pymzML--Python module for high-throughput bioinformatics on mass spectrometry data
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A tutorial for software development in quantitative proteomics using PSI standard formatsPyPedia: using the wiki paradigm as crowd sourcing environment for bioinformatics protocolsDeciphering the cryptic genome: genome-wide analyses of the rice pathogen Fusarium fujikuroi reveal complex regulation of secondary metabolism and novel metabolitesFast and Efficient XML Data Access for Next-Generation Mass SpectrometryOpen source libraries and frameworks for mass spectrometry based proteomics: a developer's perspectivePyteomics--a Python framework for exploratory data analysis and rapid software prototyping in proteomics.DeMix workflow for efficient identification of cofragmented peptides in high resolution data-dependent tandem mass spectrometry.Comparative transcriptome and proteome analysis reveals a global impact of the nitrogen regulators AreA and AreB on secondary metabolism in Fusarium fujikuroiReal-time digitization of metabolomics patterns from a living system using mass spectrometry.Efficient visualization of high-throughput targeted proteomics experiments: TAPIR.The metabolic status drives acclimation of iron deficiency responses in Chlamydomonas reinhardtii as revealed by proteomics based hierarchical clustering and reverse geneticsSelf-Assembly and Anti-Amyloid Cytotoxicity Activity of Amyloid beta Peptide Derivatives.multiplierz v2.0: A Python-based ecosystem for shared access and analysis of native mass spectrometry data.pyOpenMS: a Python-based interface to the OpenMS mass-spectrometry algorithm library.The interplay of light and oxygen in the reactive oxygen stress response of Chlamydomonas reinhardtii dissected by quantitative mass spectrometry.PECAN: library-free peptide detection for data-independent acquisition tandem mass spectrometry data.pyQms enables universal and accurate quantification of mass spectrometry data.Automated LC-HRMS(/MS) approach for the annotation of fragment ions derived from stable isotope labeling-assisted untargeted metabolomics.The Vac14-interaction network is linked to regulators of the endolysosomal and autophagic pathway.Unraveling the Composition and Behavior of Heterogeneous Lipid Nanodiscs by Mass SpectrometryStatistical Examination of the a and a + 1 Fragment Ions from 193 nm Ultraviolet Photodissociation Reveals Local Hydrogen Bonding Interactions.Characterization of five subgroups of the sieve element occlusion gene family in Glycine max reveals genes encoding non-forisome P-proteins, forisomes and forisome tails.LPPtiger software for lipidome-specific prediction and identification of oxidized phospholipids from LC-MS datasets.N-Glycoproteomic characterization of mannosidase and xylotransferase Mutant Strains of Chlamydomonas.Automating data analysis for two-dimensional gas chromatography/time-of-flight mass spectrometry non-targeted analysis of comparative samples.Proton Gradient Regulation5-Like1-Mediated Cyclic Electron Flow Is Crucial for Acclimation to Anoxia and Complementary to Nonphotochemical Quenching in Stress Adaptation.xiSPEC: web-based visualization, analysis and sharing of proteomics data.Software for Peak Finding and Elemental Composition Assignment for Glycosaminoglycan Tandem Mass SpectraNano LC-MS using capillary columns enables accurate quantification of modified ribonucleosides at low femtomol levels
P2860
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P2860
pymzML--Python module for high-throughput bioinformatics on mass spectrometry data
description
2012 nî lūn-bûn
@nan
2012 թուականի Ապրիլին հրատարակուած գիտական յօդուած
@hyw
2012 թվականի ապրիլին հրատարակված գիտական հոդված
@hy
2012年の論文
@ja
2012年論文
@yue
2012年論文
@zh-hant
2012年論文
@zh-hk
2012年論文
@zh-mo
2012年論文
@zh-tw
2012年论文
@wuu
name
pymzML--Python module for high-throughput bioinformatics on mass spectrometry data
@ast
pymzML--Python module for high-throughput bioinformatics on mass spectrometry data
@en
pymzML--Python module for high-throughput bioinformatics on mass spectrometry data
@nl
type
label
pymzML--Python module for high-throughput bioinformatics on mass spectrometry data
@ast
pymzML--Python module for high-throughput bioinformatics on mass spectrometry data
@en
pymzML--Python module for high-throughput bioinformatics on mass spectrometry data
@nl
prefLabel
pymzML--Python module for high-throughput bioinformatics on mass spectrometry data
@ast
pymzML--Python module for high-throughput bioinformatics on mass spectrometry data
@en
pymzML--Python module for high-throughput bioinformatics on mass spectrometry data
@nl
P2093
P50
P356
P1433
P1476
pymzML--Python module for high-throughput bioinformatics on mass spectrometry data
@en
P2093
Johannes Barth
Michael Hippler
Michael Specht
P304
P356
10.1093/BIOINFORMATICS/BTS066
P407
P577
2012-04-01T00:00:00Z