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Pattern separation of spiketrains in hippocampal neurons

机译:海马神经元穗穗分离

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Pattern separation is a process that minimizes overlap between patterns of neuronal activity representing similar experiences. Theoretical work suggests that the dentate gyrus (DG) performs this role for memory processing but a direct demonstration is lacking. One limitation is the difficulty to measure DG inputs and outputs simultaneously. To rigorously assess pattern separation by DG circuitry, we used mouse brain slices to stimulate DG afferents and simultaneously record DG granule cells (GCs) and interneurons. Output spiketrains of GCs are more dissimilar than their input spiketrains, demonstrating for the first time temporal pattern separation at the level of single neurons in the DG. Pattern separation is larger in GCs than in fast-spiking interneurons and hilar mossy cells, and is amplified in CA3 pyramidal cells. Analysis of the neural noise and computational modelling suggest that this form of pattern separation is not explained by simple randomness and arises from specific presynaptic dynamics. Overall, by reframing the concept of pattern separation in dynamic terms and by connecting it to the physiology of different types of neurons, our study offers a new window of understanding in how hippocampal networks might support episodic memory.
机译:图案分离是一种过程,其最小化代表类似经验的神经元活动模式之间的重叠。理论上的工作表明,牙齿回形物(DG)对内存处理执行此作用,但缺乏直接演示。一个限制是难以同时测量DG输入和输出。为了严格评估DG电路的模式分离,我们使用小鼠脑切片刺激DG传入,同时记录DG颗粒细胞(GCS)和中间核。 GCS的输出穗比它们的输入尖峰更加异常,在DG中的单个神经元的水平上展示了第一次暂时分离。 GCS的图案分离比在快速尖峰的中间核和肺血管细胞中更大,并且在Ca 3金字塔型细胞中扩增。神经噪声和计算建模的分析表明,这种形式的模式分离不是通过简单的随机性解释的,并且由特定的突触前动力学产生。总体而言,通过恢复动态术语的模式分离的概念,并通过将其连接到不同类型神经元的生理学,我们的研究提供了一个新的理解窗口,在海马网络如何支持集中内存。

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