...
首页> 外文期刊>Frontiers in Cellular Neuroscience >Neural Code— Neural Self-information Theory on How Cell-Assembly Code Rises from Spike Time and Neuronal Variability
【24h】

Neural Code— Neural Self-information Theory on How Cell-Assembly Code Rises from Spike Time and Neuronal Variability

机译:神经密码 - <斜体>神经自我信息理论如何从尖峰时间和神经元变异性上升

获取原文
           

摘要

A major stumbling block to cracking the real-time neural code is neuronal variability - neurons discharge spikes with enormous variability not only across trials within the same experiments but also in resting states. Such variability is widely regarded as a noise which is often deliberately averaged out during data analyses. In contrast to such a dogma, we put forth the Neural Self-Information Theory that neural coding is operated based on the self-information principle under which variability in the time durations of inter-spike-intervals (ISI), or neuronal silence durations, is self-tagged with discrete information. As the self-information processor, each ISI carries a certain amount of information based on its variability-probability distribution; higher-probability ISIs which reflect the balanced excitation-inhibition ground state convey minimal information, whereas lower-probability ISIs which signify rare-occurrence surprisals in the form of extremely transient or prolonged silence carry most information. These variable silence durations are naturally coupled with intracellular biochemical cascades, energy equilibrium and dynamic regulation of protein and gene expression levels. As such, this silence variability-based self-information code is completely intrinsic to the neurons themselves, with no need for outside observers to set any reference point as typically used in the rate code, population code and temporal code models. Moreover, temporally coordinated ISI surprisals across cell population can inherently give rise to robust real-time cell-assembly codes which can be readily sensed by the downstream neural clique assemblies. One immediate utility of this self-information code is a general decoding strategy to uncover a variety of cell-assembly patterns underlying external and internal categorical or continuous variables in an unbiased manner.
机译:突破实时神经码的主要绊脚石是神经元变异性 - 神经元排放尖峰,不仅在同一实验中的试验中的巨大变异性,而且在休息状态也是如此。这种可变性被广泛被认为是在数据分析期间经常故意平均的噪声。与这样的教条相比,我们提出了神经信息理论,即神经编码基于自我信息原理来操作,在该自我信息原理下运行,在其间隔间隔(ISI)的时间持续时间(ISI)或神经元沉默持续时间内的变化通过离散信息自动标记。作为自我信息处理器,每个ISI基于其变化概率分布进行一定量的信息;反映平衡激励抑制接地状态的较高概率IIS传达最小信息,而较低概率ISIS,其表示极瞬态或长期沉默形式的稀有出现惊喜携带大多数信息。这些可变沉默持续时间天然与细胞内生物化学级联,能量平衡和蛋白质和基因表达水平的动态调节偶联。因此,这种基于沉默的可变性的自我信息代码完全是神经元本身的内在,不需要外部观察者将任何参考点设置为速率代码,人口代码和时间代码模型中的通常使用。此外,跨越细胞群的时间协调的ISI惊喜可以固有地产生鲁棒的实时细胞组装码,其可以通过下游神经集团组件容易地感测。这种自我信息代码的立即效用是一种常规解码策略,用于以不偏不偏的方式揭示外部和内部分类或连续变量的各种细胞组装模式。

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