Vyas Saurabh, Huang He, Gale John T, Sarma Sridevi V, Montgomery Erwin B
IEEE Trans Neural Syst Rehabil Eng. 2016 Jan;24(1):36-45. doi: 10.1109/TNSRE.2015.2453254. Epub 2015 Jul 8.
Several theories posit increased Subthalamic Nucleus (STN) activity is causal to Parkinsonism, yet in our previous study we showed that activity from 113 STN neurons from two epilepsy patients and 103 neurons from nine Parkinson's disease (PD) patients demonstrated no significant differences in frequencies or in the coefficients of variation of mean discharge frequencies per 1-s epochs. We continued our analysis using point process modeling to capture higher order temporal dynamics; in particular, bursting, beta-band oscillations, excitatory and inhibitory ensemble interactions, and neuronal complexity. We used this analysis as input to a logistic regression classifier and were able to differentiate between PD and epilepsy neurons with an accuracy of 92%. We also found neuronal complexity, i.e., the number of states in a neuron's point process model, and inhibitory ensemble dynamics, which can be interpreted as a reduction in complexity, to be the most important features with respect to classification accuracy. Even in a dataset with no significant differences in firing rate, we observed differences between PD and epilepsy for other single-neuron measures. Our results suggest PD comes with a reduction in neuronal "complexity," which translates to a neuron's ability to encode information; the more complexity, the more information the neuron can encode. This is also consistent with studies correlating disease to loss of variability in neuronal activity, as the lower the complexity, the less variability.
几种理论认为,丘脑底核(STN)活动增加是帕金森症的病因,但在我们之前的研究中,我们发现,两名癫痫患者的113个STN神经元以及九名帕金森病(PD)患者的103个神经元的活动,在每秒时段的放电频率或平均放电频率变异系数方面并无显著差异。我们继续使用点过程建模进行分析,以捕捉更高阶的时间动态;特别是爆发、β波段振荡、兴奋性和抑制性整体相互作用以及神经元复杂性。我们将此分析作为逻辑回归分类器的输入,能够以92%的准确率区分PD神经元和癫痫神经元。我们还发现,神经元复杂性,即神经元点过程模型中的状态数量,以及抑制性整体动态(可解释为复杂性降低),是分类准确率方面最重要的特征。即使在一个放电率无显著差异的数据集中,我们也观察到PD和癫痫在其他单神经元测量方面存在差异。我们的结果表明,PD伴随着神经元“复杂性”的降低,这转化为神经元编码信息的能力;复杂性越高,神经元能够编码的信息就越多。这也与将疾病与神经元活动变异性丧失相关联的研究一致,因为复杂性越低,变异性就越小。