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A simple parametric representation of the Hodgkin-Huxley model

机译:Hodgkin-Huxley模型的简单参数表示

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The Hodgkin-Huxley model, decades after its first presentation, is still a reference model in neuroscience as it has successfully reproduced the electrophysiological activity of many organisms. The primary signal in the model represents the membrane potential of a neuron. A simple representation of this signal is presented in this paper. The new proposal is an adapted Frequency Modulated M?bius multicomponent model defined as a signal plus error model in which the signal is decomposed as a sum of waves. The main strengths of the method are the simple parametric formulation, the interpretability and flexibility of the parameters that describe and discriminate the waveforms, the estimators’ identifiability and accuracy, and the robustness against noise. The approach is validated with a broad simulation experiment of Hodgkin-Huxley signals and real data from squid giant axons. Interesting differences between simulated and real data emerge from the comparison of the parameter configurations. Furthermore, the potential of the FMM parameters to predict Hodgkin-Huxley model parameters is shown using different Machine Learning methods. Finally, promising contributions of the approach in Spike Sorting and cell-type classification are detailed.
机译:霍奇金 - 豪克利模型,第一个演示后数十年,仍然是神经科学的参考模型,因为它已成功再现了许多生物的电生理活性。模型中的主要信号表示神经元的膜电位。本文提出了该信号的简单表示。新的提议是一种适应频率调制的M?BIUS多组分模型,其定义为信号加误差模型,其中信号被分解为波的总和。该方法的主要优点是简单的参数化制定,参数的可解释性和灵活性描述和区分波形,估计器的可识别性和准确性以及对噪声的鲁棒性。该方法验证了Hodgkin-Huxley信号和来自鱿鱼巨型轴突的真实数据的仿真实验。模拟和真实数据之间的有趣差异从参数配置的比较中出现。此外,使用不同的机器学习方法,示出了FMM参数来预测Hodgkin-Huxley模型参数的潜力。最后,详细说明了在尖峰分类和细胞类型分类中的方法的承诺贡献。

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