
Using ProtMAX to create high-m ...... shotgun proteomics experiments
@ast
Using ProtMAX to create high-m ...... shotgun proteomics experiments
@en
Using ProtMAX to create high-m ...... shotgun proteomics experiments
@nl
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Using ProtMAX to create high-m ...... shotgun proteomics experiments
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10.1038/NPROT.2013.013
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2013-03-01T00:00:00Z
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1039954637