Genome-wide meta-analysis identifies 11 new loci for anthropometric traits and provides insights into genetic architecture
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Mitochondrial genetic variants identified to be associated with BMI in adultsGenetic studies of body mass index yield new insights for obesity biologyThe Use of Multiplicity Corrections, Order Statistics and Generalized Family-Wise Statistics with Application to Genome-Wide StudiesThe bigger picture of FTO: the first GWAS-identified obesity geneThe Adapting Mind in the Genomic EraInsights into the Genetic Susceptibility to Type 2 Diabetes from Genome-Wide Association Studies of Obesity-Related TraitsObesity genetics in mouse and human: back and forth, and back againNew insights from monogenic diabetes for "common" type 2 diabetesThe genetics of major depressionPerspectives on pharmacogenomics of antiretroviral medications and HIV-associated comorbiditiesRoux-en-Y gastric bypass: effects on feeding behavior and underlying mechanismsThe association of common variants in PCSK1 with obesity: a HuGE review and meta-analysisContribution of common non-synonymous variants in PCSK1 to body mass index variation and risk of obesity: a systematic review and meta-analysis with evidence from up to 331 175 individualsComparative Analyses of QTLs Influencing Obesity and Metabolic Phenotypes in Pigs and HumansGenome-wide association study identifies novel genetic variants contributing to variation in blood metabolite levelsThe anatomical distribution of genetic associations.On the association of common and rare genetic variation influencing body mass index: a combined SNP and CNV analysisPractical issues in screening and variable selection in genome-wide association analysisMultivariate Analysis of Anthropometric Traits Using Summary Statistics of Genome-Wide Association Studies from GIANT ConsortiumA Bayesian Approach to the Overlap Analysis of Epidemiologically Linked TraitsA prospective study of height and body mass index in childhood, birth weight, and risk of adult glioma over 40 years of follow-upGene-Lifestyle Interactions in Complex Diseases: Design and Description of the GLACIER and VIKING StudiesDiscovery and Fine-Mapping of Glycaemic and Obesity-Related Trait Loci Using High-Density ImputationDISSCO: direct imputation of summary statistics allowing covariatesQuality control and conduct of genome-wide association meta-analysesWinner's Curse Correction and Variable Thresholding Improve Performance of Polygenic Risk Modeling Based on Genome-Wide Association Study Summary-Level DataGenetically Predicted Body Mass Index and Breast Cancer Risk: Mendelian Randomization Analyses of Data from 145,000 Women of European DescentIgA measurements in over 12 000 Swedish twins reveal sex differential heritability and regulatory locus near CD30L.Discovery and fine-mapping of adiposity loci using high density imputation of genome-wide association studies in individuals of African ancestry: African Ancestry Anthropometry Genetics Consortium.Mendelian randomisation implicates hyperlipidaemia as a risk factor for colorectal cancer.Genetic Regulation of Adipose Gene Expression and Cardio-Metabolic Traits.Genome-Wide Interaction with Insulin Secretion Loci Reveals Novel Loci for Type 2 Diabetes in African Americans.Assessing the genetic architecture of epithelial ovarian cancer histological subtypes.Whole-exome imputation of sequence variants identified two novel alleles associated with adult body height in African Americans.Harmonization of Neuroticism and Extraversion phenotypes across inventories and cohorts in the Genetics of Personality Consortium: an application of Item Response Theory.Federalist principles for healthcare data networksThe center for causal discovery of biomedical knowledge from big dataContribution of 32 GWAS-identified common variants to severe obesity in European adults referred for bariatric surgeryLD Hub: a centralized database and web interface to perform LD score regression that maximizes the potential of summary level GWAS data for SNP heritability and genetic correlation analysis.Mitochondrial DNA variants in obesity
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Genome-wide meta-analysis identifies 11 new loci for anthropometric traits and provides insights into genetic architecture
description
2013 թուականի Մայիսին հրատարակուած գիտական յօդուած
@hyw
2013 թվականի մայիսին հրատարակված գիտական հոդված
@hy
articolo scientifico
@it
artículu científicu espublizáu en 2013
@ast
im Mai 2013 veröffentlichter wissenschaftlicher Artikel
@de
scientific journal article
@en
wetenschappelijk artikel (gepubliceerd op 2013/05/01)
@nl
наукова стаття, опублікована в травні 2013
@uk
مقالة علمية (نشرت في مايو 2013)
@ar
name
Genome-wide meta-analysis iden ...... ghts into genetic architecture
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Genome-wide meta-analysis iden ...... ghts into genetic architecture
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type
label
Genome-wide meta-analysis iden ...... ghts into genetic architecture
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Genome-wide meta-analysis iden ...... ghts into genetic architecture
@en
prefLabel
Genome-wide meta-analysis iden ...... ghts into genetic architecture
@ast
Genome-wide meta-analysis iden ...... ghts into genetic architecture
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Genome-wide meta-analysis iden ...... ghts into genetic architecture
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Alan F. Wright
Aldi T. Kraja
Amy J. Swift
Andrew D. Morris
Andrew P. Morris
Andrew R. Wood
Anthony J. Balmforth
Antonio Liuzzi
Antony P. Attwood
Arthur W. Musk
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10.1038/NG.2606
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2013-05-01T00:00:00Z