Genome-wide meta-analysis identifies regions on 7p21 (AHR) and 15q24 (CYP1A2) as determinants of habitual caffeine consumption
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Fast association tests for genes with FASTLong-Term Coffee Consumption and Risk of Gastric Cancer: A PRISMA-Compliant Dose-Response Meta-Analysis of Prospective Cohort StudiesDevelopments in renal pharmacogenomics and applications in chronic kidney diseaseDo initial responses to drugs predict future use or abuse?Coffee consumption and incidence of lung cancer in the NIH-AARP Diet and Health StudyNon-additive genome-wide association scan reveals a new gene associated with habitual coffee consumptionPhenotype refinement strengthens the association of AHR and CYP1A1 genotype with caffeine consumptionGenome-wide meta-analysis identifies six novel loci associated with habitual coffee consumption.Habitual coffee consumption and genetic predisposition to obesity: gene-diet interaction analyses in three US prospective studies.Sugar-sweetened beverages and genetic risk of obesity.Pharmacogenomics of drug-metabolizing enzymes: a recent update on clinical implications and endogenous effects.Genetic predisposition to higher body mass index or type 2 diabetes and leukocyte telomere length in the Nurses' Health Study.Human bitter perception correlates with bitter receptor messenger RNA expression in taste cells.Long-term coffee consumption and risk of cardiovascular disease: a systematic review and a dose-response meta-analysis of prospective cohort studiesSystems Epidemiology: A New Direction in Nutrition and Metabolic Disease ResearchDisclosure of genetic information and change in dietary intake: a randomized controlled trial.Measles contributes to rheumatoid arthritis: evidence from pathway and network analyses of genome-wide association studies.Examining the role of common genetic variants on alcohol, tobacco, cannabis and illicit drug dependence: genetics of vulnerability to drug dependenceAssociation analysis of bitter receptor genes in five isolated populations identifies a significant correlation between TAS2R43 variants and coffee liking.Revisiting Mendelian randomization studies of the effect of body mass index on depressionGene Silencing and Haploinsufficiency of Csk Increase Blood PressureG = E: What GWAS Can Tell Us about the EnvironmentPharmGKB summary: very important pharmacogene information for CYP1A2.DNA Methylation Variants at HIF3A Locus, B-Vitamin Intake, and Long-term Weight Change: Gene-Diet Interactions in Two U.S. Cohorts.PharmGKB summary: caffeine pathway.Caffeine Consumption Contributes to Skin Intrinsic Fluorescence in Type 1 DiabetesInsulin clearance: confirmation as a highly heritable trait, and genome-wide linkage analysis.Top Three Pharmacogenomics and Personalized Medicine Applications at the Nexus of Renal Pathophysiology and Cardiovascular Medicine.Genome-wide association analysis of coffee drinking suggests association with CYP1A1/CYP1A2 and NRCAMOxytocin receptor (OXTR) is not associated with optimism in the Nurses' Health Study.The case-only test for gene-environment interaction is not uniformly powerful: an empirical exampleTelevision watching, leisure time physical activity, and the genetic predisposition in relation to body mass index in women and men.Lack of gene-diuretic interactions on the risk of incident gout: the Nurses' Health Study and Health Professionals Follow-up Study.GWAS of human bitter taste perception identifies new loci and reveals additional complexity of bitter taste genetics.Obesity susceptibility loci and uncontrolled eating, emotional eating and cognitive restraint behaviors in men and women.Are genetic variations in OXTR, AVPR1A, and CD38 genes important to social integration? Results from two large U.S. cohorts.Selecting instruments for Mendelian randomization in the wake of genome-wide association studies.Habitual coffee consumption and risk of type 2 diabetes, ischemic heart disease, depression and Alzheimer's disease: a Mendelian randomization studyFried food consumption, genetic risk, and body mass index: gene-diet interaction analysis in three US cohort studies.Genome-wide polygenic scoring for a 14-year long-term average depression phenotype.
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P2860
Genome-wide meta-analysis identifies regions on 7p21 (AHR) and 15q24 (CYP1A2) as determinants of habitual caffeine consumption
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2011 nî lūn-bûn
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2011 թուականի Ապրիլին հրատարակուած գիտական յօդուած
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2011 թվականի ապրիլին հրատարակված գիտական հոդված
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2011年の論文
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2011年論文
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2011年論文
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2011年論文
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2011年論文
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2011年論文
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2011年论文
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name
Genome-wide meta-analysis iden ...... habitual caffeine consumption
@ast
Genome-wide meta-analysis iden ...... habitual caffeine consumption
@en
Genome-wide meta-analysis iden ...... habitual caffeine consumption
@en-gb
Genome-wide meta-analysis iden ...... habitual caffeine consumption
@nl
type
label
Genome-wide meta-analysis iden ...... habitual caffeine consumption
@ast
Genome-wide meta-analysis iden ...... habitual caffeine consumption
@en
Genome-wide meta-analysis iden ...... habitual caffeine consumption
@en-gb
Genome-wide meta-analysis iden ...... habitual caffeine consumption
@nl
altLabel
Genome-Wide Meta-Analysis Iden ...... Habitual Caffeine Consumption
@en
prefLabel
Genome-wide meta-analysis iden ...... habitual caffeine consumption
@ast
Genome-wide meta-analysis iden ...... habitual caffeine consumption
@en
Genome-wide meta-analysis iden ...... habitual caffeine consumption
@en-gb
Genome-wide meta-analysis iden ...... habitual caffeine consumption
@nl
P2093
P2860
P50
P3181
P1433
P1476
Genome-wide meta-analysis iden ...... habitual caffeine consumption
@en
P2093
Daniel I Chasman
David Couper
Elizabeth M Azzato
Gary Curhan
Jennifer A Nettleton
Keri L Monda
Lynda M Rose
Marilyn C Cornelis
P2860
P304
P3181
P356
10.1371/JOURNAL.PGEN.1002033
P407
P50
P577
2011-04-01T00:00:00Z