Moffitt Michael A, McIntyre Cameron C, Grill Warren M
Neural Engineering Center, Department of Biomedical Engineering, Case Western Reserve University, Cleveland, OH 44106, USA.
IEEE Trans Biomed Eng. 2004 Feb;51(2):229-36. doi: 10.1109/TBME.2003.820382.
Computer models of neurons are used to simulate neural behavior, and are important tools for designing neural prostheses. Computation time remains an issue when simulating large numbers of neurons or applying models to real time applications. Warman et al. developed a method to predict excitation thresholds for axons using linear models and a predetermined critical voltage. We calculated threshold prediction error as a function of the location of an extracellular electrode using two different axon models to examine further threshold prediction using linear models. Threshold prediction error was low (<3% error) under the conditions examined by Warman et al., but under more general conditions, threshold prediction error was as high as 23.6%. Linear models were limited as effective tools for single fiber threshold prediction because accuracy was dependent on the nonlinear and linear models used, and any parameter that affected the extracellular potential distribution. Threshold prediction could be improved by appropriately choosing the membrane conductance of the linear model, but determination of an optimal conductance was computationally expensive. Finally, although single fiber threshold prediction error was partially masked when considering the input-output (I/O) properties of populations of axons, relatively large errors still occurred in population I/O curves generated with linear models.
神经元的计算机模型用于模拟神经行为,是设计神经假体的重要工具。在模拟大量神经元或将模型应用于实时应用时,计算时间仍然是一个问题。沃曼等人开发了一种使用线性模型和预定临界电压来预测轴突兴奋阈值的方法。我们使用两种不同的轴突模型计算了作为细胞外电极位置函数的阈值预测误差,以进一步研究使用线性模型的阈值预测。在沃曼等人研究的条件下,阈值预测误差较低(误差<3%),但在更一般的条件下,阈值预测误差高达23.6%。线性模型作为单纤维阈值预测的有效工具存在局限性,因为准确性取决于所使用的非线性和线性模型,以及任何影响细胞外电位分布的参数。通过适当选择线性模型的膜电导可以提高阈值预测,但确定最佳电导在计算上成本很高。最后,尽管在考虑轴突群体的输入-输出(I/O)特性时,单纤维阈值预测误差会部分被掩盖,但使用线性模型生成的群体I/O曲线中仍然会出现相对较大的误差。