Quantitative variability of 342 plasma proteins in a human twin population.
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The Role of Proteomics in Biomarker Development for Improved Patient Diagnosis and Clinical Decision Making in Prostate CancerTechnical advances in proteomics: new developments in data-independent acquisitionAutoimmune diseases - connecting risk alleles with molecular traits of the immune system.Advances in mass spectrometry-based clinical biomarker discoveryApplications of targeted proteomics in systems biology and translational medicineOpenMS: a flexible open-source software platform for mass spectrometry data analysisAn open-source computational and data resource to analyze digital maps of immunopeptidomesSolvent interaction analysis as a proteomic approach to structure-based biomarker discovery and clinical diagnostics.Reproducible quantitative proteotype data matrices for systems biology.High-precision iRT prediction in the targeted analysis of data-independent acquisition and its impact on identification and quantitation.Untargeted, spectral library-free analysis of data-independent acquisition proteomics data generated using Orbitrap mass spectrometers.Generation of High-Quality SWATH® Acquisition Data for Label-free Quantitative Proteomics Studies Using TripleTOF® Mass Spectrometers.Identification of novel biomarker and therapeutic target candidates for acute intracerebral hemorrhage by quantitative plasma proteomics.A Class of Environmental and Endogenous Toxins Induces BRCA2 Haploinsufficiency and Genome Instability.Heritability and responses to high fat diet of plasma lipidomics in a twin study.Large-scale inference of protein tissue origin in gram-positive sepsis plasma using quantitative targeted proteomics.Proteomics reveals the effects of sustained weight loss on the human plasma proteomeQuantitative Proteomics Based on Optimized Data-Independent Acquisition in Plasma Analysis.SWATH-MS as a tool for biomarker discovery - from basic research to clinical applications.Quantitative Age-specific Variability of Plasma Proteins in Healthy Neonates, Children and Adults.Clinical applications of quantitative proteomics using targeted and untargeted data-independent acquisition techniques.Inference and quantification of peptidoforms in large sample cohorts by SWATH-MS.Immunocapture strategies in translational proteomics.Signatures of Evolutionary Adaptation in Quantitative Trait Loci Influencing Trace Element Homeostasis in Liver.Analysis of Major Histocompatibility Complex (MHC) Immunopeptidomes Using Mass Spectrometry.SWATH Mass Spectrometry Performance Using Extended Peptide MS/MS Assay Libraries.Associations Between Common and Rare Exonic Genetic Variants and Serum Levels of 20 Cardiovascular-Related Proteins: The Tromsø Study.TRIC: an automated alignment strategy for reproducible protein quantification in targeted proteomicsProteome-wide association studies identify biochemical modules associated with a wing-size phenotype in Drosophila melanogasterPlasma Protein Timings: Relative Contributions of Storage Time, Donor Age and Donation Season.Connecting genetic risk to disease end points through the human blood plasma proteomeImproving Protein Detection Confidence Using SWATH Mass Spectrometry with Large Peptide Reference Libraries.Comparison of fractionation proteomics for local SWATH library buildingMulti-laboratory assessment of reproducibility, qualitative and quantitative performance of SWATH-mass spectrometry.Statistical control of peptide and protein error rates in large-scale targeted data-independent acquisition analyses.Enhanced differential expression statistics for data-independent acquisition proteomics.Quantitative proteomics: challenges and opportunities in basic and applied research.SWATH Mass Spectrometry for Proteomics of Non-Depleted Plasma.Clinical applications of MS-based protein quantification.Cancer associated proteins in blood plasma: Determining normal variation.
P2860
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P2860
Quantitative variability of 342 plasma proteins in a human twin population.
description
2015 nî lūn-bûn
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2015 թուականի Յունուարին հրատարակուած գիտական յօդուած
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2015 թվականի հունվարին հրատարակված գիտական հոդված
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2015年の論文
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2015年学术文章
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2015年学术文章
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2015年学术文章
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2015年学术文章
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2015年学术文章
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2015年學術文章
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name
Quantitative variability of 342 plasma proteins in a human twin population.
@ast
Quantitative variability of 342 plasma proteins in a human twin population.
@en
type
label
Quantitative variability of 342 plasma proteins in a human twin population.
@ast
Quantitative variability of 342 plasma proteins in a human twin population.
@en
prefLabel
Quantitative variability of 342 plasma proteins in a human twin population.
@ast
Quantitative variability of 342 plasma proteins in a human twin population.
@en
P2093
P2860
P50
P356
P1476
Quantitative variability of 342 plasma proteins in a human twin population.
@en
P2093
Emmanouil T Dermitzakis
Genevieve Lachance
Jeppe Mouritsen
Lin-Yang Cheng
Lorenz C Blum
Ludovic C J Gillet
Olga Vitek
Tim D Spector
P2860
P356
10.15252/MSB.20145728
P577
2015-01-01T00:00:00Z