Chaisangmongkon Warasinee, Swaminathan Sruthi K, Freedman David J, Wang Xiao-Jing
Department of Neurobiology and Kavli Institute for Neuroscience, Yale University School of Medicine, New Haven, CT 06511, USA; Institute of Field Robotics, King Mongkut's University of Technology Thonburi, Bangkok 10140, Thailand.
Department of Neurobiology, The University of Chicago, Chicago, IL 60637, USA.
Neuron. 2017 Mar 22;93(6):1504-1517.e4. doi: 10.1016/j.neuron.2017.03.002.
Decision making involves dynamic interplay between internal judgements and external perception, which has been investigated in delayed match-to-category (DMC) experiments. Our analysis of neural recordings shows that, during DMC tasks, LIP and PFC neurons demonstrate mixed, time-varying, and heterogeneous selectivity, but previous theoretical work has not established the link between these neural characteristics and population-level computations. We trained a recurrent network model to perform DMC tasks and found that the model can remarkably reproduce key features of neuronal selectivity at the single-neuron and population levels. Analysis of the trained networks elucidates that robust transient trajectories of the neural population are the key driver of sequential categorical decisions. The directions of trajectories are governed by network self-organized connectivity, defining a "neural landscape" consisting of a task-tailored arrangement of slow states and dynamical tunnels. With this model, we can identify functionally relevant circuit motifs and generalize the framework to solve other categorization tasks.
决策涉及内部判断与外部感知之间的动态相互作用,这已在延迟分类匹配(DMC)实验中得到研究。我们对神经记录的分析表明,在DMC任务期间,外侧顶内沟(LIP)和前额叶皮质(PFC)神经元表现出混合的、随时间变化的和异质性的选择性,但先前的理论工作尚未建立起这些神经特征与群体水平计算之间的联系。我们训练了一个循环网络模型来执行DMC任务,发现该模型能够在单神经元和群体水平上显著重现神经元选择性的关键特征。对训练后的网络进行分析表明,神经群体的稳健瞬态轨迹是顺序分类决策的关键驱动因素。轨迹的方向由网络自组织连接性控制,定义了一个由缓慢状态和动态通道的任务定制排列组成的“神经景观”。利用这个模型,我们可以识别功能相关的电路基序,并将该框架推广到解决其他分类任务。