Department of Psychiatry, Department of Neuroscience and Physiology, New York University School of Medicine, New York, NY, United States of America.
Program in Artificial Intelligence, University of Science and Technology of China, Hefei, Anhui, People's Republic of China.
J Neural Eng. 2024 Jun 25;21(3). doi: 10.1088/1741-2552/ad5702.
Distributed hypothalamic-midbrain neural circuits help orchestrate complex behavioral responses during social interactions. Given rapid advances in optical imaging, it is a fundamental question how population-averaged neural activity measured by multi-fiber photometry (MFP) for calcium fluorescence signals correlates with social behaviors is a fundamental question. This paper aims to investigate the correspondence between MFP data and social behaviors.We propose a state-space analysis framework to characterize mouse MFP data based on dynamic latent variable models, which include a continuous-state linear dynamical system and a discrete-state hidden semi-Markov model. We validate these models on extensive MFP recordings during aggressive and mating behaviors in male-male and male-female interactions, respectively.Our results show that these models are capable of capturing both temporal behavioral structure and associated neural states, and produce interpretable latent states. Our approach is also validated in computer simulations in the presence of known ground truth.Overall, these analysis approaches provide a state-space framework to examine neural dynamics underlying social behaviors and reveals mechanistic insights into the relevant networks.
分布式下丘脑-中脑神经回路有助于协调社交互动期间的复杂行为反应。鉴于光学成像技术的快速发展,通过多光纤光度法(MFP)测量钙荧光信号的群体平均神经活动与社交行为之间如何相关是一个基本问题。本文旨在研究 MFP 数据与社交行为之间的对应关系。我们提出了一种基于动态潜在变量模型的状态空间分析框架来描述小鼠 MFP 数据,该模型包括连续状态线性动力系统和离散状态隐藏半马尔可夫模型。我们分别在雄性之间的攻击和交配行为以及雄性和雌性之间的互动中对这些模型进行了广泛的 MFP 记录验证。我们的结果表明,这些模型能够捕捉到时间行为结构和相关的神经状态,并产生可解释的潜在状态。我们的方法还在存在已知真实情况的计算机模拟中进行了验证。总的来说,这些分析方法提供了一个状态空间框架来研究社交行为背后的神经动力学,并揭示了相关网络的机制见解。