Literature DB >> 23736220

A novel method, the Variant Impact On Linkage Effect Test (VIOLET), leads to improved identification of causal variants in linkage regions.

Lisa J Martin1, Lili Ding2, Xue Zhang3, Ahmed H Kissebah4, Michael Olivier5, D Woodrow Benson6.   

Abstract

The Human Genome Project was expected to individualize medicine by rapidly advancing knowledge of common complex disease through discovery of disease-causing genetic variants. However, this has proved challenging. Although linkage analysis has identified replicated chromosomal regions, subsequent detection of causal variants for complex traits has been limited. One explanation for this difficulty is that utilization of association to follow up linkage is problematic given that linkage and association are not required to co-occur. Indeed, co-occurrence is likely to occur only in special circumstances, such as Mendelian inheritance, but cannot be universally expected. To overcome this problem, we propose a novel method, the Variant Impact On Linkage Effect Test (VIOLET), which differs from other quantitative methods in that it is designed to follow up linkage by identifying variants that influence the variance explained by a quantitative trait locus. VIOLET's performance was compared with measured genotype and combined linkage association in two data sets with quantitative traits. Using simulated data, VIOLET had high power to detect the causal variant and reduced false positives compared with standard methods. Using real data, VIOLET identified a single variant, which explained 24% of linkage; this variant exhibited only nominal association (P=0.04) using measured genotype and was not identified by combined linkage association. These results demonstrate that VIOLET is highly specific while retaining low false-negative results. In summary, VIOLET overcomes a barrier to gene discovery and thus may be broadly applicable to identify underlying genetic etiology for traits exhibiting linkage.

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Year:  2013        PMID: 23736220      PMCID: PMC3895640          DOI: 10.1038/ejhg.2013.120

Source DB:  PubMed          Journal:  Eur J Hum Genet        ISSN: 1018-4813            Impact factor:   4.246


  44 in total

1.  Some properties of a variance components model for fine-mapping quantitative trait loci.

Authors:  L R Cardon; G R Abecasis
Journal:  Behav Genet       Date:  2000-05       Impact factor: 2.805

2.  SNAP: a web-based tool for identification and annotation of proxy SNPs using HapMap.

Authors:  Andrew D Johnson; Robert E Handsaker; Sara L Pulit; Marcia M Nizzari; Christopher J O'Donnell; Paul I W de Bakker
Journal:  Bioinformatics       Date:  2008-10-30       Impact factor: 6.937

3.  The use of measured genotype information in the analysis of quantitative phenotypes in man. I. Models and analytical methods.

Authors:  E Boerwinkle; R Chakraborty; C F Sing
Journal:  Ann Hum Genet       Date:  1986-05       Impact factor: 1.670

4.  Embryonic survival and severity of cardiac and craniofacial defects are affected by genetic background in fibroblast growth factor-16 null mice.

Authors:  Shun Yan Lu; Yan Jin; Xiaodong Li; Patricia Sheppard; Margaret E Bock; Farah Sheikh; Mary Lynn Duckworth; Peter A Cattini
Journal:  DNA Cell Biol       Date:  2010-08       Impact factor: 3.311

5.  Targeted disruption of mouse EGF receptor: effect of genetic background on mutant phenotype.

Authors:  D W Threadgill; A A Dlugosz; L A Hansen; T Tennenbaum; U Lichti; D Yee; C LaMantia; T Mourton; K Herrup; R C Harris
Journal:  Science       Date:  1995-07-14       Impact factor: 47.728

6.  Association after linkage analysis indicates that homozygosity for the 46C-->T polymorphism in the F12 gene is a genetic risk factor for venous thrombosis.

Authors:  Isabel Tirado; José Manuel Soria; José Mateo; Artur Oliver; Juan Carlos Souto; Amparo Santamaria; Rosa Felices; Montserrat Borrell; Jordi Fontcuberta
Journal:  Thromb Haemost       Date:  2004-05       Impact factor: 5.249

Review 7.  Influence of genetic background on genetically engineered mouse phenotypes.

Authors:  Thomas Doetschman
Journal:  Methods Mol Biol       Date:  2009

8.  Genetic determinants of obesity-related lipid traits.

Authors:  Gabriele E Sonnenberg; Glenn R Krakower; Lisa J Martin; Michael Olivier; Anne E Kwitek; Anthony G Comuzzie; John Blangero; Ahmed H Kissebah
Journal:  J Lipid Res       Date:  2004-02-01       Impact factor: 5.922

9.  The search for genetic variants and epigenetics related to asthma.

Authors:  Shin-Hwa Lee; Jong-Sook Park; Choon-Sik Park
Journal:  Allergy Asthma Immunol Res       Date:  2011-05-30       Impact factor: 5.764

10.  Genetic Analysis Workshop 17 mini-exome simulation.

Authors:  Laura Almasy; Thomas D Dyer; Juan Manuel Peralta; Jack W Kent; Jac C Charlesworth; Joanne E Curran; John Blangero
Journal:  BMC Proc       Date:  2011-11-29
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  1 in total

1.  Variants in angiopoietin-2 (ANGPT2) contribute to variation in nocturnal oxyhaemoglobin saturation level.

Authors:  Heming Wang; Brian E Cade; Han Chen; Kevin J Gleason; Richa Saxena; Tao Feng; Emma K Larkin; Ramachandran S Vasan; Honghuang Lin; Sanjay R Patel; Russell P Tracy; Yongmei Liu; Daniel J Gottlieb; Jennifer E Below; Craig L Hanis; Lauren E Petty; Shamil R Sunyaev; Alexis C Frazier-Wood; Jerome I Rotter; Wendy Post; Xihong Lin; Susan Redline; Xiaofeng Zhu
Journal:  Hum Mol Genet       Date:  2016-12-01       Impact factor: 6.150

  1 in total

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