Kavli Institute for Systems Neuroscience and Centre for the Biology of Memory, Norwegian University of Science and Technology, Trondheim, Norway.
J Neurophysiol. 2010 Jul;104(1):35-50. doi: 10.1152/jn.00202.2010. Epub 2010 May 5.
The autoassociative memory model of hippocampal field CA3 postulates that Hebbian associations among external input features produce attractor states embedded in a recurrent synaptic matrix. In contrast, the attractor-map model postulates that a two-dimensional continuum of attractor states is preconfigured in the network during development and that transitions among these states are governed primarily by self-motion information ("path-integration"), giving rise to the strong spatial characteristic of hippocampal activity. In this model, learned associations between "coordinates" on the attractor map and external cues can result in abrupt jumps between states, in the case of mismatches between the current input and previous associations between internal coordinates and external landmarks. Both models predict attractor dynamics, but for fundamentally different reasons; however, the two models are not a priori mutually exclusive. We contrasted these two models by comparing the dynamics of state transitions when two previously learned environmental shapes were morphed between their endpoints, in animals that had first experienced the environments either at the same location, or at two different locations, connected by a passageway through which they walked. As predicted from attractor-map theory, the latter animals expressed abrupt transitions between representations at the midpoint of the morph series. Contrary to the predictions of autoassociation theory, the former group expressed no evidence of attractor dynamics during the morph series; there was only a gradual transition between endpoints. The results of this critical test thus cast the autoassociator theory for CA3 into doubt and indicate the need for a new theory for this structure.
海马 CA3 区的自联想记忆模型假设,外部输入特征之间的赫布关联产生嵌入在递归突触矩阵中的吸引子状态。相比之下,吸引子图模型假设,在网络的发展过程中,二维的吸引子状态连续体在网络中预先配置,并且这些状态之间的转变主要由自身运动信息(“路径整合”)控制,从而产生了海马体活动的强烈空间特征。在这个模型中,在当前输入与内部坐标和外部地标之间的先前关联不匹配的情况下,“吸引子图上的坐标”与外部提示之间的习得关联可以导致状态之间的突然跳转。这两个模型都预测了吸引子动力学,但原因截然不同;然而,这两个模型不是先验相互排斥的。我们通过比较两种先前学习的环境形状在其端点之间进行变形时状态转换的动力学,来对比这两种模型,这些动物首先在相同的位置或通过通道连接的两个不同位置经历过这些环境,然后在通道中行走。正如吸引子图理论所预测的那样,后者动物在形态系列的中点表现出代表之间的突然转变。与自联想理论的预测相反,前一组在形态系列中没有表现出吸引子动力学的证据;只有在端点之间的逐渐过渡。因此,这一关键测试的结果对 CA3 的自联想器理论提出了质疑,并表明需要为这个结构提出一个新的理论。