Drapała Jarosław, Frydecka Dorota
Department of Computer Science and Systems Engineering, Faculty of Information and Communication Technology, Wroclaw University of Science and Technology, Wybrzeze Wyspianskiego Street 27, 50-370 Wroclaw, Poland.
Department of Psychiatry, Wroclaw Medical University, Pasteur Street 10, 50-367 Wroclaw, Poland.
Brain Sci. 2022 Feb 14;12(2):262. doi: 10.3390/brainsci12020262.
Computational models of the basal ganglia (BG) provide a mechanistic account of different phenomena observed during reinforcement learning tasks performed by healthy individuals, as well as by patients with various nervous or mental disorders. The aim of the present work was to develop a BG model that could represent a good compromise between simplicity and completeness. Based on more complex (fine-grained neural network, FGNN) models, we developed a new (coarse-grained neural network, CGNN) model by replacing layers of neurons with single nodes that represent the collective behavior of a given layer while preserving the fundamental anatomical structures of BG. We then compared the functionality of both the FGNN and CGNN models with respect to several reinforcement learning tasks that are based on BG circuitry, such as the Probabilistic Selection Task, Probabilistic Reversal Learning Task and Instructed Probabilistic Selection Task. We showed that CGNN still has a functionality that mirrors the behavior of the most often used reinforcement learning tasks in human studies. The simplification of the CGNN model reduces its flexibility but improves the readability of the signal flow in comparison to more detailed FGNN models and, thus, can help to a greater extent in the translation between clinical neuroscience and computational modeling.
基底神经节(BG)的计算模型为健康个体以及患有各种神经或精神疾病的患者在强化学习任务中观察到的不同现象提供了一种机制性解释。本研究的目的是开发一种BG模型,该模型能够在简单性和完整性之间达成良好的平衡。基于更复杂的(细粒度神经网络,FGNN)模型,我们通过用单个节点替换神经元层来开发一种新的(粗粒度神经网络,CGNN)模型,这些单个节点代表给定层的集体行为,同时保留BG的基本解剖结构。然后,我们针对基于BG电路的几个强化学习任务,如概率选择任务、概率反转学习任务和指令概率选择任务,比较了FGNN和CGNN模型的功能。我们表明,CGNN仍然具有反映人类研究中最常用的强化学习任务行为的功能。与更详细的FGNN模型相比,CGNN模型的简化降低了其灵活性,但提高了信号流的可读性,因此在更大程度上有助于临床神经科学与计算建模之间的转化。