Department of Psychiatry & Behavioral Neuroscience, Wayne State University SOM, Detroit, MI, USA.
Cogn Neurodyn. 2008 Sep;2(3):207-19. doi: 10.1007/s11571-008-9054-0. Epub 2008 Jun 16.
Associative learning is a central building block of human cognition and in large part depends on mechanisms of synaptic plasticity, memory capacity and fronto-hippocampal interactions. A disorder like schizophrenia is thought to be characterized by altered plasticity, and impaired frontal and hippocampal function. Understanding the expression of this dysfunction through appropriate experimental studies, and understanding the processes that may give rise to impaired behavior through biologically plausible computational models will help clarify the nature of these deficits. We present a preliminary computational model designed to capture learning dynamics in healthy control and schizophrenia subjects. Experimental data was collected on a spatial-object paired-associate learning task. The task evinces classic patterns of negatively accelerated learning in both healthy control subjects and patients, with patients demonstrating lower rates of learning than controls. Our rudimentary computational model of the task was based on biologically plausible assumptions, including the separation of dorsal/spatial and ventral/object visual streams, implementation of rules of learning, the explicit parameterization of learning rates (a plausible surrogate for synaptic plasticity), and learning capacity (a plausible surrogate for memory capacity). Reductions in learning dynamics in schizophrenia were well-modeled by reductions in learning rate and learning capacity. The synergy between experimental research and a detailed computational model of performance provides a framework within which to infer plausible biological bases of impaired learning dynamics in schizophrenia.
联想学习是人类认知的核心组成部分,在很大程度上依赖于突触可塑性、记忆容量和额-海马相互作用的机制。精神分裂症等疾病被认为以可塑性改变、额叶和海马功能受损为特征。通过适当的实验研究来理解这种功能障碍的表现,并通过具有生物学合理性的计算模型来理解可能导致行为障碍的过程,将有助于阐明这些缺陷的本质。我们提出了一个初步的计算模型,旨在捕捉健康对照组和精神分裂症患者的学习动态。在空间-物体配对联想学习任务上收集了实验数据。该任务在健康对照组和患者中表现出经典的负加速学习模式,患者的学习速度比对照组慢。我们对该任务的初步计算模型基于生物学上合理的假设,包括分离背侧/空间和腹侧/物体视觉流、学习规则的实施、学习率的显式参数化(突触可塑性的合理替代物)以及学习能力(记忆容量的合理替代物)。学习率和学习能力的降低很好地模拟了精神分裂症中学习动态的降低。实验研究和对性能的详细计算模型之间的协同作用为推断精神分裂症中受损学习动态的可能生物学基础提供了一个框架。