| Literature DB >> 16934002 |
Giuseppe Pilia1, Wei-Min Chen, Angelo Scuteri, Marco Orrú, Giuseppe Albai, Mariano Dei, Sandra Lai, Gianluca Usala, Monica Lai, Paola Loi, Cinzia Mameli, Loredana Vacca, Manila Deiana, Nazario Olla, Marco Masala, Antonio Cao, Samer S Najjar, Antonio Terracciano, Timur Nedorezov, Alexei Sharov, Alan B Zonderman, Gonçalo R Abecasis, Paul Costa, Edward Lakatta, David Schlessinger.
Abstract
In family studies, phenotypic similarities between relatives yield information on the overall contribution of genes to trait variation. Large samples are important for these family studies, especially when comparing heritability between subgroups such as young and old, or males and females. We recruited a cohort of 6,148 participants, aged 14-102 y, from four clustered towns in Sardinia. The cohort includes 34,469 relative pairs. To extract genetic information, we implemented software for variance components heritability analysis, designed to handle large pedigrees, analyze multiple traits simultaneously, and model heterogeneity. Here, we report heritability analyses for 98 quantitative traits, focusing on facets of personality and cardiovascular function. We also summarize results of bivariate analyses for all pairs of traits and of heterogeneity analyses for each trait. We found a significant genetic component for every trait. On average, genetic effects explained 40% of the variance for 38 blood tests, 51% for five anthropometric measures, 25% for 20 measures of cardiovascular function, and 19% for 35 personality traits. Four traits showed significant evidence for an X-linked component. Bivariate analyses suggested overlapping genetic determinants for many traits, including multiple personality facets and several traits related to the metabolic syndrome; but we found no evidence for shared genetic determinants that might underlie the reported association of some personality traits and cardiovascular risk factors. Models allowing for heterogeneity suggested that, in this cohort, the genetic variance was typically larger in females and in younger individuals, but interesting exceptions were observed. For example, narrow heritability of blood pressure was approximately 26% in individuals more than 42 y old, but only approximately 8% in younger individuals. Despite the heterogeneity in effect sizes, the same loci appear to contribute to variance in young and old, and in males and females. In summary, we find significant evidence for heritability of many medically important traits, including cardiovascular function and personality. Evidence for heterogeneity by age and sex suggests that models allowing for these differences will be important in mapping quantitative traits.Entities:
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Year: 2006 PMID: 16934002 PMCID: PMC1557782 DOI: 10.1371/journal.pgen.0020132
Source DB: PubMed Journal: PLoS Genet ISSN: 1553-7390 Impact factor: 5.917
Figure 1Age, Sex, and Birthplace Distribution for Participants
(A) Shows the number of recruited females (black bars) and males (white bars) from the four clustered towns.
(B) Shows the birthplace distribution of participants, in progressively larger geographic units: Lanusei, L.I.E.A. (Lanusei and the three surrounding towns of Ilbono, Elini, and Arzana), the Lanusei valley, the region of Ogliastra, the province of Nuoro, and all of Sardinia.
(C) Shows the birthplace distribution for grandparents of participants in the same progressively larger geographic units.
Figure 2Distribution of Six Illustrative Traits in Male and Female Participants
Relative densities are plotted for males (solid lines) and females (dashed lines) for two serum values (cholesterol levels [A] and HDL [B]), two measures of cardiovascular function (IMT of the carotid artery [C] and PWV [D]), and two personality facets (NEO_N3 [E] and NEO_O5 [F]). A complete set of plots, including all traits, is available online (http://www.sph.umich.edu/csg/chen/public/sardinia).
Figure 3Illustrative Quantitative Traits Plotted as a Function of Age
These are the same traits as in Figure 2. All values are plotted, and polynomial regression curves fitted to the data show inferred trends for males (solid red lines) and females (dashed blue lines) with increasing age. A complete set of plots, allowing for all traits, is available online (http://www.sph.umich.edu/csg/chen/public/sardinia).
Heritability of Blood Phenotypes and Anthropometric Measures
Heritability for Measures of Cardiovascular Function and Personality
Model Comparisons between Males and Females
Model Comparisons between Young and Old
Figure 4Clustering of Genetic Correlations
The 98 quantative traits are classified into clusters inferred from genetic correlations between any two traits, with an “average” distance measure used in the clustering algorithm. Classes of traits are color-coded as personality (red), serum composition (blue), cardiovascular (black), and anthropometric (green). Overlap of the apparent genetic contribution to variance is indicated on the ordinate, with larger overlaps towards the bottom. Eighteen values exceed 50% overlap (see text).