Huang Kang, Han Yaning, Chen Ke, Pan Hongli, Zhao Gaoyang, Yi Wenling, Li Xiaoxi, Liu Siyuan, Wei Pengfei, Wang Liping
Shenzhen Key Lab of Neuropsychiatric Modulation and Collaborative Innovation Center for Brain Science, Guangdong Provincial Key Laboratory of Brain Connectome and Behavior, CAS Center for Excellence in Brain Science and Intelligence Technology, Brain Cognition and Brain Disease Institute (BCBDI), Shenzhen-Hong Kong Institute of Brain Science-Shenzhen Fundamental Research Institutions, Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen, China.
University of Chinese Academy of Sciences, Beijing, China.
Nat Commun. 2021 May 13;12(1):2784. doi: 10.1038/s41467-021-22970-y.
Animal behavior usually has a hierarchical structure and dynamics. Therefore, to understand how the neural system coordinates with behaviors, neuroscientists need a quantitative description of the hierarchical dynamics of different behaviors. However, the recent end-to-end machine-learning-based methods for behavior analysis mostly focus on recognizing behavioral identities on a static timescale or based on limited observations. These approaches usually lose rich dynamic information on cross-scale behaviors. Here, inspired by the natural structure of animal behaviors, we address this challenge by proposing a parallel and multi-layered framework to learn the hierarchical dynamics and generate an objective metric to map the behavior into the feature space. In addition, we characterize the animal 3D kinematics with our low-cost and efficient multi-view 3D animal motion-capture system. Finally, we demonstrate that this framework can monitor spontaneous behavior and automatically identify the behavioral phenotypes of the transgenic animal disease model. The extensive experiment results suggest that our framework has a wide range of applications, including animal disease model phenotyping and the relationships modeling between the neural circuits and behavior.
动物行为通常具有层次结构和动态性。因此,为了理解神经系统如何与行为协调,神经科学家需要对不同行为的层次动态进行定量描述。然而,最近基于端到端机器学习的行为分析方法大多集中在静态时间尺度上或基于有限观察来识别行为特征。这些方法通常会丢失跨尺度行为的丰富动态信息。在此,受动物行为自然结构的启发,我们通过提出一个并行和多层框架来学习层次动态,并生成一个客观指标将行为映射到特征空间,从而应对这一挑战。此外,我们用低成本且高效的多视图3D动物运动捕捉系统来表征动物的3D运动学。最后,我们证明这个框架可以监测自发行为并自动识别转基因动物疾病模型的行为表型。大量实验结果表明,我们的框架具有广泛的应用,包括动物疾病模型表型分析以及神经回路与行为之间的关系建模。