The Clinical Hospital of Chengdu Brian Science Institute, MOE Key Lab for Neuroinformation, University of Electronic Science and Technology of China, Chengdu 610054, People's Republic of China.
Faculty of Natural Sciences and Mathematics, University of Maribor, Koroška cesta 160, SI-2000 Maribor, Slovenia.
Phys Rev E. 2017 Aug;96(2-1):022415. doi: 10.1103/PhysRevE.96.022415. Epub 2017 Aug 25.
Biological neurons receive multiple noisy oscillatory signals, and their dynamical response to the superposition of these signals is of fundamental importance for information processing in the brain. Here we study the response of neural systems to the weak envelope modulation signal, which is superimposed by two periodic signals with different frequencies. We show that stochastic resonance occurs at the beat frequency in neural systems at the single-neuron as well as the population level. The performance of this frequency-difference-dependent stochastic resonance is influenced by both the beat frequency and the two forcing frequencies. Compared to a single neuron, a population of neurons is more efficient in detecting the information carried by the weak envelope modulation signal at the beat frequency. Furthermore, an appropriate fine-tuning of the excitation-inhibition balance can further optimize the response of a neural ensemble to the superimposed signal. Our results thus introduce and provide insights into the generation and modulation mechanism of the frequency-difference-dependent stochastic resonance in neural systems.
生物神经元接收多个噪声振荡信号,它们对这些信号叠加的动态响应对大脑中的信息处理至关重要。在这里,我们研究了神经系统对弱包络调制信号的响应,该信号由两个具有不同频率的周期性信号叠加而成。我们表明,在单细胞和群体水平上,随机共振发生在拍频处。这种频差依赖的随机共振的性能受到拍频和两个强迫频率的影响。与单个神经元相比,神经元群体在检测弱包络调制信号在拍频处携带的信息方面更有效。此外,适当调整兴奋-抑制平衡可以进一步优化神经群体对叠加信号的响应。因此,我们的研究结果为神经系统中频率差依赖的随机共振的产生和调制机制提供了新的认识。