Sabri Ehsan, Batista-Brito Renata
Dominick P. Purpura Department of Neuroscience, Albert Einstein College of Medicine, Bronx, New York, United States of America.
Department of Psychiatry and Behavioral Sciences, Albert Einstein College of Medicine, Bronx, New York, United States of America.
PLoS Comput Biol. 2025 Jun 4;21(6):e1013084. doi: 10.1371/journal.pcbi.1013084. eCollection 2025 Jun.
Neural oscillations are prominent features of brain activity, characterized by frequency-specific power changes in electroencephalograms (EEG) and local field potentials (LFP). These oscillations also appear as rhythmic coherence across brain regions. While the identification of oscillations has primarily relied on EEG and LFP, they are also present in neuronal spiking. However, several questions remain unanswered: How do spiking oscillations relate to field potential oscillations? How are spiking oscillations correlated across brain regions? And how are they connected to other physiological and behavioral measures. In this study, we explore the potential to detect individual cycles of neural rhythms solely through the spiking activity of neurons, leveraging recent advances in the high-density recording of large neuronal populations within local networks. The pooled spiking rate of many neurons within a local population reflects shared variation in the membrane potential of nearby neurons, allowing us to identify cyclic patterns. To achieve this, we utilize a Long Short Term Memory (LSTM) network, pre-trained on synthetic data, to effectively isolate and align individual cycles of neural oscillations in the spiking of a densely recorded population of neurons. We applied this approach to robustly isolate specific neural cycles across various brain regions in mice, covering a broad range of timescales, from gamma rhythms to ultra-slow rhythms lasting up to hundreds of seconds. These ultra-slow rhythms, often underrepresented in the LFP, were also detected in behavioral measures of arousal, such as pupil size and mouse facial motion. Interestingly, these rhythms showed delayed coherence with corresponding rhythms in the population spiking activity. Using these isolated neural cycles, we addressed two key questions: 1) How can we account for biological variation in neural signal transmission timing across trials during the sensory stimulation experiments? By isolating gamma cycles driven by sensory input, we achieved a more accurate trial alignment in the sensory stimulation experiments conducted in the primary visual cortex (V1) of mice. This alignment accounts for biological variability in sensory signal transmission times from the retina to V1 across trials, enabling a clearer understanding of neural dynamics in response to sensory stimuli. 2) How do spiking correlations across brain regions vary by timescale? We used the distinct spiking cycles in simultaneously recorded brain regions to examine the correlation of spiking across brain regions, separately for different timescales. Our findings revealed that the delays in population spiking between brain regions vary depending on the brain regions involved and the timescale of the oscillations. This work demonstrates the utility of population spiking activity for isolating neural rhythms, providing insights into oscillatory dynamics across brain regions and their relationship to physiological and behavioral measures.
神经振荡是大脑活动的显著特征,其特点是脑电图(EEG)和局部场电位(LFP)中特定频率的功率变化。这些振荡也表现为跨脑区的节律性相干性。虽然振荡的识别主要依赖于EEG和LFP,但它们也存在于神经元放电中。然而,仍有几个问题未得到解答:放电振荡与场电位振荡有何关系?放电振荡在脑区之间如何相关?以及它们如何与其他生理和行为指标相联系。在本研究中,我们利用局部网络内大神经元群体高密度记录的最新进展,探索仅通过神经元的放电活动检测神经节律单个周期的潜力。局部群体中许多神经元的汇总放电率反映了附近神经元膜电位的共同变化,使我们能够识别周期性模式。为实现这一点,我们利用在合成数据上预训练的长短期记忆(LSTM)网络,有效地分离和对齐密集记录的神经元群体放电中的神经振荡单个周期。我们将这种方法应用于稳健地分离小鼠不同脑区的特定神经周期,涵盖从伽马节律到持续长达数百秒的超慢节律等广泛的时间尺度。这些超慢节律在LFP中通常代表性不足,但在诸如瞳孔大小和小鼠面部运动等觉醒行为指标中也被检测到。有趣的是,这些节律与群体放电活动中的相应节律显示出延迟相干性。利用这些分离的神经周期,我们解决了两个关键问题:1)在感觉刺激实验中,我们如何解释神经信号传输时间在不同试验中的生物学变异?通过分离由感觉输入驱动的伽马周期,我们在小鼠初级视觉皮层(V1)进行的感觉刺激实验中实现了更准确的试验对齐。这种对齐考虑了从视网膜到V1的感觉信号传输时间在不同试验中的生物学变异性,从而能够更清晰地理解对感觉刺激的神经动力学反应。2)跨脑区的放电相关性如何随时间尺度变化?我们利用同时记录的脑区中不同的放电周期,分别针对不同时间尺度检查跨脑区的放电相关性。我们的研究结果表明,脑区之间群体放电的延迟取决于所涉及的脑区和振荡的时间尺度。这项工作证明了群体放电活动在分离神经节律方面的效用,为跨脑区的振荡动力学及其与生理和行为指标的关系提供了见解。