Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:6699-6702. doi: 10.1109/EMBC46164.2021.9630322.
Studies have shown that medial prefrontal cortex (mPFC) is responsible for outcome evaluation. Some recent studies also suggest that mPFC may play an important role in goal planning and action execution when performing a task. If the information encoded in mPFC can be accurately extracted and identified, it can improve the design of brain-machine interfaces by better reconstructing subjects' motion intention guided by reward information. In this paper, we investigate whether mPFC neural signals simultaneously encode information of goal planning, action execution and outcome evaluation. Linear-nonlinear-Poisson (LNP) model is applied for encoding analysis on mPFC neural spike data when a rat is learning a two-lever-press discrimination task. We use the L-norm of tuning parameter in LNP model to indicate the importance of the encoded information and compare the spike train prediction performance of LNP model using all information, the most significant information and reward information only. The preliminary results indicate that mPFC activity can encode simultaneously the information of goal planning, action execution and outcome evaluation and that all the relevant information could be reconstructed from mPFC spike trains on a single trial basis.
研究表明,内侧前额叶皮层(mPFC)负责结果评估。一些最近的研究还表明,mPFC 在执行任务时可能在目标规划和动作执行中发挥重要作用。如果可以准确提取和识别 mPFC 中编码的信息,通过更好地重建基于奖励信息的受试者运动意图,那么这可以改进脑机接口的设计。在本文中,我们研究 mPFC 神经信号是否同时编码目标规划、动作执行和结果评估的信息。当大鼠学习双杆按压辨别任务时,应用线性-非线性-泊松(LNP)模型对 mPFC 神经尖峰数据进行编码分析。我们使用 LNP 模型中调参的 L-范数来表示编码信息的重要性,并比较使用所有信息、最重要信息和仅奖励信息的 LNP 模型的尖峰序列预测性能。初步结果表明,mPFC 活动可以同时编码目标规划、动作执行和结果评估的信息,并且可以从单个试验的 mPFC 尖峰序列中重建所有相关信息。