Abstract:
We present in this paper models and statistical methods for performing
multiple trait analysis on mapping quantitative trait loci (QTL) based
on the composite interval mapping method. By taking into account the correlated
structure of multiple traits, this joint analysis has several advantages,
compared with separate analyses, for mapping QTL, including the expected
improvement on the statistical power of the test for QTL and on the precision
of parameter estimation. Also this joint analysis provides formal procedures
to test a number of biologically interesting hypotheses concerning the
nature of genetic correlations between different traits. Among the testing
procedures considered are those for joint mapping, pleiotropy, QTL by environment
interaction, and pleiotropy vs. close linkage. The test of pleiotropy (one
pleiotropic QTL at a genome position) vs. close linkage (multiple nearby
nonpleiotropic QTL) can have important implications for our understanding
of the nature of genetic correlations between different traits in certain
regions of a genome and also for practical applications in animal and plant
breeding because one of the major goals in breeding is to break unfavorable
linkage. Results of extensive simulation studies are presented to illustrate
various properties of the analyses.