1. Multilevel Twin Models
- Author
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Conor V. Dolan, Elsje van Bergen, Michael D. Hunter, Z. Tamimy, S. T. Kevenaar, E.L. de Zeeuw, Michael C. Neale, J-J Hottenga, Dorret I. Boomsma, C.E.M. van Beijsterveldt, LEARN! - Educational neuroscience, learning and development, Biological Psychology, APH - Mental Health, APH - Methodology, APH - Health Behaviors & Chronic Diseases, and APH - Personalized Medicine
- Subjects
Male ,0301 basic medicine ,OpenMx ,Genotype ,Statistics as Topic ,Twins ,Genetics, Behavioral ,030105 genetics & heredity ,Multilevel model ,Polymorphism, Single Nucleotide ,03 medical and health sciences ,Statistics ,Genetics ,Cluster Analysis ,Humans ,Region ,Child ,Cluster analysis ,Classical twin design ,Genetics (clinical) ,Ecology, Evolution, Behavior and Systematics ,Netherlands ,Original Research ,Mathematics ,Ancestry ,Snp data ,Models, Genetic ,Height ,Variance (accounting) ,Explained variation ,Body Height ,Variable (computer science) ,Phenotype ,030104 developmental biology ,Variation (linguistics) ,Principal component analysis ,Multilevel Analysis ,Variance components ,Female ,Genome-Wide Association Study - 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 did no longer explain variation in height. Our results suggest that the phenotypic variance explained by region actually represent ancestry effects on height.
- Published
- 2021
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