Santos-Pata Diogo, Amil Adrián F, Raikov Ivan Georgiev, Rennó-Costa César, Mura Anna, Soltesz Ivan, Verschure Paul F M J
Laboratory of Synthetic, Perceptive, Emotive and Cognitive Systems (SPECS), Institute for Bioengineering of Catalonia (IBEC), Barcelona, Spain.
Universitat Pompeu Fabra (UPF), Barcelona, Spain.
iScience. 2021 Mar 26;24(4):102364. doi: 10.1016/j.isci.2021.102364. eCollection 2021 Apr 23.
The hippocampal formation displays a wide range of physiological responses to different spatial manipulations of the environment. However, very few attempts have been made to identify core computational principles underlying those hippocampal responses. Here, we capitalize on the observation that the entorhinal-hippocampal complex (EHC) forms a closed loop and projects inhibitory signals "countercurrent" to the trisynaptic pathway to build a self-supervised model that learns to reconstruct its own inputs by error backpropagation. The EHC is then abstracted as an autoencoder, with the hidden layers acting as an information bottleneck. With the inputs mimicking the firing activity of lateral and medial entorhinal cells, our model is shown to generate place cells and to respond to environmental manipulations as observed in rodent experiments. Altogether, we propose that the hippocampus builds conjunctive compressed representations of the environment by learning to reconstruct its own entorhinal inputs via gradient descent.
海马结构对环境的不同空间操作表现出广泛的生理反应。然而,很少有人尝试确定这些海马反应背后的核心计算原理。在此,我们利用内嗅 - 海马复合体(EHC)形成闭环并向三突触通路“逆流”投射抑制性信号这一观察结果,构建一个自监督模型,该模型通过误差反向传播学习重建自身输入。然后将EHC抽象为一个自动编码器,其中隐藏层充当信息瓶颈。通过输入模拟外侧和内侧内嗅细胞的放电活动,我们的模型显示能产生位置细胞,并像在啮齿动物实验中观察到的那样对环境操作做出反应。总之,我们提出海马通过学习经由梯度下降重建自身的内嗅输入来构建环境的联合压缩表征。