Determinants of the success of whole-genome association testing.
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Genome-wide association with bone mass and geometry in the Framingham Heart StudyA genome-wide association study implicates diacylglycerol kinase eta (DGKH) and several other genes in the etiology of bipolar disorderAnalysis of genetic variation in Ashkenazi Jews by high density SNP genotyping.Machine learning and data mining in complex genomic data--a review on the lessons learned in Genetic Analysis Workshop 19.Region-based analysis in genome-wide association study of Framingham Heart Study blood lipid phenotypesRapid genomic characterization of the genus vitis.Role for protein-protein interaction databases in human genetics.Bioinformatics challenges for genome-wide association studies.Disease-associated alleles in genome-wide association studies are enriched for derived low frequency alleles relative to HapMap and neutral expectationsComparative linkage meta-analysis reveals regionally-distinct, disparate genetic architectures: application to bipolar disorder and schizophrenia.Characterizing genetic interactions in human disease association studies using statistical epistasis networksRecent methods for polygenic analysis of genome-wide data implicate an important effect of common variants on cardiovascular disease risk.Overview of the genetics of major depressive disorderKnowledge-driven analysis identifies a gene-gene interaction affecting high-density lipoprotein cholesterol levels in multi-ethnic populations.What is hidden in my data? Practical strategies to reveal Yule-Simpson's paradox and strengthen research quality in health education research.Common clinical practice versus new PRIM score in predicting coronary heart disease risk.Complex adaptive system models and the genetic analysis of plasma HDL-cholesterol concentration.Subsets of SNPs define rare genotype classes that predict ischemic heart disease.Modeling gene-by-environment interaction in comorbid depression with alcohol use disorders via an integrated bioinformatics approach.An information-gain approach to detecting three-way epistatic interactions in genetic association studies.Discovery and verification of functional single nucleotide polymorphisms in regulatory genomic regions: current and developing technologiesThe impact of newly identified loci on coronary heart disease, stroke and total mortality in the MORGAM prospective cohorts.Epistasis and its implications for personal genetics.Layers of epistasis: genome-wide regulatory networks and network approaches to genome-wide association studies.Genome-wide association studies for the identification of biomarkers in metabolic diseases.Use of stochastic simulations to investigate the power and design of a whole genome association study using single nucleotide polymorphism arrays in farm animals.Enabling personal genomics with an explicit test of epistasis.Cancer heterogeneity: origins and implications for genetic association studies.Social networking and personal genomics: suggestions for optimizing the interaction.A distance-based cluster algorithm for genomic analysis in genetic disease.Natural genetic variation in male reproductive genes contributes to nontransitivity of sperm competitive ability in Drosophila melanogaster.A Haplotype-Based Analysis of theLRP5Gene in Relation to Osteoporosis Phenotypes in Spanish Postmenopausal Women
P2860
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P2860
Determinants of the success of whole-genome association testing.
description
2005 nî lūn-bûn
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2005年の論文
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2005年学术文章
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2005年学术文章
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2005年学术文章
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2005年学术文章
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2005年学术文章
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2005年學術文章
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2005年學術文章
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name
Determinants of the success of whole-genome association testing.
@ast
Determinants of the success of whole-genome association testing.
@en
type
label
Determinants of the success of whole-genome association testing.
@ast
Determinants of the success of whole-genome association testing.
@en
prefLabel
Determinants of the success of whole-genome association testing.
@ast
Determinants of the success of whole-genome association testing.
@en
P356
P1433
P1476
Determinants of the success of whole-genome association testing.
@en
P2093
Andrew G Clark
James Hixson
P304
P356
10.1101/GR.4244005
P577
2005-11-01T00:00:00Z