Department of Neurology, McGovern Medical School, The University of Texas, Houston, TX 77030.
Department of Neuroscience, Baylor College of Medicine, Houston, TX 77030.
Proc Natl Acad Sci U S A. 2023 Apr 4;120(14):e2218245120. doi: 10.1073/pnas.2218245120. Epub 2023 Mar 28.
Our current understanding of brain rhythms is based on quantifying their instantaneous or time-averaged characteristics. What remains unexplored is the actual structure of the waves-their shapes and patterns over finite timescales. Here, we study brain wave patterning in different physiological contexts using two independent approaches: The first is based on quantifying stochasticity relative to the underlying mean behavior, and the second assesses "orderliness" of the waves' features. The corresponding measures capture the waves' characteristics and abnormal behaviors, such as atypical periodicity or excessive clustering, and demonstrate coupling between the patterns' dynamics and the animal's location, speed, and acceleration. Specifically, we studied patterns of , , and ripple waves recorded in mice hippocampi and observed speed-modulated changes of the wave's cadence, an antiphase relationship between orderliness and acceleration, as well as spatial selectiveness of patterns. Taken together, our results offer a complementary-mesoscale-perspective on brain wave structure, dynamics, and functionality.
我们目前对于脑波的理解是基于对其瞬时或时间平均特征的量化。尚未被探索的是波的实际结构——它们在有限时间尺度上的形状和模式。在这里,我们使用两种独立的方法研究了不同生理环境下的脑波模式:第一种方法是基于相对于基础平均行为的随机性进行量化,第二种方法则评估了波的特征的“有序性”。相应的测量方法捕捉了波的特征和异常行为,例如非典型周期性或过度聚类,并证明了模式动力学与动物位置、速度和加速度之间的耦合。具体来说,我们研究了在小鼠海马体中记录的θ、α 和涟漪波的模式,并观察到了波的节奏的速度调制变化、有序性和加速度之间的反相关关系,以及模式的空间选择性。总的来说,我们的结果提供了对脑波结构、动力学和功能的互补中尺度视角。