Publication Date:
Author(s): Z. Tamimy, S. T. Kevenaar, J. J. Hottenga, Michael D. Hunter, E. L. de Zeeuw, Michael C. Neale, C. E.M. van Beijsterveldt, C. V. Dolan, Elsje van Bergen, D. I. Boomsma
Publisher: Springer New York
Publication Type: Academic Journal Article
Journal Title: Behavior Genetics
Volume: 51
Issue: 3
Page Range: 319-330
Abstract:

The classical twin model can be reparametrized as an equivalent multilevel model. The multilevel parameterization has underexplored advantages, such as the possibility to include higher-level clustering variables in which lower levels are nested. When this higher-level clustering is not modeled, its variance is captured by the common environmental variance component. In this paper we illustrate the application of a 3-level multilevel model to twin data by analyzing the regional clustering of 7-year-old children’s height in the Netherlands. Our findings show that 1.8%, of the phenotypic variance in children’s height is attributable to regional clustering, which is 7% of the variance explained by between-family or common environmental components. Since regional clustering may represent ancestry, we also investigate the effect of region after correcting for genetic principal components, in a subsample of participants with genome-wide SNP data. After correction, region no longer explained variation in height. Our results suggest that the phenotypic variance explained by region might represent ancestry effects on height.