Smith Darren, Wessnitzer Jan, Webb Barbara
IPAB, School of Informatics, University of Edinburgh, Mayfield Road, Edinburgh, EH9 3JZ, UK.
Biol Cybern. 2008 Aug;99(2):89-103. doi: 10.1007/s00422-008-0241-1. Epub 2008 Jul 8.
The mushroom body is a prominent invertebrate neuropil strongly associated with learning and memory. We built a high-level computational model of this structure using simplified but realistic models of neurons and synapses, and developed a learning rule based on activity dependent pre-synaptic facilitation. We show that our model, which is consistent with mushroom body Drosophila data and incorporates Aplysia learning, is able to both acquire and later recall CS-US associations. We demonstrate that a highly divergent input connectivity to the mushroom body and strong periodic inhibition both serve to improve overall learning performance. We also examine the problem of how synaptic conductance, driven by successive training events, obtains a value appropriate for the stimulus being learnt. We employ two feedback mechanisms: one stabilises strength at an initial level appropriate for an association; another prevents strength increase for established associations.
蘑菇体是一种与学习和记忆密切相关的突出的无脊椎动物神经纤维网。我们使用简化但逼真的神经元和突触模型构建了该结构的高级计算模型,并基于活动依赖的突触前易化开发了一种学习规则。我们表明,我们的模型与果蝇蘑菇体数据一致并纳入了海兔学习,能够获取并随后回忆起条件刺激-非条件刺激关联。我们证明,蘑菇体高度发散的输入连接性和强烈的周期性抑制都有助于提高整体学习性能。我们还研究了由连续训练事件驱动的突触电导如何获得适合所学刺激的值这一问题。我们采用了两种反馈机制:一种将强度稳定在适合某种关联的初始水平;另一种防止已建立关联的强度增加。