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Statistical Power to Detect Genetic Loci Affecting Environmental Sensitivity
Authors
A Wolc
AC Heath
+26 more
B Benyamin
B Ordas
D Sorensen
Danielle Posthuma
DS Falconer
E Turkheimer
G Gibson
G Jong De
GE Dickerson
JJ Bull
JK Haseman
JL Jinks
LJ Eaves
M Lynch
M Ros
M Slatkin
MP Dunne
NG Martin
NG Martin
NR Wray
Peter M. Visscher
TF Mackay
WG Hill
XS Zhang
XS Zhang
XS Zhang
Publication date
1 January 2010
Publisher
Doi
Cite
Abstract
There is evidence in different species of genetic control of environmental variation, independent of scale effects. The statistical power to detect genetic control of environmental or phenotypic variability for a quantitative trait was investigated analytically using a monozygotic (MZ) twin difference design and a design using unrelated individuals. The model assumed multiplicative or additive effects of alleles on trait variance at a bi-allelic locus and an additive (regression) model for statistical analysis. If genetic control acts on phenotypic variance then the design using unrelated individuals is more efficient but 10,000s of observations are needed to detect loci explaining at most 3.5% of the variance of the variance at genome-wide significance. If genetic control acts purely on environmental variation then an MZ twin difference design is more efficient when the MZ trait correlation is larger than ~0.3. For a locus that explains a given proportion of the variation in variance, twice the number of observations is needed for detection when compared to a locus that explains the same proportion of variation in phenotypes. © 2010 Springer Science+Business Media, LLC
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