about
Integrative analysis of the mitochondrial proteome in yeastA transcriptional profile of aging in the human kidneySignificance analysis of time course microarray experiments.Genomic responses in mouse models poorly mimic human inflammatory diseasesQuantitative proteome analysis of human plasma following in vivo lipopolysaccharide administration using 16O/18O labeling and the accurate mass and time tag approach.Involvement of skeletal muscle gene regulatory network in susceptibility to wound infection following trauma.A dynamic network of transcription in LPS-treated human subjects.Knowledge-based analysis of microarrays for the discovery of transcriptional regulation relationshipsAnalysis of factorial time-course microarrays with application to a clinical study of burn injury.Profiling early infection responses: Pseudomonas aeruginosa eludes host defenses by suppressing antimicrobial peptide gene expression.Shotgun proteomics identifies proteins specific for acute renal transplant rejection.Distinctive responsiveness to stromal signaling accompanies histologic grade programming of cancer cellsChanges in DnaA-dependent gene expression contribute to the transcriptional and developmental response of Bacillus subtilis to manganese limitation in Luria-Bertani medium.Plasma proteome response to severe burn injury revealed by 18O-labeled "universal" reference-based quantitative proteomicsHuman transcriptome array for high-throughput clinical studies.Cell-specific expression and pathway analyses reveal alterations in trauma-related human T cell and monocyte pathways.The Drosophila melanogaster toll pathway participates in resistance to infection by the gram-negative human pathogen Pseudomonas aeruginosa.Comparative proteome analyses of human plasma following in vivo lipopolysaccharide administration using multidimensional separations coupled with tandem mass spectrometry.High dynamic range characterization of the trauma patient plasma proteomeA genomic storm in critically injured humansBenchmarking outcomes in the critically injured trauma patient and the effect of implementing standard operating procedures.Development of a genomic metric that can be rapidly used to predict clinical outcome in severely injured trauma patients.Isolating highly enriched populations of circulating epithelial cells and other rare cells from blood using a magnetic sweeper deviceLarge-scale multiplexed quantitative discovery proteomics enabled by the use of an (18)O-labeled "universal" reference sampleA peripheral blood diagnostic test for acute rejection in renal transplantation.The neuronal t-SNARE complex is a parallel four-helix bundle.Global analysis of the membrane subproteome of Pseudomonas aeruginosa using liquid chromatography-tandem mass spectrometry.Light-induced rotation of a transmembrane alpha-helix in bacteriorhodopsin.Transient channel-opening in bacteriorhodopsin: an EPR study.Ultra-high-efficiency strong cation exchange LC/RPLC/MS/MS for high dynamic range characterization of the human plasma proteome.Interference of globin genes with biomarker discovery for allograft rejection in peripheral blood samples.Comparison of longitudinal leukocyte gene expression after burn injury or trauma-hemorrhage in mice.Commonality and differences in leukocyte gene expression patterns among three models of inflammation and injury.Erratum: Corrigendum: A network-based analysis of systemic inflammation in humansWhole blood and leukocyte RNA isolation for gene expression analyses
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P50
description
onderzoeker
@nl
researcher
@en
հետազոտող
@hy
name
Wenzhong Xiao
@ast
Wenzhong Xiao
@en
Wenzhong Xiao
@es
Wenzhong Xiao
@nl
type
label
Wenzhong Xiao
@ast
Wenzhong Xiao
@en
Wenzhong Xiao
@es
Wenzhong Xiao
@nl
prefLabel
Wenzhong Xiao
@ast
Wenzhong Xiao
@en
Wenzhong Xiao
@es
Wenzhong Xiao
@nl
P106
P1153
7202456499
P21
P31
P496
0000-0003-4944-6380