Dynamic Agent-Based Model of Hand-Preference Behavior Patterns in the Mouse
Authored by Andre S. Ribeiro, Jason Lloyd-Price, Brenda A. Eales, Fred G. Biddle
Date Published: 2010-04
DOI: 10.1177/1059712309339859
Sponsors:
Academy of Finland
Alberta Children’s Hospital Research Foundation
University of Calgary
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Other Narrative
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Abstract
Using a new agent-based model that mimics the learning process in hand-reaching behavior of individual mice, we show that mouse hand preference is probabilistic, dependent on the environment and prior learning. We quantify the learning capabilities of three inbred strains and show that population distributions of hand preference emerge from the properties of individual mice. The model informs our understanding of gene-environment interactions because it accommodates genotypic differences in learning and memory abilities, and environmental biases. We tuned each strain's model to match their experimental hand-preference distributions in unbiased worlds and, by comparing simulations and experiments, identified and quantified a constitutive left-bias in hand preference of one strain. The models, tuned for unbiased worlds, match experimental measures in left-and right-biased worlds and in biased worlds after previous training. New measures quantitatively assess this matching, revealing that two strains, previously considered non-learners of hand preference, actually have significant learning ability and we confirm this with new experiments. Model mice match the kinetics of hand-preference learning of one strain and predict the limits of learning. We conclude that genetically evolved hand-preference behavior in mice is inherently probabilistic to provide robustness and allow constant adaptability to ever-changing environments.
Tags
Adaptation
behavior
population
hand-preference
probabilistic