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Sex-specific genetic architecture of human fatness in Chinese: the SAPPHIRe Study.

Authors :
Chiu YF
Chuang LM
Kao HY
Shih KC
Lin MW
Lee WJ
Quertermous T
Curb JD
Chen I
Rodriguez BL
Hsiung CA
Source :
Human genetics [Hum Genet] 2010 Nov; Vol. 128 (5), pp. 501-13. Date of Electronic Publication: 2010 Aug 20.
Publication Year :
2010

Abstract

To dissect the genetic architecture of sexual dimorphism in obesity-related traits, we evaluated the sex-genotype interaction, sex-specific heritability and genome-wide linkages for seven measurements related to obesity. A total of 1,365 non-diabetic Chinese subjects from the family study of the Stanford Asia-Pacific Program of Hypertension and Insulin Resistance were used to search for quantitative trait loci (QTLs) responsible for the obesity-related traits. Pleiotropy and co-incidence effects from the QTLs were also examined using the bivariate linkage approach. We found that sex-specific differences in heritability and the genotype-sex interaction effects were substantially significant for most of these traits. Several QTLs with strong linkage evidence were identified after incorporating genotype by sex (G × S) interactions into the linkage mapping, including one QTL for hip circumference [maximum LOD score (MLS) = 4.22, empirical p = 0.000033] and two QTLs: for BMI on chromosome 12q with MLS 3.37 (empirical p = 0.0043) and 3.10 (empirical p = 0.0054). Sex-specific analyses demonstrated that these linkage signals all resulted from females rather than males. Most of these QTLs for obesity-related traits replicated the findings in other ethnic groups. Bivariate linkage analyses showed several obesity traits were influenced by a common set of QTLs. All regions with linkage signals were observed in one gender, but not in the whole sample, suggesting the genetic architecture of obesity-related traits does differ by gender. These findings are useful for further identification of the liability genes for these phenotypes through candidate genes or genome-wide association analysis.

Details

Language :
English
ISSN :
1432-1203
Volume :
128
Issue :
5
Database :
MEDLINE
Journal :
Human genetics
Publication Type :
Academic Journal
Accession number :
20725740
Full Text :
https://doi.org/10.1007/s00439-010-0877-5