Abstract:
The great majority of models of the population genetics of subdivided
populations have made the simplifying assumption that the gene frequencies in
migrant groups are deterministic. The present paper examines models which more
closely mimic natural conditions, in which the gene frequencies in migrant
groups are subject to stochastic effects. It is shown that some types of
stochastic migration can cause dramatic changes in spatial correlations and
variance. These changes depend on how the stochastic migration effects in the
gene frequency recursion equations are shared among nearby subpopulations during
the same generation. Only for cases where the effects are completely unshared
are the equilibrium spatial and space-time correlations among adult
subpopulations unaffected, but the variance is always inflated. The analyses
here use novel methods, by recasting population genetic migration-drift models
as space-time autoregressive moving average (STARMA) processes. Recent theorems
for STARMA processes are employed for finding the spatial correlations, and for
the first time in population genetics theory the complete set of space-time
correlations, for systems with general patterns of migration rates and numbers
of spatial dimensions. The space-time correlations provide a uniquely detailed
description of a system, and thus form a link between observed spatial
autocorrelation statistics and the underlying space-time population genetic
process. STARMA theoretical processes have direct statistical analogues that can
be applied for process identification, parameter estimation, model fitting, and
forecasting in real systems. (C) 1994 academic Press, Inc.
KeyWords Plus:
KIN-STRUCTURED MIGRATION, GENETIC DRIFT, AUTO-CORRELATION, AUTOCORRELATION
ANALYSIS, POPULATION-STRUCTURE, DISTANCE, FREQUENCIES, PATTERNS, MODELS, EUROPE
Addresses:
EPPERSON BK, UNIV CALIF RIVERSIDE,DEPT BOT & PLANT SCI,RIVERSIDE,CA 92521
Publisher:
ACADEMIC PRESS INC JNL-COMP SUBSCRIPTIONS, SAN DIEGO