about
In-silico human genomics with GeneCardsRisk assessment and communication tools for genotype associations with multifactorial phenotypes: the concept of "edge effect" and cultivating an ethical bridge between omics innovations and societyTranscriptome analysis of Escherichia coli using high-density oligonucleotide probe arrays'Omics data sharingMOPED: Model Organism Protein Expression DatabaseThe promise of multi-omics and clinical data integration to identify and target personalized healthcare approaches in autism spectrum disordersA statistical model for identifying proteins by tandem mass spectrometryEmpirical statistical model to estimate the accuracy of peptide identifications made by MS/MS and database searchThe minimum information about a genome sequence (MIGS) specificationMOPED 2.5--an integrated multi-omics resource: multi-omics profiling expression database now includes transcriptomics dataMetadata checklist for the integrated personal OMICS study: proteomics and metabolomics experimentsToward more transparent and reproducible omics studies through a common metadata checklist and data publicationsDesigning a post-genomics knowledge ecosystem to translate pharmacogenomics into public health actionTowards an Ecology of Collective Innovation: Human Variome Project (HVP), Rare Disease Consortium for Autosomal Loci (RaDiCAL) and Data-Enabled Life Sciences Alliance (DELSA)Opportunities and challenges for the life sciences communityMeeting Report from the Genomic Standards Consortium (GSC) Workshop 9New metrics for comparative genomicsPromoting coherent minimum reporting guidelines for biological and biomedical investigations: the MIBBI projectReady to put metadata on the post-2015 development agenda? Linking data publications to responsible innovation and science diplomacy.Host airway proteins interact with Staphylococcus aureus during early pneumoniaToward a standards-compliant genomic and metagenomic publication record.Staphylococcus aureus elicits marked alterations in the airway proteome during early pneumonia.Interplay of heritage and habitat in the distribution of bacterial signal transduction systemsSpectral analysis of distributions: finding periodic components in eukaryotic enzyme length data.MOPED enables discoveries through consistently processed proteomics data.Big data and ethics review for health systems research in LMICs: understanding risk, uncertainty and ignorance -- and catching the black swans?Integrative analysis of longitudinal metabolomics data from a personal multi-omics profileHealth Care Transformation: A Strategy Rooted in Data and Analytics.Precision Nutrition 4.0: A Big Data and Ethics Foresight Analysis--Convergence of Agrigenomics, Nutrigenomics, Nutriproteomics, and Nutrimetabolomics.Unraveling the Complexities of Life Sciences Data.Introducing a Metadata Checklist for Omics Data.Toward More Transparent and Reproducible Omics Studies Through a Common Metadata Checklist and Data Publications.Spectral quality assessment for high-throughput tandem mass spectrometry proteomics.Statistical analysis of global gene expression data: some practical considerations.Charge state estimation for tandem mass spectrometry proteomics.Meta-analysis for protein identification: a case study on yeast dataThe United States of America and scientific researchGlobal profiling of Shewanella oneidensis MR-1: expression of hypothetical genes and improved functional annotations.Bioinformatics and data-intensive scientific discovery in the beginning of the 21st century.Technology and data-intensive science in the beginning of the 21st century.
P50
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P50
description
onderzoeker
@nl
name
Eugene Kolker
@ast
Eugene Kolker
@en
Eugene Kolker
@es
Eugene Kolker
@nl
Eugene Kolker
@sl
type
label
Eugene Kolker
@ast
Eugene Kolker
@en
Eugene Kolker
@es
Eugene Kolker
@nl
Eugene Kolker
@sl
prefLabel
Eugene Kolker
@ast
Eugene Kolker
@en
Eugene Kolker
@es
Eugene Kolker
@nl
Eugene Kolker
@sl
P106
P21
P31
P569
2000-01-01T00:00:00Z