Becker Suzanna
Department of Psychology, Neuroscience, and Behavior, McMaster University, Ontario, Canada.
Hippocampus. 2005;15(6):722-38. doi: 10.1002/hipo.20095.
In the three decades since Marr put forward his computational theory of hippocampal coding, many computational models have been built on the same key principles proposed by Marr: sparse representations, rapid Hebbian storage, associative recall and consolidation. Most of these models have focused on either the CA3 or CA1 fields, using "off-the-shelf" learning algorithms such as competitive learning or Hebbian pattern association. Here, we propose a novel coding principle that is common to all hippocampal regions, and from this one principal, we derive learning rules for each of the major pathways within the hippocampus. The learning rules turn out to have much in common with several models of CA3 and CA1 in the literature, and provide a unifying framework in which to view these models. Simulations of the complete circuit confirm that both recognition memory and recall are superior relative to a hippocampally lesioned model, consistent with human data. Further, we propose a functional role for neurogenesis in the dentate gyrus (DG), namely, to create distinct memory traces for highly similar items. Our simulation results support our prediction that memory capacity increases with the number of dentate granule cells, while neuronal turnover with a fixed dentate layer size improves recall, by minimizing interference between highly similar items.
自从马尔提出他的海马体编码计算理论以来的三十年里,许多计算模型都是基于马尔提出的相同关键原则构建的:稀疏表示、快速赫布存储、联想回忆和巩固。这些模型大多聚焦于CA3或CA1区域,使用诸如竞争学习或赫布模式关联等“现成的”学习算法。在此,我们提出一种适用于所有海马体区域的新颖编码原则,并从这一原则推导出海马体内各主要通路的学习规则。结果表明,这些学习规则与文献中几种CA3和CA1模型有许多共同之处,并提供了一个统一的框架来审视这些模型。对完整回路的模拟证实,相对于海马体损伤模型,识别记忆和回忆都更出色,这与人类数据一致。此外,我们提出了齿状回(DG)中神经发生的一个功能作用,即,为高度相似的项目创建不同的记忆痕迹。我们的模拟结果支持了我们的预测,即记忆容量随着齿状颗粒细胞数量的增加而增加,而在齿状层大小固定的情况下神经元更替通过最小化高度相似项目之间的干扰来改善回忆。