University of Pittsburgh, Department of Mathematics, Pittsburgh, PA 15213, USA.
Neural Netw. 2012 Mar;27:21-31. doi: 10.1016/j.neunet.2011.09.007. Epub 2011 Oct 12.
Recurrent networks of cortico-cortical connections have been implicated as the substrate of working memory persistent activity, and patterned sequenced representation as needed in cognitive function. We examine the pathological behavior which may result from specific changes in the normal parameters or architecture in a biologically plausible computational working memory model capable of learning and reproducing sequences which come from external stimuli. Specifically, we examine systematical reductions in network inhibition, excitatory potentiation, delays in excitatory connections, and heterosynaptic plasticity. We show that these changes result in a set of dynamics which may be associated with cognitive symptoms associated with different neuropathologies, particularly epilepsy, schizophrenia, and obsessive compulsive disorders. We demonstrate how cognitive symptoms in these disorders may arise from similar or the same general mechanisms acting in the recurrent working memory networks. We suggest that these pathological dynamics may form a set overlapping states within the normal network function, and relate this to observed associations between different pathologies.
皮质-皮质连接的循环网络被认为是工作记忆持久活动的基础,也是认知功能中所需的模式化序列表示。我们研究了在一个能够学习和再现来自外部刺激的序列的生物上合理的计算工作记忆模型中,正常参数或结构的特定变化可能导致的病理行为。具体来说,我们研究了网络抑制、兴奋性增强、兴奋性连接延迟和异突触可塑性的系统减少。我们表明,这些变化导致了一组动力学,这些动力学可能与不同神经病理学相关的认知症状有关,特别是癫痫、精神分裂症和强迫症。我们展示了这些疾病中的认知症状如何可能源于在反复的工作记忆网络中起作用的相似或相同的一般机制。我们建议这些病理动力学可能在正常网络功能的重叠状态下形成一组,并将其与不同病理学之间的观察到的关联联系起来。