概率建模揭示协调的社会互动状态及其多感官基础

Sarah Josephine Stednitz, Andrew Lesak, Adeline L Fecker, Peregrine Painter, Phil Washbourne, Luca Mazzucato, Ethan K Scott
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摘要

动物物种的社会行为既有简单的成对互动,也有成千上万的个体协调目标导向的运动。无论规模如何,这些互动都受多模态感官信息和每个动物内部状态之间相互作用的支配。在这里,我们研究了动物如何利用多种感官模式来指导高度社会性斑马鱼(Danio rerio)的社会行为,并揭示了成对互动在发育早期的复杂特征。为了识别不同的行为并了解它们是如何随时间变化的,我们开发了一种新的隐马尔可夫模型,该模型具有受限线性模型排放,可自动对协调互动状态进行分类,并利用一种动物的运动来预测另一种动物的运动。我们发现,在一次实验过程中,社会行为会在两种互动状态之间交替出现,这两种状态以独特的动作和时间尺度加以区分。长距离互动(类似于抢滩)依赖于视觉,而机械感觉则是快速同步运动和平行游动的基础,也就是学步的前兆。总之,我们观察了成对鱼类的自发互动,建立了新的隐马尔可夫模型,揭示了两种基本互动模式,并确定了每种互动模式所涉及的感官系统。我们的成对社会互动建模方法广泛适用于各种自然行为和物种,并解决了检测准周期时间序列之间瞬时耦合的难题。
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Probabilistic modeling reveals coordinated social interaction states and their multisensory bases
Social behavior across animal species ranges from simple pairwise interactions to thousands of individuals coordinating goal-directed movements. Regardless of the scale, these interactions are governed by the interplay between multimodal sensory information and the internal state of each animal. Here, we investigate how animals use multiple sensory modalities to guide social behavior in the highly social zebrafish (Danio rerio) and uncover the complex features of pairwise interactions early in development. To identify distinct behaviors and understand how they vary over time, we developed a new hidden Markov model with constrained linear-model emissions to automatically classify states of coordinated interaction, using the movements of one animal to predict those of another. We discovered that social behaviors alternate between two interaction states within a single experimental session, distinguished by unique movements and timescales. Long-range interactions, akin to shoaling, rely on vision, while mechanosensation underlies rapid synchronized movements and parallel swimming, precursors of schooling. Altogether, we observe spontaneous interactions in pairs of fish, develop novel hidden Markov modeling to reveal two fundamental interaction modes, and identify the sensory systems involved in each. Our modeling approach to pairwise social interactions has broad applicability to a wide variety of naturalistic behaviors and species and solves the challenge of detecting transient couplings between quasi-periodic time series.
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