Nanni Federico, Andres Daniela S
Science and Technology School, National University of San Martin (UNSAM)San Martin, Argentina.
Front Hum Neurosci. 2017 Aug 14;11:409. doi: 10.3389/fnhum.2017.00409. eCollection 2017.
Neural systems are characterized by their complex dynamics, reflected on signals produced by neurons and neuronal ensembles. This complexity exhibits specific features in health, disease and in different states of consciousness, and can be considered a hallmark of certain neurologic and neuropsychiatric conditions. To measure complexity from neurophysiologic signals, a number of different nonlinear tools of analysis are available. However, not all of these tools are easy to implement, or able to handle clinical data, often obtained in less than ideal conditions in comparison to laboratory or simulated data. Recently, the temporal structure function emerged as a powerful tool for the analysis of complex properties of neuronal activity. The temporal structure function is efficient computationally and it can be robustly estimated from short signals. However, the application of this tool to neuronal data is relatively new, making the interpretation of results difficult. In this methods paper we describe a step by step algorithm for the calculation and characterization of the structure function. We apply this algorithm to oscillatory, random and complex toy signals, and test the effect of added noise. We show that: (1) the mean slope of the structure function is zero in the case of random signals; (2) oscillations are reflected on the shape of the structure function, but they don't modify the mean slope if complex correlations are absent; (3) nonlinear systems produce structure functions with nonzero slope up to a critical point, where the function turns into a plateau. Two characteristic numbers can be extracted to quantify the behavior of the structure function in the case of nonlinear systems: (1). the point where the plateau starts (the inflection point, where the slope change occurs), and (2). the height of the plateau. While the inflection point is related to the scale where correlations weaken, the height of the plateau is related to the noise present in the signal. To exemplify our method we calculate structure functions of neuronal recordings from the basal ganglia of parkinsonian and healthy rats, and draw guidelines for their interpretation in light of the results obtained from our toy signals.
神经系统的特点是其复杂的动力学,这反映在神经元和神经元集群产生的信号上。这种复杂性在健康、疾病以及不同意识状态下表现出特定特征,并且可被视为某些神经和神经精神疾病的标志。为了从神经生理信号中测量复杂性,有许多不同的非线性分析工具可供使用。然而,并非所有这些工具都易于实现,或者能够处理临床数据,与实验室或模拟数据相比,临床数据往往是在不太理想的条件下获得的。最近,时间结构函数成为分析神经元活动复杂特性的有力工具。时间结构函数在计算上效率很高,并且可以从短信号中稳健地估计出来。然而,该工具在神经元数据上的应用相对较新,这使得结果的解释变得困难。在这篇方法论文中,我们描述了一种用于计算和表征结构函数的逐步算法。我们将此算法应用于振荡、随机和复杂的玩具信号,并测试添加噪声的影响。我们表明:(1)在随机信号的情况下,结构函数的平均斜率为零;(2)振荡反映在结构函数的形状上,但如果不存在复杂相关性,它们不会改变平均斜率;(3)非线性系统产生的结构函数在达到临界点之前具有非零斜率,在该点函数变为平稳段。在非线性系统的情况下,可以提取两个特征数来量化结构函数的行为:(1)平稳段开始的点(拐点,即斜率发生变化的点),以及(2)平稳段的高度。虽然拐点与相关性减弱的尺度有关,但平稳段高度与信号中存在的噪声有关。为了举例说明我们的方法,我们计算了帕金森病大鼠和健康大鼠基底神经节神经元记录的结构函数,并根据从我们的玩具信号获得的结果为其解释制定指导原则。