首页> 外文期刊>Journal of Neurophysiology >Noise and coupling affect signal detection and bursting in a simulated physiological neural network.
【24h】

Noise and coupling affect signal detection and bursting in a simulated physiological neural network.

机译:噪声和耦合影响模拟生理神经网络中的信号检测和爆发。

获取原文
获取原文并翻译 | 示例
           

摘要

Signal detection in the CNS relies on a complex interaction between the numerous synaptic inputs to the detecting cells. Two effects, stochastic resonance (SR) and coherence resonance (CR) have been shown to affect signal detection in arrays of basic neuronal models. Here, an array of simulated hippocampal CA1 neurons was used to test the hypothesis that physiological noise and electrical coupling can interact to modulate signal detection in the CA1 region of the hippocampus. The array was tested using varying levels of coupling and noise with different input signals. Detection of a subthreshold signal in the network improved as the number of detecting cells increased and as coupling was increased as predicted by previous studies in SR; however, the response depended greatly on the noise characteristics present and varied from SR predictions at times. Careful evaluation of noise characteristics may be necessary to form conclusions about the role of SR in complex systems such as physiological neurons. The coupled array fired synchronous, periodic bursts when presented with noise alone. The synchrony of this firing changed as a function of noise and coupling as predicted by CR. The firing was very similar to certain models of epileptiform activity, leading to a discussion of CR as a possible simple model of epilepsy. A single neuron was unable to recruit its neighbors to a periodic signal unless the signal was very close to the synchronous bursting frequency. These findings, when viewed in comparison with physiological parameters in the hippocampus, suggest that both SR and CR can have significant effects on signal processing in vivo.
机译:CNS中的信号检测依赖于检测细胞的大量突触输入之间的复杂相互作用。在基本神经元模型阵列中,随机共振(SR)和相干共振(CR)这两种效应已显示出会影响信号检测。在这里,使用一组模拟的海马CA1神经元来测试生理噪声和电耦合可以相互作用以调节海马CA1区域信号检测的假设。使用不同水平的耦合和噪声以及不同的输入信号对阵列进行了测试。正如先前在SR中的研究所预测的,随着检测单元数量的增加和耦合的增加,网络中亚阈值信号的检测得到改善。然而,响应很大程度上取决于当前的噪声特性,并且有时与SR预测有所不同。可能需要仔细评估噪声特征,才能得出关于SR在复杂系统(例如生理神经元)中的作用的结论。当单独出现噪声时,耦合阵列会发射同步的周期性脉冲串。如CR所预测的,该发射的同步性根据噪声和耦合而变化。射击与癫痫样活动的某些模型非常相似,导致对CR作为可能的癫痫简单模型的讨论。除非信号非常接近同步突发频率,否则单个神经元将无法招募其邻居来接收周期性信号。与海马的生理参数相比,这些发现表明SR和CR均可对体内信号处理产生重大影响。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号