about
A practical comparison of de novo genome assembly software tools for next-generation sequencing technologiesComparison of Prognostic MicroRNA Biomarkers in Blood and Tissues for Gastric CancerCharacterization of CA XIII, a novel member of the carbonic anhydrase isozyme familyOrigination of new immunological functions in the costimulatory molecule B7-H3: the role of exon duplication in evolution of the immune systemSVR_CAF: an integrated score function for detecting native protein structures among decoys.Residue interaction network analysis of Dronpa and a DNA clamp.The construction of an amino acid network for understanding protein structure and function.Amino acid contact energy networks impact protein structure and evolution.Amino acid network for prediction of catalytic residues in enzymes: a comparison survey.Evaluation and comparison of multiple aligners for next-generation sequencing data analysis.Biomedical data integration, modeling, and simulation in the era of big data and translational medicineDiscovery and characterization of long intergenic non-coding RNAs (lincRNA) module biomarkers in prostate cancer: an integrative analysis of RNA-Seq dataLIMS and Clinical Data Management.Segmentation of neuronal structures using SARSA (λ)-based boundary amendment with reinforced gradient-descent curve shape fitting.Identification of candidate miRNA biomarkers from miRNA regulatory network with application to prostate cancer.Systematic investigation of global coordination among mRNA and protein in cellular society.Post genome-wide association studies functional characterization of prostate cancer risk loci.Identifying novel prostate cancer associated pathways based on integrative microarray data analysis.Integrative analysis reveals disease-associated genes and biomarkers for prostate cancer progression.Performance comparison and evaluation of software tools for microRNA deep-sequencing data analysisInvestigation of the acetylation mechanism by GCN5 histone acetyltransferase.Key regulators in prostate cancer identified by co-expression module analysisDiagnosis value of the serum amyloid A test in neonatal sepsis: a meta-analysis.Identification of novel microRNA regulatory pathways associated with heterogeneous prostate cancer.Identifying novel glioma associated pathways based on systems biology level meta-analysisVirtual screening and biological evaluation of novel small molecular inhibitors against protein arginine methyltransferase 1 (PRMT1).PON-Sol: prediction of effects of amino acid substitutions on protein solubility.New genes drive the evolution of gene interaction networks in the human and mouse genomesInvestigating cellular network heterogeneity and modularity in cancer: a network entropy and unbalanced motif approachNetwork modelling reveals the mechanism underlying colitis-associated colon cancer and identifies novel combinatorial anti-cancer targets.Computational Analysis of the Binding Specificities of PH Domains.Screening key microRNAs for castration-resistant prostate cancer based on miRNA/mRNA functional synergistic network.Novel Biomarker MicroRNAs for Subtyping of Acute Coronary Syndrome: A Bioinformatics Approach.Biomedical text mining and its applications in cancer research.The topology and dynamics of protein complexes: insights from intra- molecular network theory.Deciphering oncogenic drivers: from single genes to integrated pathways.Computational analysis of microRNA function in heart development.Identification of microRNA as sepsis biomarker based on miRNAs regulatory network analysis.An integrated text mining framework for metabolic interaction network reconstruction.A novel mutation in CD40 and its functional characterization.
P50
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P50
description
onderzoeker
@nl
researcher
@en
հետազոտող
@hy
name
Bairong Shen
@ast
Bairong Shen
@en
Bairong Shen
@es
Bairong Shen
@nl
type
label
Bairong Shen
@ast
Bairong Shen
@en
Bairong Shen
@es
Bairong Shen
@nl
prefLabel
Bairong Shen
@ast
Bairong Shen
@en
Bairong Shen
@es
Bairong Shen
@nl
P106
P2456
P31
P496
0000-0003-2899-1531