Meliza C Daniel, Kostuk Mark, Huang Hao, Nogaret Alain, Margoliash Daniel, Abarbanel Henry D I
Department of Organismal Biology and Anatomy, University of Chicago, 1027 E 57th Street, Chicago, IL, 60637, USA,
Biol Cybern. 2014 Aug;108(4):495-516. doi: 10.1007/s00422-014-0615-5. Epub 2014 Jun 25.
Recent results demonstrate techniques for fully quantitative, statistical inference of the dynamics of individual neurons under the Hodgkin-Huxley framework of voltage-gated conductances. Using a variational approximation, this approach has been successfully applied to simulated data from model neurons. Here, we use this method to analyze a population of real neurons recorded in a slice preparation of the zebra finch forebrain nucleus HVC. Our results demonstrate that using only 1,500 ms of voltage recorded while injecting a complex current waveform, we can estimate the values of 12 state variables and 72 parameters in a dynamical model, such that the model accurately predicts the responses of the neuron to novel injected currents. A less complex model produced consistently worse predictions, indicating that the additional currents contribute significantly to the dynamics of these neurons. Preliminary results indicate some differences in the channel complement of the models for different classes of HVC neurons, which accords with expectations from the biology. Whereas the model for each cell is incomplete (representing only the somatic compartment, and likely to be missing classes of channels that the real neurons possess), our approach opens the possibility to investigate in modeling the plausibility of additional classes of channels the cell might possess, thus improving the models over time. These results provide an important foundational basis for building biologically realistic network models, such as the one in HVC that contributes to the process of song production and developmental vocal learning in songbirds.
最近的研究结果展示了在电压门控电导的霍奇金-赫胥黎框架下,对单个神经元动力学进行完全定量、统计推断的技术。利用变分近似,这种方法已成功应用于模型神经元的模拟数据。在此,我们使用该方法分析在斑胸草雀前脑核团HVC的脑片制备中记录的一群真实神经元。我们的结果表明,仅通过注入复杂电流波形时记录的1500毫秒电压,就能估计动力学模型中12个状态变量和72个参数的值,从而使该模型能准确预测神经元对新注入电流的反应。一个不太复杂的模型产生的预测结果持续较差,这表明额外的电流对这些神经元的动力学有显著贡献。初步结果表明,不同类别的HVC神经元模型的通道组成存在一些差异,这与生物学预期相符。虽然每个细胞的模型并不完整(仅代表胞体部分,可能缺少真实神经元所拥有的某些通道类别),但我们的方法为研究细胞可能拥有的其他通道类别的合理性提供了建模可能性,从而随着时间的推移改进模型。这些结果为构建生物学上真实的网络模型提供了重要的基础依据,例如HVC中有助于鸣禽发声产生和发育性发声学习过程的模型。