Hernández Damián G, Rivera Catalina, Cande Jessica, Zhou Baohua, Stern David L, Berman Gordon J
Department of Physics, Emory University, Atlanta, United States.
Department of Medical Physics, Centro Atómico Bariloche and Instituto Balseiro, Bariloche, Argentina.
Elife. 2021 Sep 2;10:e61806. doi: 10.7554/eLife.61806.
Although different animal species often exhibit extensive variation in many behaviors, typically scientists examine one or a small number of behaviors in any single study. Here, we propose a new framework to simultaneously study the evolution of many behaviors. We measured the behavioral repertoire of individuals from six species of fruit flies using unsupervised techniques and identified all stereotyped movements exhibited by each species. We then fit a Generalized Linear Mixed Model to estimate the intra- and inter-species behavioral covariances, and, by using the known phylogenetic relationships among species, we estimated the (unobserved) behaviors exhibited by ancestral species. We found that much of intra-specific behavioral variation has a similar covariance structure to previously described long-time scale variation in an individual's behavior, suggesting that much of the measured variation between individuals of a single species in our assay reflects differences in the status of neural networks, rather than genetic or developmental differences between individuals. We then propose a method to identify groups of behaviors that appear to have evolved in a correlated manner, illustrating how sets of behaviors, rather than individual behaviors, likely evolved. Our approach provides a new framework for identifying co-evolving behaviors and may provide new opportunities to study the mechanistic basis of behavioral evolution.
尽管不同动物物种在许多行为上常常表现出广泛的差异,但通常科学家们在任何一项单独研究中只考察一种或少数几种行为。在此,我们提出了一个新框架,用于同时研究多种行为的进化。我们使用无监督技术测量了六种果蝇个体的行为库,并确定了每个物种表现出的所有刻板运动。然后,我们拟合了一个广义线性混合模型来估计种内和种间的行为协方差,并且通过利用物种间已知的系统发育关系,我们估计了祖先物种表现出的(未观察到的)行为。我们发现,种内行为变异的很大一部分具有与先前描述的个体行为长期尺度变异相似的协方差结构,这表明在我们的实验中,单一物种个体之间测量到的大部分变异反映的是神经网络状态的差异,而非个体之间的遗传或发育差异。然后,我们提出了一种方法来识别似乎以相关方式进化的行为组,说明了行为集而非个体行为可能是如何进化的。我们的方法为识别共同进化的行为提供了一个新框架,并可能为研究行为进化的机制基础提供新的机会。