Instituto Cajal. CSIC, Madrid, Spain.
Department of Physiology, Faculty of Medicine, Universidad Complutense de Madrid, Madrid, Spain.
Nat Neurosci. 2023 Dec;26(12):2171-2181. doi: 10.1038/s41593-023-01471-9. Epub 2023 Nov 9.
The reactivation of experience-based neural activity patterns in the hippocampus is crucial for learning and memory. These reactivation patterns and their associated sharp-wave ripples (SWRs) are highly variable. However, this variability is missed by commonly used spectral methods. Here, we use topological and dimensionality reduction techniques to analyze the waveform of ripples recorded at the pyramidal layer of CA1. We show that SWR waveforms distribute along a continuum in a low-dimensional space, which conveys information about the underlying layer-specific synaptic inputs. A decoder trained in this space successfully links individual ripples with their expected sinks and sources, demonstrating how physiological mechanisms shape SWR variability. Furthermore, we found that SWR waveforms segregated differently during wakefulness and sleep before and after a series of cognitive tasks, with striking effects of novelty and learning. Our results thus highlight how the topological analysis of ripple waveforms enables a deeper physiological understanding of SWRs.
海马体中基于经验的神经活动模式的重新激活对于学习和记忆至关重要。这些重激活模式及其相关的尖波涟漪 (SWR) 高度可变。然而,常用的谱方法会忽略这种可变性。在这里,我们使用拓扑和降维技术来分析 CA1 锥体层记录的涟漪波形。我们表明,SWR 波形沿着低维空间中的连续体分布,该连续体传达了关于潜在层特定突触输入的信息。在这个空间中训练的解码器成功地将单个涟漪与其预期的汇点和源点联系起来,展示了生理机制如何塑造 SWR 的可变性。此外,我们发现,在一系列认知任务前后,在清醒和睡眠期间,SWR 波形的分离方式不同,新奇和学习的影响显著。因此,我们的研究结果突出了如何通过对涟漪波形的拓扑分析来深入了解 SWR 的生理机制。