INFN, Sezione di Roma, Rome, Italy.
PhD Program in Behavioural Neuroscience, "Sapienza" University of Rome, Rome, Italy.
Commun Biol. 2023 Mar 13;6(1):266. doi: 10.1038/s42003-023-04580-0.
The development of novel techniques to record wide-field brain activity enables estimation of data-driven models from thousands of recording channels and hence across large regions of cortex. These in turn improve our understanding of the modulation of brain states and the richness of traveling waves dynamics. Here, we infer data-driven models from high-resolution in-vivo recordings of mouse brain obtained from wide-field calcium imaging. We then assimilate experimental and simulated data through the characterization of the spatio-temporal features of cortical waves in experimental recordings. Inference is built in two steps: an inner loop that optimizes a mean-field model by likelihood maximization, and an outer loop that optimizes a periodic neuro-modulation via direct comparison of observables that characterize cortical slow waves. The model reproduces most of the features of the non-stationary and non-linear dynamics present in the high-resolution in-vivo recordings of the mouse brain. The proposed approach offers new methods of characterizing and understanding cortical waves for experimental and computational neuroscientists.
开发新的技术来记录宽场大脑活动,使我们能够从数千个记录通道和皮质的大区域来估计数据驱动的模型。这些反过来又提高了我们对大脑状态调制和传播波动力学丰富性的理解。在这里,我们从通过宽场钙成像获得的活体小鼠大脑的高分辨率记录中推断出数据驱动的模型。然后,我们通过在实验记录中对皮质波的时空特征进行特征化来同化实验和模拟数据。推断分为两步进行:一个内部循环通过最大化似然来优化均值场模型,一个外部循环通过直接比较特征化皮质慢波的可观察量来优化周期性神经调制。该模型再现了小鼠大脑高分辨率活体记录中存在的非平稳和非线性动力学的大部分特征。所提出的方法为实验和计算神经科学家提供了新的方法来描述和理解皮质波。