Princeton Neuroscience Institute, Princeton University, Princeton, United States.
Computer Science Department, Princeton University, Princeton, United States.
Elife. 2022 Nov 16;11:e76120. doi: 10.7554/eLife.76120.
Learning from experience depends at least in part on changes in neuronal connections. We present the largest map of connectivity to date between cortical neurons of a defined type (layer 2/3 [L2/3] pyramidal cells in mouse primary visual cortex), which was enabled by automated analysis of serial section electron microscopy images with improved handling of image defects (250 × 140 × 90 μm volume). We used the map to identify constraints on the learning algorithms employed by the cortex. Previous cortical studies modeled a continuum of synapse sizes by a log-normal distribution. A continuum is consistent with most neural network models of learning, in which synaptic strength is a continuously graded analog variable. Here, we show that synapse size, when restricted to synapses between L2/3 pyramidal cells, is well modeled by the sum of a binary variable and an analog variable drawn from a log-normal distribution. Two synapses sharing the same presynaptic and postsynaptic cells are known to be correlated in size. We show that the binary variables of the two synapses are highly correlated, while the analog variables are not. Binary variation could be the outcome of a Hebbian or other synaptic plasticity rule depending on activity signals that are relatively uniform across neuronal arbors, while analog variation may be dominated by other influences such as spontaneous dynamical fluctuations. We discuss the implications for the longstanding hypothesis that activity-dependent plasticity switches synapses between bistable states.
学习经验至少部分取决于神经元连接的变化。我们展示了迄今为止最大的皮质神经元连接图,这些神经元是通过对具有改进的图像缺陷处理能力的连续切片电子显微镜图像进行自动分析而确定的(250×140×90μm 体积)。我们使用该图谱来确定皮质中使用的学习算法的约束条件。以前的皮质研究通过对数正态分布来模拟突触大小的连续统。连续统与学习的大多数神经网络模型一致,其中突触强度是连续分级模拟变量。在这里,我们表明,当将突触大小限制在 L2/3 锥体神经元之间的突触时,突触大小可以很好地由来自对数正态分布的二进制变量和模拟变量的和来建模。两个具有相同的前突触和后突触细胞的突触已知在大小上是相关的。我们表明,两个突触的二进制变量高度相关,而模拟变量则不相关。二进制变化可能是赫布或其他依赖于活动信号的突触可塑性规则的结果,而活动信号在神经元树突中相对均匀,而模拟变化可能受其他影响(如自发动态波动)的支配。我们讨论了这对长期存在的假设的影响,即活动依赖性可塑性在双稳态状态之间切换突触。