학술논문

Geonomics: Forward-Time, Spatially Explicit, and Arbitrarily Complex Landscape Genomic Simulations
Document Type
Academic Journal
Source
Molecular Biology and Evolution. October, 2021, Vol. 38 Issue 10, p4634, 13 p.
Subject
Population genetics
Simulation methods
Language
English
ISSN
0737-4038
Abstract
Understanding the drivers of spatial patterns of genomic diversity has emerged as a major goal of evolutionary genetics. The flexibility of forward-time simulation makes it especially valuable for these efforts, allowing for the simulation of arbitrarily complex scenarios in a way that mimics how real populations evolve. Here, we present Geonomics, a Python package for performing complex, spatially explicit, landscape genomic simulations with full spatial pedigrees that dramatically reduces user workload yet remains customizable and extensible because it is embedded within a popular, general-purpose language. We show that Geonomics results are consistent with expectations for a variety of validation tests based on classic models in population genetics and then demonstrate its utility and flexibility with a trio of more complex simulation scenarios that feature polygenic selection, selection on multiple traits, simulation on complex landscapes, and nonstationary environmental change. We then discuss runtime, which is primarily sensitive to landscape raster size, memory usage, which is primarily sensitive to maximum population size and recombination rate, and other caveats related to the model's methods for approximating recombination and movement. Taken together, our tests and demonstrations show that Geonomics provides an efficient and robust platform for population genomic simulations that capture complex spatial and evolutionary dynamics. Key words: landscape ecology, evolutionary genetics, population dynamics, environmental change, spatial modeling, Python.
Introduction Spatial patterns of genomic diversity result from the complex interplay of many underlying ecological and evolutionary processes and are shaped by a wide variety of geographic and environmental factors. [...]