Chemnitz University of Technology, Department of Computer Science, 09107 Chemnitz, Germany.
University of California Davis Center for Neuroscience and Department of Neurobiology, Physiology and Behavior, Davis, California 95616, and.
J Neurosci. 2018 Oct 31;38(44):9551-9562. doi: 10.1523/JNEUROSCI.0874-18.2018. Epub 2018 Sep 18.
In addition to the prefrontal cortex (PFC), the basal ganglia (BG) have been increasingly often reported to play a fundamental role in category learning, but the circuit mechanisms mediating their interaction remain to be explored. We developed a novel neurocomputational model of category learning that particularly addresses the BG-PFC interplay. We propose that the BG bias PFC activity by removing the inhibition of cortico-thalamo-cortical loop and thereby provide a teaching signal to guide the acquisition of category representations in the corticocortical associations to the PFC. Our model replicates key behavioral and physiological data of macaque monkey learning a prototype distortion task from Antzoulatos and Miller (2011) Our simulations allowed us to gain a deeper insight into the observed drop of category selectivity in striatal neurons seen in the experimental data and in the model. The simulation results and a new analysis of the experimental data based on the model's predictions show that the drop in category selectivity of the striatum emerges as the variability of responses in the striatum rises when confronting the BG with an increasingly larger number of stimuli to be classified. The neurocomputational model therefore provides new testable insights of systems-level brain circuits involved in category learning that may also be generalized to better understand other cortico-BG-cortical loops. Inspired by the idea that basal ganglia (BG) teach the prefrontal cortex (PFC) to acquire category representations, we developed a novel neurocomputational model and tested it on a task that was recently applied in monkey experiments. As an advantage over previous models of category learning, our model allows to compare simulation data with single-cell recordings in PFC and BG. We not only derived model predictions, but already verified a prediction to explain the observed drop in striatal category selectivity. When testing our model with a simple, real-world face categorization task, we observed that the fast striatal learning with a performance of 85% correct responses can teach the slower PFC learning to push the model performance up to almost 100%.
除了前额叶皮层(PFC),基底神经节(BG)在类别学习中也越来越被认为起着至关重要的作用,但介导它们相互作用的回路机制仍有待探索。我们开发了一种新的类别学习神经计算模型,该模型特别针对 BG-PFC 的相互作用。我们提出,基底神经节通过去除皮质-丘脑-皮质回路的抑制作用来偏向 PFC 活动,从而提供一个教学信号来指导 PFC 中类别表示的获取。我们的模型复制了 Antzoulatos 和 Miller(2011)的猕猴原型变形任务学习的关键行为和生理数据。我们的模拟使我们能够更深入地了解实验数据和模型中观察到的纹状体神经元类别选择性下降。模拟结果和基于模型预测的实验数据的新分析表明,当面对越来越多的要分类的刺激时,纹状体的类别选择性下降是由于纹状体的反应变异性增加而出现的。因此,神经计算模型为涉及类别学习的系统水平大脑回路提供了新的可测试见解,也可能有助于更好地理解其他皮质-BG-皮质回路。受基底神经节(BG)教导前额叶皮层(PFC)获取类别表示的想法启发,我们开发了一种新的神经计算模型,并在最近应用于猴子实验的任务上进行了测试。与类别学习的先前模型相比,我们的模型允许将模拟数据与 PFC 和 BG 的单细胞记录进行比较。我们不仅推导出了模型预测,还验证了一个预测来解释观察到的纹状体类别选择性下降。当我们用一个简单的、现实世界的面孔分类任务来测试我们的模型时,我们观察到快速的纹状体学习可以以 85%的正确响应率进行,并且可以教导较慢的 PFC 学习将模型性能提高到几乎 100%。