Principal-component-based multivariate regression for genetic association studies of metabolic syndrome components

dc.contributor.author

Mei, Hao

dc.contributor.author

Chen, Wei

dc.contributor.author

Dellinger, Andrew

dc.contributor.author

He, Jiang

dc.contributor.author

Wang, Meng

dc.contributor.author

Yau, Canddy

dc.contributor.author

Srinivasan, Sathanur R

dc.contributor.author

Berenson, Gerald S

dc.date.accessioned

2011-06-21T17:29:32Z

dc.date.available

2011-06-21T17:29:32Z

dc.date.issued

2010

dc.description.abstract

Background: Quantitative traits often underlie risk for complex diseases. For example, weight and body mass index (BMI) underlie the human abdominal obesity-metabolic syndrome. Many attempts have been made to identify quantitative trait loci (QTL) over the past decade, including association studies. However, a single QTL is often capable of affecting multiple traits, a quality known as gene pleiotropy. Gene pleiotropy may therefore cause a loss of power in association studies focused only on a single trait, whether based on single or multiple markers. Results: We propose using principal-component-based multivariate regression (PCBMR) to test for gene pleiotropy with comprehensive evaluation. This method generates one or more independent canonical variables based on the principal components of original traits and conducts a multivariate regression to test for association with these new variables. Systematic simulation studies have shown that PCBMR has great power. PCBMR-based pleiotropic association studies of abdominal obesity-metabolic syndrome and its possible linkage to chromosomal band 3q27 identified 11 susceptibility genes with significant associations. Whereas some of these genes had been previously reported to be associated with metabolic traits, others had never been identified as metabolism-associated genes. Conclusions: PCBMR is a computationally efficient and powerful test for gene pleiotropy. Application of PCBMR to abdominal obesity-metabolic syndrome indicated the existence of gene pleiotropy affecting this syndrome.

dc.description.version

Version of Record

dc.identifier.citation

Mei,Hao;Chen,Wei;Dellinger,Andrew;He,Jiang;Wang,Meng;Yau,Canddy;Srinivasan,Sathanur R.;Berenson,Gerald S.. 2010. Principal-component-based multivariate regression for genetic association studies of metabolic syndrome components. Bmc Genetics 11( ): 100-100.

dc.identifier.issn

1471-2156

dc.identifier.uri

https://hdl.handle.net/10161/4343

dc.language.iso

en_US

dc.publisher

Springer Science and Business Media LLC

dc.relation.isversionof

10.1186/1471-2156-11-100

dc.relation.journal

Bmc Genetics

dc.subject

quantitative trait loci

dc.subject

insulin-resistance syndrome

dc.subject

adiponectin gene

dc.subject

obesity

dc.subject

polymorphism

dc.subject

complexes

dc.subject

variables

dc.subject

genetics & heredity

dc.title

Principal-component-based multivariate regression for genetic association studies of metabolic syndrome components

dc.title.alternative
dc.type

Other article

duke.date.pubdate

2010-11-9

duke.description.issue
duke.description.volume

11

pubs.begin-page

100

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
284578600001.pdf
Size:
385.35 KB
Format:
Adobe Portable Document Format