Edmond and Lily Safra Center for Brain Sciences (ELSC), The Hebrew University of Jerusalem, Jerusalem 91904, Israel.
Edmond and Lily Safra Center for Brain Sciences (ELSC), The Hebrew University of Jerusalem, Jerusalem 91904, Israel; Department of Neurobiology, The Hebrew University of Jerusalem, Jerusalem 91904, Israel.
Neuron. 2021 Sep 1;109(17):2727-2739.e3. doi: 10.1016/j.neuron.2021.07.002. Epub 2021 Aug 10.
Utilizing recent advances in machine learning, we introduce a systematic approach to characterize neurons' input/output (I/O) mapping complexity. Deep neural networks (DNNs) were trained to faithfully replicate the I/O function of various biophysical models of cortical neurons at millisecond (spiking) resolution. A temporally convolutional DNN with five to eight layers was required to capture the I/O mapping of a realistic model of a layer 5 cortical pyramidal cell (L5PC). This DNN generalized well when presented with inputs widely outside the training distribution. When NMDA receptors were removed, a much simpler network (fully connected neural network with one hidden layer) was sufficient to fit the model. Analysis of the DNNs' weight matrices revealed that synaptic integration in dendritic branches could be conceptualized as pattern matching from a set of spatiotemporal templates. This study provides a unified characterization of the computational complexity of single neurons and suggests that cortical networks therefore have a unique architecture, potentially supporting their computational power.
利用机器学习的最新进展,我们引入了一种系统的方法来描述神经元的输入/输出(I/O)映射复杂性。深度神经网络(DNN)被训练为以毫秒(尖峰)分辨率忠实地复制皮质神经元的各种生物物理模型的 I/O 功能。需要具有五到八个层的时间卷积 DNN 来捕获皮层 5 层锥体神经元(L5PC)的现实模型的 I/O 映射。当呈现广泛超出训练分布的输入时,该 DNN 可以很好地泛化。当去除 NMDA 受体时,一个更简单的网络(具有一个隐藏层的全连接神经网络)就足以拟合模型。对 DNN 权重矩阵的分析表明,树突分支中的突触整合可以被概念化为从一组时空模板进行模式匹配。这项研究提供了对单个神经元计算复杂性的统一描述,并表明皮质网络因此具有独特的架构,可能支持其计算能力。