Department of Neuroimaging, King's College London, London, United Kingdom.
Department of Physics, Imperial College London, London, United Kingdom.
J Comput Neurosci. 2022 May;50(2):241-249. doi: 10.1007/s10827-021-00810-8. Epub 2022 Feb 19.
An isotropic dynamical system is one that looks the same in every direction, i.e., if we imagine standing somewhere within an isotropic system, we would not be able to differentiate between different lines of sight. Conversely, anisotropy is a measure of the extent to which a system deviates from perfect isotropy, with larger values indicating greater discrepancies between the structure of the system along its axes. Here, we derive the form of a generalised scalable (mechanically similar) discretized field theoretic Lagrangian that allows for levels of anisotropy to be directly estimated via timeseries of arbitrary dimensionality. We generate synthetic data for both isotropic and anisotropic systems and, by using Bayesian model inversion and reduction, show that we can discriminate between the two datasets - thereby demonstrating proof of principle. We then apply this methodology to murine calcium imaging data collected in rest and task states, showing that anisotropy can be estimated directly from different brain states and cortical regions in an empirical in vivo biological setting. We hope that this theoretical foundation, together with the methodology and publicly available MATLAB code, will provide an accessible way for researchers to obtain new insight into the structural organization of neural systems in terms of how scalable neural regions grow - both ontogenetically during the development of an individual organism, as well as phylogenetically across species.
各向同性动力系统在各个方向上看起来都是一样的,也就是说,如果我们想象自己站在一个各向同性系统中的某个位置,我们无法区分不同的视线。相反,各向异性是衡量系统偏离完美各向同性程度的指标,较大的值表示系统沿着其轴的结构之间存在更大的差异。在这里,我们推导出了一种广义可扩展(力学相似)离散场论拉格朗日的形式,该形式允许通过任意维度的时间序列直接估计各向异性的程度。我们为各向同性和各向异性系统生成了合成数据,并通过使用贝叶斯模型反演和降维,表明我们可以区分这两个数据集,从而证明了原理的可行性。然后,我们将这种方法应用于在休息和任务状态下收集的小鼠钙成像数据,表明可以直接从不同的脑状态和皮质区域估计各向异性,这是在经验性的体内生物环境中。我们希望这个理论基础,以及方法和公开的 MATLAB 代码,将为研究人员提供一种可访问的方式,以了解神经系统的结构组织,包括可扩展的神经区域如何在个体发育过程中以及在物种之间的系统发育过程中生长。