Moore Brittany, Khang Sheng, Francis Joseph Thachil
Department of Biomedical Engineering, Cullen College of Engineering, The University of Houston, Houston, TX, United States.
Department of Electrical and Computer Engineering, Cullen College of Engineering, The University of Houston, Houston, TX, United States.
Front Behav Neurosci. 2020 Dec 2;14:541920. doi: 10.3389/fnbeh.2020.541920. eCollection 2020.
Reward modulation is represented in the motor cortex (M1) and could be used to implement more accurate decoding models to improve brain-computer interfaces (BCIs; Zhao et al., 2018). Analyzing trial-to-trial noise-correlations between neural units in the presence of rewarding (R) and non-rewarding (NR) stimuli adds to our understanding of cortical network dynamics. We utilized Pearson's correlation coefficient to measure shared variability between simultaneously recorded units (32-112) and found significantly higher noise-correlation and positive correlation between the populations' signal- and noise-correlation during NR trials as compared to R trials. This pattern is evident in data from two non-human primates (NHPs) during single-target center out reaching tasks, both manual and action observation versions. We conducted a mean matched noise-correlation analysis to decouple known interactions between event-triggered firing rate changes and neural correlations. Isolated reward discriminatory units demonstrated stronger correlational changes than units unresponsive to reward firing rate modulation, however, the qualitative response was similar, indicating correlational changes within the network as a whole can serve as another information channel to be exploited by BCIs that track the underlying cortical state, such as reward expectation, or attentional modulation. Reward expectation and attention in return can be utilized with reinforcement learning (RL) towards autonomous BCI updating.
奖赏调制在运动皮层(M1)中有所体现,可用于实现更精确的解码模型以改进脑机接口(BCIs;Zhao等人,2018年)。分析在有奖励(R)和无奖励(NR)刺激情况下神经单元之间的逐次试验噪声相关性,有助于我们理解皮层网络动力学。我们利用皮尔逊相关系数来测量同时记录的单元(32 - 112个)之间的共享变异性,发现与R试验相比,NR试验期间群体的信号相关性和噪声相关性之间的噪声相关性显著更高且呈正相关。这种模式在两只非人类灵长类动物(NHPs)进行单目标中心外伸任务(包括手动和动作观察版本)的数据中很明显。我们进行了平均匹配噪声相关性分析,以解耦事件触发的 firing rate 变化与神经相关性之间的已知相互作用。孤立的奖赏辨别单元表现出比那些对奖赏 firing rate 调制无反应的单元更强的相关性变化,然而,定性反应是相似的,这表明整个网络内的相关性变化可作为另一个信息通道,供追踪潜在皮层状态(如奖赏期望或注意力调制)的脑机接口利用。反过来,奖赏期望和注意力可与强化学习(RL)一起用于自主脑机接口更新。