Madlon-Kay Seth, Brent Lauren, Montague Michael, Heller Katherine, Platt Michael
Department of Neuroscience, Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA19104, USA.
Center for Research in Animal Behaviour, University of Exeter, Exeter EX4 4QG, UK.
Brain Sci. 2017 Jul 21;7(7):91. doi: 10.3390/brainsci7070091.
Investigating the biological bases of social phenotypes is challenging because social behavior is both high-dimensional and richly structured, and biological factors are more likely to influence complex patterns of behavior rather than any single behavior in isolation. The space of all possible patterns of interactions among behaviors is too large to investigate using conventional statistical methods. In order to quantitatively define social phenotypes from natural behavior, we developed a machine learning model to identify and measure patterns of behavior in naturalistic observational data, as well as their relationships to biological, environmental, and demographic sources of variation. We applied this model to extensive observations of natural behavior in free-ranging rhesus macaques, and identified behavioral states that appeared to capture periods of social isolation, competition over food, conflicts among groups, and affiliative coexistence. Phenotypes, represented as the rate of being in each state for a particular animal, were strongly and broadly influenced by dominance rank, sex, and social group membership. We also identified two states for which variation in rates had a substantial genetic component. We discuss how this model can be extended to identify the contributions to social phenotypes of particular genetic pathways.
探究社会表型的生物学基础具有挑战性,因为社会行为既具有高维度性又结构丰富,而且生物因素更有可能影响复杂的行为模式,而非孤立的任何单一行为。行为间所有可能的互动模式空间太大,无法用传统统计方法进行研究。为了从自然行为中定量定义社会表型,我们开发了一种机器学习模型,以识别和测量自然观察数据中的行为模式,以及它们与生物、环境和人口统计学变异来源的关系。我们将此模型应用于对自由放养的恒河猴自然行为的广泛观察,并识别出似乎捕捉到社会隔离期、食物竞争、群体间冲突以及亲和共存期的行为状态。表型以特定动物处于每种状态的比率来表示,受到优势等级、性别和社会群体成员身份的强烈且广泛的影响。我们还识别出两种状态,其比率变化具有很大的遗传成分。我们讨论了该模型如何能够扩展以识别特定遗传途径对社会表型的贡献。