Institute of Science and Technology Austria, Klosterneuburg AT-3400, Austria.
Janelia Research Campus, Howard Hughes Medical Institute, Ashburn, Virginia 20147.
J Neurosci. 2023 Nov 29;43(48):8140-8156. doi: 10.1523/JNEUROSCI.0194-23.2023.
Although much is known about how single neurons in the hippocampus represent an animal's position, how circuit interactions contribute to spatial coding is less well understood. Using a novel statistical estimator and theoretical modeling, both developed in the framework of maximum entropy models, we reveal highly structured CA1 cell-cell interactions in male rats during open field exploration. The statistics of these interactions depend on whether the animal is in a familiar or novel environment. In both conditions the circuit interactions optimize the encoding of spatial information, but for regimes that differ in the informativeness of their spatial inputs. This structure facilitates linear decodability, making the information easy to read out by downstream circuits. Overall, our findings suggest that the efficient coding hypothesis is not only applicable to individual neuron properties in the sensory periphery, but also to neural interactions in the central brain. Local circuit interactions play a key role in neural computation and are dynamically shaped by experience. However, measuring and assessing their effects during behavior remains a challenge. Here, we combine techniques from statistical physics and machine learning to develop new tools for determining the effects of local network interactions on neural population activity. This approach reveals highly structured local interactions between hippocampal neurons, which make the neural code more precise and easier to read out by downstream circuits, across different levels of experience. More generally, the novel combination of theory and data analysis in the framework of maximum entropy models enables traditional neural coding questions to be asked in naturalistic settings.
虽然人们已经了解了海马体中的单个神经元如何表示动物的位置,但对于电路相互作用如何有助于空间编码,人们的了解还比较有限。我们使用一种新颖的统计估计器和理论模型,这两种方法都是在最大熵模型的框架内开发的,揭示了雄性大鼠在开放场探索过程中 CA1 细胞间相互作用的高度结构化。这些相互作用的统计数据取决于动物是处于熟悉的环境还是陌生的环境中。在这两种情况下,电路相互作用都优化了空间信息的编码,但对于空间输入信息量不同的情况则有所不同。这种结构促进了线性可解码性,使得下游电路更容易读取信息。总的来说,我们的发现表明,有效编码假说不仅适用于感觉外围的单个神经元特性,也适用于中枢大脑中的神经相互作用。局部电路相互作用在神经计算中起着关键作用,并受经验的动态影响。然而,在行为过程中测量和评估它们的影响仍然是一个挑战。在这里,我们结合统计物理和机器学习的技术,开发了新的工具来确定局部网络相互作用对神经群体活动的影响。这种方法揭示了海马体神经元之间高度结构化的局部相互作用,这些相互作用使神经编码更加精确,并且更容易被下游电路读取,跨越了不同的经验水平。更广泛地说,最大熵模型框架中的理论和数据分析的新颖组合使传统的神经编码问题能够在自然环境中提出。